Changes
On March 14, 2025 at 2:17:45 PM UTC,
-
Changed value of field
restricted
of resource Forest Type NFI 2023 to{"level":"public","allowed_users":"","shared_secret":""}
(previously{"level":"same_organization","allowed_users":"","shared_secret":""}
) in Forest Type NFI
f | 1 | { | f | 1 | { |
2 | "author": "[{\"affiliation\": \"Swiss Federal Institute for Forest, | 2 | "author": "[{\"affiliation\": \"Swiss Federal Institute for Forest, | ||
3 | Snow and Landscape Research WSL \", \"affiliation_02\": \"\", | 3 | Snow and Landscape Research WSL \", \"affiliation_02\": \"\", | ||
4 | \"affiliation_03\": \"\", \"email\": \"lars.waser@wsl.ch\", | 4 | \"affiliation_03\": \"\", \"email\": \"lars.waser@wsl.ch\", | ||
5 | \"given_name\": \"Lars\", \"identifier\": \"D-5937-2011\", \"name\": | 5 | \"given_name\": \"Lars\", \"identifier\": \"D-5937-2011\", \"name\": | ||
6 | \"Waser\"}, {\"affiliation\": \"Swiss Federal Institute for Forest, | 6 | \"Waser\"}, {\"affiliation\": \"Swiss Federal Institute for Forest, | ||
7 | Snow and Landscape Research WSL \", \"affiliation_02\": \"\", | 7 | Snow and Landscape Research WSL \", \"affiliation_02\": \"\", | ||
8 | \"affiliation_03\": \"\", \"email\": \"christian.ginzler@wsl.ch\", | 8 | \"affiliation_03\": \"\", \"email\": \"christian.ginzler@wsl.ch\", | ||
9 | \"given_name\": \"Christian\", \"identifier\": \"E-9544-2012\", | 9 | \"given_name\": \"Christian\", \"identifier\": \"E-9544-2012\", | ||
10 | \"name\": \"Ginzler\"}, {\"affiliation\": \"WSL\", \"affiliation_02\": | 10 | \"name\": \"Ginzler\"}, {\"affiliation\": \"WSL\", \"affiliation_02\": | ||
11 | \"\", \"affiliation_03\": \"\", \"email\": | 11 | \"\", \"affiliation_03\": \"\", \"email\": | ||
12 | \"achilleas.psomas@wsl.ch\", \"given_name\": \"Achilleas\", | 12 | \"achilleas.psomas@wsl.ch\", \"given_name\": \"Achilleas\", | ||
13 | \"identifier\": \"\", \"name\": \"Psomas\"}, {\"affiliation\": | 13 | \"identifier\": \"\", \"name\": \"Psomas\"}, {\"affiliation\": | ||
14 | \"WSL\", \"affiliation_02\": \"\", \"affiliation_03\": \"\", | 14 | \"WSL\", \"affiliation_02\": \"\", \"affiliation_03\": \"\", | ||
15 | \"email\": \"marius.rueetschi@wsl.ch\", \"given_name\": \"Marius\", | 15 | \"email\": \"marius.rueetschi@wsl.ch\", \"given_name\": \"Marius\", | ||
16 | \"identifier\": \"\", \"name\": \"R\\u00fcetschi\"}, {\"affiliation\": | 16 | \"identifier\": \"\", \"name\": \"R\\u00fcetschi\"}, {\"affiliation\": | ||
17 | \"WSL\", \"affiliation_02\": \"\", \"affiliation_03\": \"\", | 17 | \"WSL\", \"affiliation_02\": \"\", \"affiliation_03\": \"\", | ||
18 | \"email\": \"nataliia.rehush@wsl.ch\", \"given_name\": \"Nataliia\", | 18 | \"email\": \"nataliia.rehush@wsl.ch\", \"given_name\": \"Nataliia\", | ||
19 | \"identifier\": \"\", \"name\": \"Rehush\"}]", | 19 | \"identifier\": \"\", \"name\": \"Rehush\"}]", | ||
20 | "author_email": null, | 20 | "author_email": null, | ||
21 | "creator_user_id": "6d44d5cd-9ac6-4100-bc2c-c02034a41b48", | 21 | "creator_user_id": "6d44d5cd-9ac6-4100-bc2c-c02034a41b48", | ||
22 | "date": "[{\"date\": \"2025-01-05\", \"date_type\": \"created\", | 22 | "date": "[{\"date\": \"2025-01-05\", \"date_type\": \"created\", | ||
23 | \"end_date\": \"\"}]", | 23 | \"end_date\": \"\"}]", | ||
24 | "doi": "10.16904/1000001.7", | 24 | "doi": "10.16904/1000001.7", | ||
25 | "extras": [ | 25 | "extras": [ | ||
26 | { | 26 | { | ||
27 | "key": "deprecatedResources", | 27 | "key": "deprecatedResources", | ||
28 | "value": | 28 | "value": | ||
29 | ac-4bfd-936d-89c0a56eed36\",\"7b6e4f37-c428-45dc-ba34-f40dd8368769\"]" | 29 | ac-4bfd-936d-89c0a56eed36\",\"7b6e4f37-c428-45dc-ba34-f40dd8368769\"]" | ||
30 | } | 30 | } | ||
31 | ], | 31 | ], | ||
32 | "funding": "[{\"grant_number\":\"\",\"institution\":\"Federal Office | 32 | "funding": "[{\"grant_number\":\"\",\"institution\":\"Federal Office | ||
33 | for the Environment (FOEN).\",\"institution_url\":\"\"}]", | 33 | for the Environment (FOEN).\",\"institution_url\":\"\"}]", | ||
34 | "groups": [], | 34 | "groups": [], | ||
35 | "id": "82d763fa-123a-4648-b827-0dec02a5efbc", | 35 | "id": "82d763fa-123a-4648-b827-0dec02a5efbc", | ||
36 | "isopen": false, | 36 | "isopen": false, | ||
37 | "language": "en", | 37 | "language": "en", | ||
38 | "license_id": "other-undefined", | 38 | "license_id": "other-undefined", | ||
39 | "license_title": "Other (Specified in the description)", | 39 | "license_title": "Other (Specified in the description)", | ||
40 | "maintainer": "{\"affiliation\": \"Swiss Federal Institute for | 40 | "maintainer": "{\"affiliation\": \"Swiss Federal Institute for | ||
41 | Forest, Snow and Landscape Research WSL \", \"email\": | 41 | Forest, Snow and Landscape Research WSL \", \"email\": | ||
42 | \"lars.waser@wsl.ch\", \"given_name\": \"Lars\", \"identifier\": | 42 | \"lars.waser@wsl.ch\", \"given_name\": \"Lars\", \"identifier\": | ||
43 | \"D-5937-2011\", \"name\": \"Waser\"}", | 43 | \"D-5937-2011\", \"name\": \"Waser\"}", | ||
44 | "maintainer_email": null, | 44 | "maintainer_email": null, | ||
45 | "metadata_created": "2018-04-03T10:38:30.545175", | 45 | "metadata_created": "2018-04-03T10:38:30.545175", | ||
n | 46 | "metadata_modified": "2025-03-10T20:12:58.511909", | n | 46 | "metadata_modified": "2025-03-14T14:17:45.068068", |
47 | "name": "forest-type-nfi", | 47 | "name": "forest-type-nfi", | ||
48 | "notes": "A series of Forest Type NFI datasets covering Switzerland | 48 | "notes": "A series of Forest Type NFI datasets covering Switzerland | ||
49 | have been produced, and currently available for the years 2023, 2018, | 49 | have been produced, and currently available for the years 2023, 2018, | ||
50 | and 2016. These datasets provide the probability (0-100%) of the class | 50 | and 2016. These datasets provide the probability (0-100%) of the class | ||
51 | broadleaf at the pixel level. While pixel values with low | 51 | broadleaf at the pixel level. While pixel values with low | ||
52 | probabilities correspond to the class coniferous, pixel values with | 52 | probabilities correspond to the class coniferous, pixel values with | ||
53 | high probabilities correspond to the class broadleaf. Pixels with | 53 | high probabilities correspond to the class broadleaf. Pixels with | ||
54 | values around 50% can't unambiguously be assigned to one of the two | 54 | values around 50% can't unambiguously be assigned to one of the two | ||
55 | classes and might belong to mixed stands. The three datasets are based | 55 | classes and might belong to mixed stands. The three datasets are based | ||
56 | on different remote sensing data from different time spans and with | 56 | on different remote sensing data from different time spans and with | ||
57 | different spatial resolutions:\n\n- **Forest Type NFI 2023: | 57 | different spatial resolutions:\n\n- **Forest Type NFI 2023: | ||
58 | Sentinel-1/-2, 2021-2023, 10m (new dataset!)** \n- Forest Type NFI | 58 | Sentinel-1/-2, 2021-2023, 10m (new dataset!)** \n- Forest Type NFI | ||
59 | 2018: Sentinel-1/-2, 2016-2018, 10m\n- Forest Type NFI 2016: Aerial | 59 | 2018: Sentinel-1/-2, 2016-2018, 10m\n- Forest Type NFI 2016: Aerial | ||
60 | orthoimages, 2010-2015, 3m\n.\n---------------------\n.\n **Important | 60 | orthoimages, 2010-2015, 3m\n.\n---------------------\n.\n **Important | ||
61 | note:** None of the datasets is suitable for analysis at the | 61 | note:** None of the datasets is suitable for analysis at the | ||
62 | individual tree crown level because pixel-level probabilities are not | 62 | individual tree crown level because pixel-level probabilities are not | ||
63 | allocated to individual trees. Analysis is recommended only for areas | 63 | allocated to individual trees. Analysis is recommended only for areas | ||
64 | larger than 3x3 pixels, i.e. by calculating the mean values, except in | 64 | larger than 3x3 pixels, i.e. by calculating the mean values, except in | ||
65 | rare cases of homogeneous forest stands (either broadleaf or | 65 | rare cases of homogeneous forest stands (either broadleaf or | ||
66 | coniferous).\n\n**User\u2019s feedback:** \nWe are very motivated to | 66 | coniferous).\n\n**User\u2019s feedback:** \nWe are very motivated to | ||
67 | improve the dataset further and welcome any feedback or suggestions | 67 | improve the dataset further and welcome any feedback or suggestions | ||
68 | for corrections. Feel free to directly contact | 68 | for corrections. Feel free to directly contact | ||
69 | **lars.waser@wsl.ch**\n_________________\n.\n*Detailed | 69 | **lars.waser@wsl.ch**\n_________________\n.\n*Detailed | ||
70 | description:*\n\n**Forest Type NFI datasets, versions 2023 and 2018:** | 70 | description:*\n\n**Forest Type NFI datasets, versions 2023 and 2018:** | ||
71 | Both datasets use a remote sensing-based approach for a countrywide | 71 | Both datasets use a remote sensing-based approach for a countrywide | ||
72 | mapping of the Dominant Leaf Type (DLT) in Switzerland, classifying | 72 | mapping of the Dominant Leaf Type (DLT) in Switzerland, classifying | ||
73 | areas as either broadleaf or coniferous. These datasets have a spatial | 73 | areas as either broadleaf or coniferous. These datasets have a spatial | ||
74 | resolution of 10 m and provide the probability (0-100%) of the class | 74 | resolution of 10 m and provide the probability (0-100%) of the class | ||
75 | broadleaf at the pixel level (covering all areas with vegetation | 75 | broadleaf at the pixel level (covering all areas with vegetation | ||
76 | height > 5m version 2018, and >3 m version 2023). The classification | 76 | height > 5m version 2018, and >3 m version 2023). The classification | ||
77 | approach is based on a Random Forest (RF) classifier, that combines | 77 | approach is based on a Random Forest (RF) classifier, that combines | ||
78 | predictors derived from multi-temporal Sentinel-1 and Sentinel-2 data | 78 | predictors derived from multi-temporal Sentinel-1 and Sentinel-2 data | ||
79 | with the SwissAlti3D terrain model. In addition to the original | 79 | with the SwissAlti3D terrain model. In addition to the original | ||
80 | Sentinel-2 spectral bands, vegetation indices such as GEMI, MSAVI2, | 80 | Sentinel-2 spectral bands, vegetation indices such as GEMI, MSAVI2, | ||
81 | NDVI, CLRE and CCCI were used in the final model.\nThe classification | 81 | NDVI, CLRE and CCCI were used in the final model.\nThe classification | ||
82 | models were tested, trained and validated using up to 400,000 labels | 82 | models were tested, trained and validated using up to 400,000 labels | ||
83 | representing the two classes broadleaf and coniferous, derived from | 83 | representing the two classes broadleaf and coniferous, derived from | ||
84 | aerial image delineations. For the 2023 data set, the previously used | 84 | aerial image delineations. For the 2023 data set, the previously used | ||
85 | labels were quality-checked for reliability and temporal consistency | 85 | labels were quality-checked for reliability and temporal consistency | ||
86 | with the image data. Additionally, more labels were collected in the | 86 | with the image data. Additionally, more labels were collected in the | ||
87 | regions where the previous version of the data set performed less | 87 | regions where the previous version of the data set performed less | ||
88 | accurately \u2013 as reported by the users.\nSimilar high model | 88 | accurately \u2013 as reported by the users.\nSimilar high model | ||
89 | performances were achieved for both data sets: overall accuracy = | 89 | performances were achieved for both data sets: overall accuracy = | ||
90 | 0.96, kappa = 0.94, F1-score =0.96, precision = 0.97, recall = 0.94 | 90 | 0.96, kappa = 0.94, F1-score =0.96, precision = 0.97, recall = 0.94 | ||
91 | (2023), 0.95 (2018). Independent validation and plausibility check | 91 | (2023), 0.95 (2018). Independent validation and plausibility check | ||
92 | included the comparison of the predicted results with aerial image | 92 | included the comparison of the predicted results with aerial image | ||
93 | interpretations of the National Forest Inventory (NFI). For both data | 93 | interpretations of the National Forest Inventory (NFI). For both data | ||
94 | sets, deviations particularly occurred in mixed forest stands: over | 94 | sets, deviations particularly occurred in mixed forest stands: over | ||
95 | all accuracy = 0.81 (2018, 2023), kappa = 0.62 (2018), 0.59 (2023). | 95 | all accuracy = 0.81 (2018, 2023), kappa = 0.62 (2018), 0.59 (2023). | ||
96 | For more details, see Waser et al. (2021).\n\n**The Forest Type NFI | 96 | For more details, see Waser et al. (2021).\n\n**The Forest Type NFI | ||
97 | dataset, version 2016:** This dataset presents a countrywide map with | 97 | dataset, version 2016:** This dataset presents a countrywide map with | ||
98 | the two classes broadleaf and coniferous in Switzerland based on | 98 | the two classes broadleaf and coniferous in Switzerland based on | ||
99 | digital aerial imagery. The spatial resolution of the data set is 3 m. | 99 | digital aerial imagery. The spatial resolution of the data set is 3 m. | ||
100 | The pixel values correspond to the probabilities (0-100 %) of the | 100 | The pixel values correspond to the probabilities (0-100 %) of the | ||
101 | class broadleaf.\nThe classification approach incorporates a RF | 101 | class broadleaf.\nThe classification approach incorporates a RF | ||
102 | classifier, predictors from multispectral aerial imagery (ADS80) and | 102 | classifier, predictors from multispectral aerial imagery (ADS80) and | ||
103 | the SwissAlti3D terrain model. The model was tested, trained and | 103 | the SwissAlti3D terrain model. The model was tested, trained and | ||
104 | validated using 90,000 digitized polygons and achieved an overall | 104 | validated using 90,000 digitized polygons and achieved an overall | ||
105 | accuracy of 0.99 and a kappa of 0.98. Independent validation and | 105 | accuracy of 0.99 and a kappa of 0.98. Independent validation and | ||
106 | plausibility check included the comparison of the predicted results | 106 | plausibility check included the comparison of the predicted results | ||
107 | with aerial image interpretations of the NFI. Significant deviations | 107 | with aerial image interpretations of the NFI. Significant deviations | ||
108 | were observed, primarily due to an underestimation of broadleaved | 108 | were observed, primarily due to an underestimation of broadleaved | ||
109 | trees (median underestimation of 3.17%), especially in mixed forest | 109 | trees (median underestimation of 3.17%), especially in mixed forest | ||
110 | stands. For more details, see Waser et al. (2017; | 110 | stands. For more details, see Waser et al. (2017; | ||
111 | https://doi.org/10.3390/rs9080766).\n\n", | 111 | https://doi.org/10.3390/rs9080766).\n\n", | ||
112 | "num_resources": 7, | 112 | "num_resources": 7, | ||
113 | "num_tags": 7, | 113 | "num_tags": 7, | ||
114 | "organization": { | 114 | "organization": { | ||
115 | "approval_status": "approved", | 115 | "approval_status": "approved", | ||
116 | "created": "2017-04-20T16:51:21.920128", | 116 | "created": "2017-04-20T16:51:21.920128", | ||
117 | "description": "We develop and apply comprehensive and robust | 117 | "description": "We develop and apply comprehensive and robust | ||
118 | methods to extract and classify natural objects from continuous and | 118 | methods to extract and classify natural objects from continuous and | ||
119 | discrete raster datasets. Relevant features are acquired to describe | 119 | discrete raster datasets. Relevant features are acquired to describe | ||
120 | changes in landscape and land resources at different levels using | 120 | changes in landscape and land resources at different levels using | ||
121 | image data. Mathematical-statistical methods are adopted for automatic | 121 | image data. Mathematical-statistical methods are adopted for automatic | ||
122 | detection and description of image objects. Thus we contribute | 122 | detection and description of image objects. Thus we contribute | ||
123 | concepts, methods and data to describe/detect area wide changes and | 123 | concepts, methods and data to describe/detect area wide changes and | ||
124 | processes in the resources of landscape.\r\n\r\n### Tasks and main | 124 | processes in the resources of landscape.\r\n\r\n### Tasks and main | ||
125 | research\r\n\r\n* Development and application of methods to extract | 125 | research\r\n\r\n* Development and application of methods to extract | ||
126 | natural objects from continuous data.\r\n* Development of methods for | 126 | natural objects from continuous data.\r\n* Development of methods for | ||
127 | a comprehensive description of natural and anthropogenetic boundaries | 127 | a comprehensive description of natural and anthropogenetic boundaries | ||
128 | in continuous pattern (e.g. map signatures, vegetation transition, | 128 | in continuous pattern (e.g. map signatures, vegetation transition, | ||
129 | forest borders).\r\n* Development and application of methods to | 129 | forest borders).\r\n* Development and application of methods to | ||
130 | extract 3D-information from remotely sensed data for description of | 130 | extract 3D-information from remotely sensed data for description of | ||
131 | natural structures and changes. The main focus lies on wood and its | 131 | natural structures and changes. The main focus lies on wood and its | ||
132 | embedding/interaction within/with the landscape.\r\n* Conception and | 132 | embedding/interaction within/with the landscape.\r\n* Conception and | ||
133 | development of data acquisition based on high resolution remote | 133 | development of data acquisition based on high resolution remote | ||
134 | sensing data.\r\n* Conception, development and maintenance of the | 134 | sensing data.\r\n* Conception, development and maintenance of the | ||
135 | software interface in area wide data acquisition using airborne remote | 135 | software interface in area wide data acquisition using airborne remote | ||
136 | sensing data.\r\n* Scientific expert advice and support in the fields | 136 | sensing data.\r\n* Scientific expert advice and support in the fields | ||
137 | of photogrammetry and survey at WSL. Maintenance, enhancements and | 137 | of photogrammetry and survey at WSL. Maintenance, enhancements and | ||
138 | future development in these specific fields.\r\n* Adequate | 138 | future development in these specific fields.\r\n* Adequate | ||
139 | presentation of scientific results on national level and in noted | 139 | presentation of scientific results on national level and in noted | ||
140 | international journals and at international | 140 | international journals and at international | ||
141 | congresses/workshops/symposia.\r\n\r\n__Further information__: | 141 | congresses/workshops/symposia.\r\n\r\n__Further information__: | ||
142 | l/organization/research-units/landscape-dynamics/remote-sensing.html", | 142 | l/organization/research-units/landscape-dynamics/remote-sensing.html", | ||
143 | "id": "5243fbb4-e4e6-4779-9672-32a7ef33d5f9", | 143 | "id": "5243fbb4-e4e6-4779-9672-32a7ef33d5f9", | ||
144 | "image_url": "", | 144 | "image_url": "", | ||
145 | "is_organization": true, | 145 | "is_organization": true, | ||
146 | "name": "remote-sensing", | 146 | "name": "remote-sensing", | ||
147 | "state": "active", | 147 | "state": "active", | ||
148 | "title": "Remote Sensing", | 148 | "title": "Remote Sensing", | ||
149 | "type": "organization" | 149 | "type": "organization" | ||
150 | }, | 150 | }, | ||
151 | "owner_org": "5243fbb4-e4e6-4779-9672-32a7ef33d5f9", | 151 | "owner_org": "5243fbb4-e4e6-4779-9672-32a7ef33d5f9", | ||
152 | "private": false, | 152 | "private": false, | ||
153 | "publication": "{\"publication_year\": \"2025\", \"publisher\": | 153 | "publication": "{\"publication_year\": \"2025\", \"publisher\": | ||
154 | \"National Forest Inventory (NFI)\"}", | 154 | \"National Forest Inventory (NFI)\"}", | ||
155 | "publication_state": "published", | 155 | "publication_state": "published", | ||
156 | "related_datasets": "", | 156 | "related_datasets": "", | ||
157 | "related_publications": "wsl:28243\nWaser, L. T., Ginzler, C., & | 157 | "related_publications": "wsl:28243\nWaser, L. T., Ginzler, C., & | ||
158 | Rehush, N. (2017). Wall-to-wall tree type mapping from countrywide | 158 | Rehush, N. (2017). Wall-to-wall tree type mapping from countrywide | ||
159 | airborne remote sensing surveys. Remote Sensing, 9(8), 766 (24 pp.). | 159 | airborne remote sensing surveys. Remote Sensing, 9(8), 766 (24 pp.). | ||
160 | https://doi.org/10.3390/rs9080766", | 160 | https://doi.org/10.3390/rs9080766", | ||
161 | "relationships_as_object": [], | 161 | "relationships_as_object": [], | ||
162 | "relationships_as_subject": [], | 162 | "relationships_as_subject": [], | ||
163 | "resource_type": "dataset", | 163 | "resource_type": "dataset", | ||
164 | "resource_type_general": "dataset", | 164 | "resource_type_general": "dataset", | ||
165 | "resources": [ | 165 | "resources": [ | ||
166 | { | 166 | { | ||
167 | "cache_last_updated": null, | 167 | "cache_last_updated": null, | ||
168 | "cache_url": null, | 168 | "cache_url": null, | ||
169 | "created": "2021-04-23T08:02:00.149511", | 169 | "created": "2021-04-23T08:02:00.149511", | ||
170 | "description": "\n **Important note:** This dataset is NOT | 170 | "description": "\n **Important note:** This dataset is NOT | ||
171 | suitable for analysis at the individual tree crown level because | 171 | suitable for analysis at the individual tree crown level because | ||
172 | probabilities at pixel-level (e.g., of the broadleaf class) are not | 172 | probabilities at pixel-level (e.g., of the broadleaf class) are not | ||
173 | allocated to individual trees. Analysis is recommended only for areas | 173 | allocated to individual trees. Analysis is recommended only for areas | ||
174 | larger than 3x3 pixels, i.e. by calculating the mean values, except in | 174 | larger than 3x3 pixels, i.e. by calculating the mean values, except in | ||
175 | rare cases of homogeneous forest stands (either broadleaf or | 175 | rare cases of homogeneous forest stands (either broadleaf or | ||
176 | coniferous class). \n\nThis dataset uses a remote sensing-based | 176 | coniferous class). \n\nThis dataset uses a remote sensing-based | ||
177 | approach for a countrywide mapping of the Dominant Leaf Type (DLT) in | 177 | approach for a countrywide mapping of the Dominant Leaf Type (DLT) in | ||
178 | Switzerland, classifying areas as either broadleaf or coniferous. | 178 | Switzerland, classifying areas as either broadleaf or coniferous. | ||
179 | These datasets have a spatial resolution of 10 m and provide the | 179 | These datasets have a spatial resolution of 10 m and provide the | ||
180 | probabilities (0-100%) of the class broadleaf at the pixel level | 180 | probabilities (0-100%) of the class broadleaf at the pixel level | ||
181 | (covering areas with vegetation height > 5m).\nThe classification | 181 | (covering areas with vegetation height > 5m).\nThe classification | ||
182 | approach is based on a Random Forest (RF) classifier, that combines | 182 | approach is based on a Random Forest (RF) classifier, that combines | ||
183 | predictors derived from multi-temporal Sentinel-1 and Sentinel-2 data | 183 | predictors derived from multi-temporal Sentinel-1 and Sentinel-2 data | ||
184 | with the SwissAlti3D terrain model. The models were calibrated using | 184 | with the SwissAlti3D terrain model. The models were calibrated using | ||
185 | digitized training polygons and independently validated data from the | 185 | digitized training polygons and independently validated data from the | ||
186 | National Forest Inventory (NFI). Whereas high model overall accuracies | 186 | National Forest Inventory (NFI). Whereas high model overall accuracies | ||
187 | (0.97) and kappa (0.96) were achieved, the comparison of the Forest | 187 | (0.97) and kappa (0.96) were achieved, the comparison of the Forest | ||
188 | Type NFI 2018 dataset with independent NFI data revealed deviations in | 188 | Type NFI 2018 dataset with independent NFI data revealed deviations in | ||
189 | mixed stands.\n\nThe dataset 'Forest Type NFI 2018' is freely | 189 | mixed stands.\n\nThe dataset 'Forest Type NFI 2018' is freely | ||
190 | available on request (lars.waser@wsl.ch).\n\n", | 190 | available on request (lars.waser@wsl.ch).\n\n", | ||
191 | "doi": "10.16904/1000001.6", | 191 | "doi": "10.16904/1000001.6", | ||
192 | "format": "geotiff", | 192 | "format": "geotiff", | ||
193 | "hash": "", | 193 | "hash": "", | ||
194 | "id": "5a18924a-ef5a-4af2-a391-b0056a0874bb", | 194 | "id": "5a18924a-ef5a-4af2-a391-b0056a0874bb", | ||
195 | "last_modified": "2025-03-10T21:12:02.159000", | 195 | "last_modified": "2025-03-10T21:12:02.159000", | ||
196 | "metadata_modified": "2025-03-10T20:12:02.555691", | 196 | "metadata_modified": "2025-03-10T20:12:02.555691", | ||
197 | "mimetype": null, | 197 | "mimetype": null, | ||
198 | "mimetype_inner": null, | 198 | "mimetype_inner": null, | ||
199 | "name": "Forest Type NFI 2018", | 199 | "name": "Forest Type NFI 2018", | ||
200 | "package_id": "82d763fa-123a-4648-b827-0dec02a5efbc", | 200 | "package_id": "82d763fa-123a-4648-b827-0dec02a5efbc", | ||
201 | "position": 0, | 201 | "position": 0, | ||
202 | "resource_size": "{\"size_value\":\"\",\"size_units\":\"\"}", | 202 | "resource_size": "{\"size_value\":\"\",\"size_units\":\"\"}", | ||
203 | "resource_type": null, | 203 | "resource_type": null, | ||
204 | "restricted": | 204 | "restricted": | ||
205 | \"same_organization\",\"allowed_users\":\"\",\"shared_secret\":\"\"}", | 205 | \"same_organization\",\"allowed_users\":\"\",\"shared_secret\":\"\"}", | ||
206 | "size": 191049626, | 206 | "size": 191049626, | ||
207 | "state": "active", | 207 | "state": "active", | ||
208 | "url": | 208 | "url": | ||
209 | 18924a-ef5a-4af2-a391-b0056a0874bb/download/forest-type-nfi-2018.tif", | 209 | 18924a-ef5a-4af2-a391-b0056a0874bb/download/forest-type-nfi-2018.tif", | ||
210 | "url_type": "upload" | 210 | "url_type": "upload" | ||
211 | }, | 211 | }, | ||
212 | { | 212 | { | ||
213 | "cache_last_updated": null, | 213 | "cache_last_updated": null, | ||
214 | "cache_url": null, | 214 | "cache_url": null, | ||
215 | "created": "2021-03-27T04:57:32.557727", | 215 | "created": "2021-03-27T04:57:32.557727", | ||
216 | "description": "This dataset presents a countrywide map with the | 216 | "description": "This dataset presents a countrywide map with the | ||
217 | two classes broadleaf and coniferous in Switzerland based on digital | 217 | two classes broadleaf and coniferous in Switzerland based on digital | ||
218 | aerial imagery. The spatial resolution of the data set is 3m. The | 218 | aerial imagery. The spatial resolution of the data set is 3m. The | ||
219 | pixel values correspond to the probabilities (0-100 %) of the class | 219 | pixel values correspond to the probabilities (0-100 %) of the class | ||
220 | broadleaf.\nThe classification approach incorporates a RF classifier, | 220 | broadleaf.\nThe classification approach incorporates a RF classifier, | ||
221 | predictors from multispectral aerial imagery (ADS80) and the | 221 | predictors from multispectral aerial imagery (ADS80) and the | ||
222 | SwissAlti3D terrain model. The model was tested, trained and validated | 222 | SwissAlti3D terrain model. The model was tested, trained and validated | ||
223 | using 90,000 digitized polygons and achieved an overall accuracy of | 223 | using 90,000 digitized polygons and achieved an overall accuracy of | ||
224 | 0.99 and a kappa of 0.98. Independent validation and plausibility | 224 | 0.99 and a kappa of 0.98. Independent validation and plausibility | ||
225 | check included the comparison of the predictions with aerial image | 225 | check included the comparison of the predictions with aerial image | ||
226 | interpretations of the NFI. Significant deviations were observed, | 226 | interpretations of the NFI. Significant deviations were observed, | ||
227 | primarily due to an underestimation of broadleaved trees (median | 227 | primarily due to an underestimation of broadleaved trees (median | ||
228 | underestimation of 3.17%), especially in mixed forest stands. For more | 228 | underestimation of 3.17%), especially in mixed forest stands. For more | ||
229 | details, see Waser et al. (2017).\n\nData 'Forest Type NFI 2016' is | 229 | details, see Waser et al. (2017).\n\nData 'Forest Type NFI 2016' is | ||
230 | freely available on request (lars.waser@wsl.ch).", | 230 | freely available on request (lars.waser@wsl.ch).", | ||
231 | "doi": "10.16904/1000001.3", | 231 | "doi": "10.16904/1000001.3", | ||
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254 | "created": "2018-04-03T10:42:10.760550", | 254 | "created": "2018-04-03T10:42:10.760550", | ||
255 | "description": "Waser, L. T., Ginzler, C., & Rehush, N. (2017). | 255 | "description": "Waser, L. T., Ginzler, C., & Rehush, N. (2017). | ||
256 | Wall-to-Wall Tree Type Mapping from Countrywide Airborne Remote | 256 | Wall-to-Wall Tree Type Mapping from Countrywide Airborne Remote | ||
257 | Sensing Surveys. Remote Sensing, 9(8), 766. | 257 | Sensing Surveys. Remote Sensing, 9(8), 766. | ||
258 | https://doi.org/10.3390/rs9080766", | 258 | https://doi.org/10.3390/rs9080766", | ||
259 | "doi": "10.3390/rs9080766", | 259 | "doi": "10.3390/rs9080766", | ||
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276 | "state": "active", | 276 | "state": "active", | ||
277 | "url": | 277 | "url": | ||
278 | "https://www.dora.lib4ri.ch/wsl/islandora/object/wsl:14162", | 278 | "https://www.dora.lib4ri.ch/wsl/islandora/object/wsl:14162", | ||
279 | "url_type": null | 279 | "url_type": null | ||
280 | }, | 280 | }, | ||
281 | { | 281 | { | ||
282 | "cache_last_updated": null, | 282 | "cache_last_updated": null, | ||
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284 | "created": "2018-04-03T13:06:34.033220", | 284 | "created": "2018-04-03T13:06:34.033220", | ||
285 | "description": "Sample illustration of the Forest Type NFI | 285 | "description": "Sample illustration of the Forest Type NFI | ||
286 | dataset.", | 286 | dataset.", | ||
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306 | "url_type": "upload" | 306 | "url_type": "upload" | ||
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311 | "created": "2025-03-04T22:11:00.261394", | 311 | "created": "2025-03-04T22:11:00.261394", | ||
312 | "description": "Waser, L. T., R\u00fcetschi, M., Psomas, A., | 312 | "description": "Waser, L. T., R\u00fcetschi, M., Psomas, A., | ||
313 | Small, D., & Rehush, N. (2021). Mapping dominant leaf type based on | 313 | Small, D., & Rehush, N. (2021). Mapping dominant leaf type based on | ||
314 | combined Sentinel-1/-2 data \u2013 Challenges for mountainous | 314 | combined Sentinel-1/-2 data \u2013 Challenges for mountainous | ||
315 | countries. ISPRS Journal of Photogrammetry and Remote Sensing, 180, | 315 | countries. ISPRS Journal of Photogrammetry and Remote Sensing, 180, | ||
316 | 209-226. https://doi.org/10.1016/j.isprsjprs.2021.08.017", | 316 | 209-226. https://doi.org/10.1016/j.isprsjprs.2021.08.017", | ||
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333 | "size": null, | 333 | "size": null, | ||
334 | "state": "active", | 334 | "state": "active", | ||
335 | "url": | 335 | "url": | ||
336 | "https://www.dora.lib4ri.ch/wsl/islandora/object/wsl:28243", | 336 | "https://www.dora.lib4ri.ch/wsl/islandora/object/wsl:28243", | ||
337 | "url_type": null | 337 | "url_type": null | ||
338 | }, | 338 | }, | ||
339 | { | 339 | { | ||
340 | "cache_last_updated": null, | 340 | "cache_last_updated": null, | ||
341 | "cache_url": null, | 341 | "cache_url": null, | ||
342 | "created": "2025-03-06T13:23:45.237260", | 342 | "created": "2025-03-06T13:23:45.237260", | ||
343 | "description": "\n**Important note:** This dataset is NOT | 343 | "description": "\n**Important note:** This dataset is NOT | ||
344 | suitable for analysis at the individual tree crown level because | 344 | suitable for analysis at the individual tree crown level because | ||
345 | probabilities at the pixel level (e.g., of the broadleaf class) are | 345 | probabilities at the pixel level (e.g., of the broadleaf class) are | ||
346 | not allocated to individual trees. Analysis is recommended only for | 346 | not allocated to individual trees. Analysis is recommended only for | ||
347 | areas larger than 3x3 pixels, i.e. by calculating the mean values, | 347 | areas larger than 3x3 pixels, i.e. by calculating the mean values, | ||
348 | except in rare cases of homogeneous forest stands (either broadleaf or | 348 | except in rare cases of homogeneous forest stands (either broadleaf or | ||
349 | coniferous class).\n\nThis dataset uses a remote sensing-based | 349 | coniferous class).\n\nThis dataset uses a remote sensing-based | ||
350 | approach for a countrywide mapping of the Dominant Leaf Type (DLT) in | 350 | approach for a countrywide mapping of the Dominant Leaf Type (DLT) in | ||
351 | Switzerland, classifying areas as either broadleaf or coniferous. | 351 | Switzerland, classifying areas as either broadleaf or coniferous. | ||
352 | These datasets have a spatial resolution of 10 m and provide the | 352 | These datasets have a spatial resolution of 10 m and provide the | ||
353 | probabilities (0-100%) of the class broadleaf at the pixel level | 353 | probabilities (0-100%) of the class broadleaf at the pixel level | ||
354 | (covering areas with vegetation height > 3m).\nThe classification | 354 | (covering areas with vegetation height > 3m).\nThe classification | ||
355 | approach is based on a Random Forest (RF) classifier, that combines | 355 | approach is based on a Random Forest (RF) classifier, that combines | ||
356 | predictors derived from multi-temporal Sentinel-1 and Sentinel-2 data | 356 | predictors derived from multi-temporal Sentinel-1 and Sentinel-2 data | ||
357 | with the SwissAlti3D terrain model. The models were calibrated using | 357 | with the SwissAlti3D terrain model. The models were calibrated using | ||
358 | digitized training polygons and independently validated data from the | 358 | digitized training polygons and independently validated data from the | ||
359 | National Forest Inventory (NFI). Whereas high model overall accuracies | 359 | National Forest Inventory (NFI). Whereas high model overall accuracies | ||
360 | (0.97) and kappa (0.96) were achieved, the comparison of the Forest | 360 | (0.97) and kappa (0.96) were achieved, the comparison of the Forest | ||
361 | Type NFI 2023 dataset with independent NFI data revealed deviations in | 361 | Type NFI 2023 dataset with independent NFI data revealed deviations in | ||
362 | mixed stands.\n\nThe dataset 'Forest Type NFI 2023' is freely | 362 | mixed stands.\n\nThe dataset 'Forest Type NFI 2023' is freely | ||
363 | available on request (lars.waser@wsl.ch).", | 363 | available on request (lars.waser@wsl.ch).", | ||
364 | "doi": "", | 364 | "doi": "", | ||
365 | "format": "geotif", | 365 | "format": "geotif", | ||
366 | "hash": "", | 366 | "hash": "", | ||
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383 | "url_type": "upload" | 383 | "url_type": "upload" | ||
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388 | "created": "2025-03-09T21:36:32.049910", | 388 | "created": "2025-03-09T21:36:32.049910", | ||
389 | "description": "Preview of the dataset Forest Type NFI 2023.", | 389 | "description": "Preview of the dataset Forest Type NFI 2023.", | ||
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409 | "url_type": "upload" | 409 | "url_type": "upload" | ||
410 | } | 410 | } | ||
411 | ], | 411 | ], | ||
412 | "spatial": | 412 | "spatial": | ||
413 | inates\":[[[-175,-85],[-175,85],[175,85],[175,-85],[-175,-85]]]}]}]}", | 413 | inates\":[[[-175,-85],[-175,85],[175,85],[175,-85],[-175,-85]]]}]}]}", | ||
414 | "spatial_info": "Switzerland", | 414 | "spatial_info": "Switzerland", | ||
415 | "state": "active", | 415 | "state": "active", | ||
416 | "subtitle": "", | 416 | "subtitle": "", | ||
417 | "tags": [ | 417 | "tags": [ | ||
418 | { | 418 | { | ||
419 | "display_name": "BROADLEAF PROBABILITY", | 419 | "display_name": "BROADLEAF PROBABILITY", | ||
420 | "id": "b2c1c2b5-27cf-4439-870b-bf797970a6a6", | 420 | "id": "b2c1c2b5-27cf-4439-870b-bf797970a6a6", | ||
421 | "name": "BROADLEAF PROBABILITY", | 421 | "name": "BROADLEAF PROBABILITY", | ||
422 | "state": "active", | 422 | "state": "active", | ||
423 | "vocabulary_id": null | 423 | "vocabulary_id": null | ||
424 | }, | 424 | }, | ||
425 | { | 425 | { | ||
426 | "display_name": "DOMINANT LEAFTYPE", | 426 | "display_name": "DOMINANT LEAFTYPE", | ||
427 | "id": "1b334234-4bd0-44d4-bb78-039fe70bab90", | 427 | "id": "1b334234-4bd0-44d4-bb78-039fe70bab90", | ||
428 | "name": "DOMINANT LEAFTYPE", | 428 | "name": "DOMINANT LEAFTYPE", | ||
429 | "state": "active", | 429 | "state": "active", | ||
430 | "vocabulary_id": null | 430 | "vocabulary_id": null | ||
431 | }, | 431 | }, | ||
432 | { | 432 | { | ||
433 | "display_name": "FOREST", | 433 | "display_name": "FOREST", | ||
434 | "id": "90cd0d8f-8df0-4b78-ac11-6e38c2a22106", | 434 | "id": "90cd0d8f-8df0-4b78-ac11-6e38c2a22106", | ||
435 | "name": "FOREST", | 435 | "name": "FOREST", | ||
436 | "state": "active", | 436 | "state": "active", | ||
437 | "vocabulary_id": null | 437 | "vocabulary_id": null | ||
438 | }, | 438 | }, | ||
439 | { | 439 | { | ||
440 | "display_name": "FOREST INVENTORY", | 440 | "display_name": "FOREST INVENTORY", | ||
441 | "id": "d1b2883f-be82-426b-8a5e-fd6d36bc2855", | 441 | "id": "d1b2883f-be82-426b-8a5e-fd6d36bc2855", | ||
442 | "name": "FOREST INVENTORY", | 442 | "name": "FOREST INVENTORY", | ||
443 | "state": "active", | 443 | "state": "active", | ||
444 | "vocabulary_id": null | 444 | "vocabulary_id": null | ||
445 | }, | 445 | }, | ||
446 | { | 446 | { | ||
447 | "display_name": "FOREST TYPE", | 447 | "display_name": "FOREST TYPE", | ||
448 | "id": "52ad8bb3-8ec8-4e9d-8798-858d7662c3e4", | 448 | "id": "52ad8bb3-8ec8-4e9d-8798-858d7662c3e4", | ||
449 | "name": "FOREST TYPE", | 449 | "name": "FOREST TYPE", | ||
450 | "state": "active", | 450 | "state": "active", | ||
451 | "vocabulary_id": null | 451 | "vocabulary_id": null | ||
452 | }, | 452 | }, | ||
453 | { | 453 | { | ||
454 | "display_name": "NFI", | 454 | "display_name": "NFI", | ||
455 | "id": "0a74eb64-cf7b-42df-b2d4-1a5ad8171458", | 455 | "id": "0a74eb64-cf7b-42df-b2d4-1a5ad8171458", | ||
456 | "name": "NFI", | 456 | "name": "NFI", | ||
457 | "state": "active", | 457 | "state": "active", | ||
458 | "vocabulary_id": null | 458 | "vocabulary_id": null | ||
459 | }, | 459 | }, | ||
460 | { | 460 | { | ||
461 | "display_name": "REMOTE SENSING", | 461 | "display_name": "REMOTE SENSING", | ||
462 | "id": "1bc9d51e-2500-44a7-857b-13710a59e4be", | 462 | "id": "1bc9d51e-2500-44a7-857b-13710a59e4be", | ||
463 | "name": "REMOTE SENSING", | 463 | "name": "REMOTE SENSING", | ||
464 | "state": "active", | 464 | "state": "active", | ||
465 | "vocabulary_id": null | 465 | "vocabulary_id": null | ||
466 | } | 466 | } | ||
467 | ], | 467 | ], | ||
468 | "title": "Forest Type NFI", | 468 | "title": "Forest Type NFI", | ||
469 | "type": "dataset", | 469 | "type": "dataset", | ||
470 | "url": null, | 470 | "url": null, | ||
471 | "version": "2023" | 471 | "version": "2023" | ||
472 | } | 472 | } |