CROWN-LEVEL TREE SPECIES CLASSIFICATION USING INTEGRATED AIRBORNE HYPERSPECTRAL AND LIDAR REMOTE SENSING DATA
Mapping tree species is essential for sustainable planning as well as to improve our understanding of the role of different trees as different ecological service. However, crown-level tree species automatic classification is a challenging task due to the spectral similarity among diversified tree sp...
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Copernicus Publications
2018-05-01
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Series: | The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences |
Online Access: | https://www.int-arch-photogramm-remote-sens-spatial-inf-sci.net/XLII-3/2629/2018/isprs-archives-XLII-3-2629-2018.pdf |
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Article |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Z. Wang Z. Wang J. Wu Y. Wang Y. Wang X. Kong X. Kong H. Bao H. Bao Y. Ni Y. Ni L. Ma L. Ma J. Jin J. Jin |
spellingShingle |
Z. Wang Z. Wang J. Wu Y. Wang Y. Wang X. Kong X. Kong H. Bao H. Bao Y. Ni Y. Ni L. Ma L. Ma J. Jin J. Jin CROWN-LEVEL TREE SPECIES CLASSIFICATION USING INTEGRATED AIRBORNE HYPERSPECTRAL AND LIDAR REMOTE SENSING DATA The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences |
author_facet |
Z. Wang Z. Wang J. Wu Y. Wang Y. Wang X. Kong X. Kong H. Bao H. Bao Y. Ni Y. Ni L. Ma L. Ma J. Jin J. Jin |
author_sort |
Z. Wang |
title |
CROWN-LEVEL TREE SPECIES CLASSIFICATION USING INTEGRATED AIRBORNE HYPERSPECTRAL AND LIDAR REMOTE SENSING DATA |
title_short |
CROWN-LEVEL TREE SPECIES CLASSIFICATION USING INTEGRATED AIRBORNE HYPERSPECTRAL AND LIDAR REMOTE SENSING DATA |
title_full |
CROWN-LEVEL TREE SPECIES CLASSIFICATION USING INTEGRATED AIRBORNE HYPERSPECTRAL AND LIDAR REMOTE SENSING DATA |
title_fullStr |
CROWN-LEVEL TREE SPECIES CLASSIFICATION USING INTEGRATED AIRBORNE HYPERSPECTRAL AND LIDAR REMOTE SENSING DATA |
title_full_unstemmed |
CROWN-LEVEL TREE SPECIES CLASSIFICATION USING INTEGRATED AIRBORNE HYPERSPECTRAL AND LIDAR REMOTE SENSING DATA |
title_sort |
crown-level tree species classification using integrated airborne hyperspectral and lidar remote sensing data |
publisher |
Copernicus Publications |
series |
The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences |
issn |
1682-1750 2194-9034 |
publishDate |
2018-05-01 |
description |
Mapping tree species is essential for sustainable planning as well as to improve our understanding of the role of different trees as different ecological service. However, crown-level tree species automatic classification is a challenging task due to the spectral similarity among diversified tree species, fine-scale spatial variation, shadow, and underlying objects within a crown. Advanced remote sensing data such as airborne Light Detection and Ranging (LiDAR) and hyperspectral imagery offer a great potential opportunity to derive crown spectral, structure and canopy physiological information at the individual crown scale, which can be useful for mapping tree species. In this paper, an innovative approach was developed for tree species classification at the crown level. The method utilized LiDAR data for individual tree crown delineation and morphological structure extraction, and Compact Airborne Spectrographic Imager (CASI) hyperspectral imagery for pure crown-scale spectral extraction. Specifically, four steps were include: 1) A weighted mean filtering method was developed to improve the accuracy of the smoothed Canopy Height Model (CHM) derived from LiDAR data; 2) The marker-controlled watershed segmentation algorithm was, therefore, also employed to delineate the tree-level canopy from the CHM image in this study, and then individual tree height and tree crown were calculated according to the delineated crown; 3) Spectral features within 3 × 3 neighborhood regions centered on the treetops detected by the treetop detection algorithm were derived from the spectrally normalized CASI imagery; 4) The shape characteristics related to their crown diameters and heights were established, and different crown-level tree species were classified using the combination of spectral and shape characteristics. Analysis of results suggests that the developed classification strategy in this paper (OA = 85.12 %, Kc = 0.90) performed better than LiDAR-metrics method (OA = 79.86 %, Kc = 0.81) and spectral-metircs method (OA = 71.26, Kc = 0.69) in terms of classification accuracy, which indicated that the advanced method of data processing and sensitive feature selection are critical for improving the accuracy of crown-level tree species classification. |
url |
https://www.int-arch-photogramm-remote-sens-spatial-inf-sci.net/XLII-3/2629/2018/isprs-archives-XLII-3-2629-2018.pdf |
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doaj-a2e9370ed24f4567b9dae7505b9849642020-11-24T23:26:36ZengCopernicus PublicationsThe International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences1682-17502194-90342018-05-01XLII-32629263410.5194/isprs-archives-XLII-3-2629-2018CROWN-LEVEL TREE SPECIES CLASSIFICATION USING INTEGRATED AIRBORNE HYPERSPECTRAL AND LIDAR REMOTE SENSING DATAZ. Wang0Z. Wang1J. Wu2Y. Wang3Y. Wang4X. Kong5X. Kong6H. Bao7H. Bao8Y. Ni9Y. Ni10L. Ma11L. Ma12J. Jin13J. Jin14Yellow River Institute of Hydraulic Research, Yellow River Conservancy Commission, Zhengzhou, ChinaKey Laboratory of the Loess Plateau Soil Erosion and Water Process and Control, Ministry of Water Resources, Zhengzhou, ChinaHydrology and Water Resources Institute, Hohai University, Nanjing, ChinaYellow River Institute of Hydraulic Research, Yellow River Conservancy Commission, Zhengzhou, ChinaKey Laboratory of the Loess Plateau Soil Erosion and Water Process and Control, Ministry of Water Resources, Zhengzhou, ChinaYellow River Institute of Hydraulic Research, Yellow River Conservancy Commission, Zhengzhou, ChinaKey Laboratory of the Loess Plateau Soil Erosion and Water Process and Control, Ministry of Water Resources, Zhengzhou, ChinaYellow River Institute of Hydraulic Research, Yellow River Conservancy Commission, Zhengzhou, ChinaKey Laboratory of the Loess Plateau Soil Erosion and Water Process and Control, Ministry of Water Resources, Zhengzhou, ChinaYellow River Institute of Hydraulic Research, Yellow River Conservancy Commission, Zhengzhou, ChinaKey Laboratory of the Loess Plateau Soil Erosion and Water Process and Control, Ministry of Water Resources, Zhengzhou, ChinaYellow River Institute of Hydraulic Research, Yellow River Conservancy Commission, Zhengzhou, ChinaKey Laboratory of the Loess Plateau Soil Erosion and Water Process and Control, Ministry of Water Resources, Zhengzhou, ChinaYellow River Institute of Hydraulic Research, Yellow River Conservancy Commission, Zhengzhou, ChinaKey Laboratory of the Loess Plateau Soil Erosion and Water Process and Control, Ministry of Water Resources, Zhengzhou, ChinaMapping tree species is essential for sustainable planning as well as to improve our understanding of the role of different trees as different ecological service. However, crown-level tree species automatic classification is a challenging task due to the spectral similarity among diversified tree species, fine-scale spatial variation, shadow, and underlying objects within a crown. Advanced remote sensing data such as airborne Light Detection and Ranging (LiDAR) and hyperspectral imagery offer a great potential opportunity to derive crown spectral, structure and canopy physiological information at the individual crown scale, which can be useful for mapping tree species. In this paper, an innovative approach was developed for tree species classification at the crown level. The method utilized LiDAR data for individual tree crown delineation and morphological structure extraction, and Compact Airborne Spectrographic Imager (CASI) hyperspectral imagery for pure crown-scale spectral extraction. Specifically, four steps were include: 1) A weighted mean filtering method was developed to improve the accuracy of the smoothed Canopy Height Model (CHM) derived from LiDAR data; 2) The marker-controlled watershed segmentation algorithm was, therefore, also employed to delineate the tree-level canopy from the CHM image in this study, and then individual tree height and tree crown were calculated according to the delineated crown; 3) Spectral features within 3 × 3 neighborhood regions centered on the treetops detected by the treetop detection algorithm were derived from the spectrally normalized CASI imagery; 4) The shape characteristics related to their crown diameters and heights were established, and different crown-level tree species were classified using the combination of spectral and shape characteristics. Analysis of results suggests that the developed classification strategy in this paper (OA = 85.12 %, Kc = 0.90) performed better than LiDAR-metrics method (OA = 79.86 %, Kc = 0.81) and spectral-metircs method (OA = 71.26, Kc = 0.69) in terms of classification accuracy, which indicated that the advanced method of data processing and sensitive feature selection are critical for improving the accuracy of crown-level tree species classification.https://www.int-arch-photogramm-remote-sens-spatial-inf-sci.net/XLII-3/2629/2018/isprs-archives-XLII-3-2629-2018.pdf |