EVALUATION OF FEATURE SELECTION METHODS FOR VEGETATION MAPPING USING MULTITEMPORAL SENTINEL IMAGERY

With the recent advances in remote sensing technologies for Earth observation (EO), many different remote sensors (e.g., optical, radar) collect data with distinctive properties. EO data have been employed to monitor croplands and forested areas, oceans and seas, urban settlements, and natural hazar...

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Main Authors: D. Dobrinić, M. Gašparović, D. Medak
Format: Article
Language:English
Published: Copernicus Publications 2022-05-01
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/XLIII-B3-2022/485/2022/isprs-archives-XLIII-B3-2022-485-2022.pdf
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author D. Dobrinić
M. Gašparović
D. Medak
author_facet D. Dobrinić
M. Gašparović
D. Medak
author_sort D. Dobrinić
collection DOAJ
description With the recent advances in remote sensing technologies for Earth observation (EO), many different remote sensors (e.g., optical, radar) collect data with distinctive properties. EO data have been employed to monitor croplands and forested areas, oceans and seas, urban settlements, and natural hazards. The spectral, spatial, and temporal resolutions of remote sensors have been continuously improving, making geospatial monitoring more accurate and comprehensive than ever before. To tackle this issue, various variable selection methods (e.g., filter, wrapper, and embedded methods) are nowadays used to reduce data complexity, and hence improve classification accuracy. Therefore, the goal of this research was twofold. Firstly, to assess the performance of the random forest (RF) classifier in a large heterogeneous landscape with diverse land-cover categories using multi-seasonal Sentinel imagery (i.e., Sentinel-1; S1 and Sentinel-2; S2) and ancillary data. Secondly, to compare RF variable selection methods to identify a subset of predictor variables that will be included in a final, simpler model. Using mean decrease accuracy (MDA) as a feature selection (FS) method, an original dataset was reduced from 114 to 34 input features, and its classification performance outperformed all-feature (114 features) and band-only (36 features) model with an OA of 90.91%. The most pertinent input features for vegetation mapping were S2 spectral bands (14 features), followed by the spectral indices derived from S2, texture features, and S1 bands. This research improved vegetation mapping by integrating radar and optical imagery, especially after applying FS methods which removed redundant and noisy features from the original dataset. Future research should address additional feature selection methods (i.e., filter, wrapper, or the embedded) for vegetation mapping, combined with advanced deep learning methods.
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spelling doaj.art-e4003ae68dfe4ab9b91062b2f3d9ec9b2022-12-22T00:19:23ZengCopernicus PublicationsThe International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences1682-17502194-90342022-05-01XLIII-B3-202248549110.5194/isprs-archives-XLIII-B3-2022-485-2022EVALUATION OF FEATURE SELECTION METHODS FOR VEGETATION MAPPING USING MULTITEMPORAL SENTINEL IMAGERYD. Dobrinić0M. Gašparović1D. Medak2Faculty of Geodesy, Chair of Geoinformatics, University of Zagreb, 10000 Zagreb, CroatiaFaculty of Geodesy, Chair of Photogrammetry and Remote Sensing, University of Zagreb, 10000 Zagreb, CroatiaFaculty of Geodesy, Chair of Geoinformatics, University of Zagreb, 10000 Zagreb, CroatiaWith the recent advances in remote sensing technologies for Earth observation (EO), many different remote sensors (e.g., optical, radar) collect data with distinctive properties. EO data have been employed to monitor croplands and forested areas, oceans and seas, urban settlements, and natural hazards. The spectral, spatial, and temporal resolutions of remote sensors have been continuously improving, making geospatial monitoring more accurate and comprehensive than ever before. To tackle this issue, various variable selection methods (e.g., filter, wrapper, and embedded methods) are nowadays used to reduce data complexity, and hence improve classification accuracy. Therefore, the goal of this research was twofold. Firstly, to assess the performance of the random forest (RF) classifier in a large heterogeneous landscape with diverse land-cover categories using multi-seasonal Sentinel imagery (i.e., Sentinel-1; S1 and Sentinel-2; S2) and ancillary data. Secondly, to compare RF variable selection methods to identify a subset of predictor variables that will be included in a final, simpler model. Using mean decrease accuracy (MDA) as a feature selection (FS) method, an original dataset was reduced from 114 to 34 input features, and its classification performance outperformed all-feature (114 features) and band-only (36 features) model with an OA of 90.91%. The most pertinent input features for vegetation mapping were S2 spectral bands (14 features), followed by the spectral indices derived from S2, texture features, and S1 bands. This research improved vegetation mapping by integrating radar and optical imagery, especially after applying FS methods which removed redundant and noisy features from the original dataset. Future research should address additional feature selection methods (i.e., filter, wrapper, or the embedded) for vegetation mapping, combined with advanced deep learning methods.https://www.int-arch-photogramm-remote-sens-spatial-inf-sci.net/XLIII-B3-2022/485/2022/isprs-archives-XLIII-B3-2022-485-2022.pdf
spellingShingle D. Dobrinić
M. Gašparović
D. Medak
EVALUATION OF FEATURE SELECTION METHODS FOR VEGETATION MAPPING USING MULTITEMPORAL SENTINEL IMAGERY
The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences
title EVALUATION OF FEATURE SELECTION METHODS FOR VEGETATION MAPPING USING MULTITEMPORAL SENTINEL IMAGERY
title_full EVALUATION OF FEATURE SELECTION METHODS FOR VEGETATION MAPPING USING MULTITEMPORAL SENTINEL IMAGERY
title_fullStr EVALUATION OF FEATURE SELECTION METHODS FOR VEGETATION MAPPING USING MULTITEMPORAL SENTINEL IMAGERY
title_full_unstemmed EVALUATION OF FEATURE SELECTION METHODS FOR VEGETATION MAPPING USING MULTITEMPORAL SENTINEL IMAGERY
title_short EVALUATION OF FEATURE SELECTION METHODS FOR VEGETATION MAPPING USING MULTITEMPORAL SENTINEL IMAGERY
title_sort evaluation of feature selection methods for vegetation mapping using multitemporal sentinel imagery
url https://www.int-arch-photogramm-remote-sens-spatial-inf-sci.net/XLIII-B3-2022/485/2022/isprs-archives-XLIII-B3-2022-485-2022.pdf
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