GPU-Accelerated CatBoost-Forest for Hyperspectral Image Classification Via Parallelized mRMR Ensemble Subspace Feature Selection
In this article, the graphics processing unit (GPU)-accelerated CatBoost (GPU-CatBoost) algorithm for hyperspectral image classification is first introduced and comparatively studied using diverse features. To further foster the classification performance from both accurate and efficient viewpoints,...
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doaj-2cf0c544475a41f3aa477423d0e669572021-06-03T23:03:27ZengIEEEIEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing2151-15352021-01-01143200321410.1109/JSTARS.2021.30635079368975GPU-Accelerated CatBoost-Forest for Hyperspectral Image Classification Via Parallelized mRMR Ensemble Subspace Feature SelectionAlim Samat0https://orcid.org/0000-0002-9091-6033Erzhu Li1https://orcid.org/0000-0002-5881-618XPeijun Du2Sicong Liu3https://orcid.org/0000-0003-1612-4844Junshi Xia4https://orcid.org/0000-0002-5586-6536State Key Laboratory of Desert and Oasis Ecology, Xinjiang Institute of Ecology and Geography, CAS, Urumqi, ChinaDepartment of Geographical Information Science, Jiangsu Normal University, Xuzhou, ChinaSchool of Geography and Ocean Science, Nanjing University, Nanjing, ChinaCollege of Surveying and Geoinformatics, Tongji University, Shanghai, ChinaGeoinformatics Unit, RIKEN Center for Advance Intelligence Project, Tokyo, JapanIn this article, the graphics processing unit (GPU)-accelerated CatBoost (GPU-CatBoost) algorithm for hyperspectral image classification is first introduced and comparatively studied using diverse features. To further foster the classification performance from both accurate and efficient viewpoints, an ensemble version of GPU-CatBoost, the GPU-accelerated CatBoost-Forest (GPU-CatBF) algorithm, is proposed by adopting the parallelized minimum redundancy maximum relevance (mRMR) ensemble (PmRMRE) feature selection (FS) algorithm. To evaluate the performance and suitability of mRMR and PmRMRE, 11 other state-of-the-art FS algorithms are comprehensively investigated. Experimental results on three widely acknowledged hyperspectral benchmarks showed that: 1) GPU-CatBoost is also an advanced ensemble learning (EL) algorithm for hyperspectral image classification using diverse features; 2) mRMR and PmRMRE have advanced properties for highly discriminative features and band selection, and the best results are achieved by PmRMRE in most cases in terms of both the robustness and computational efficiency; and 3) GPU-CatBF always outperforms CatBoost and GPU-CatBoost, while compatible and even better results are reachable without losing much computational efficiency in contrast with other selected decision tree-based EL algorithms.https://ieeexplore.ieee.org/document/9368975/CatBoostensemble learning (EL)feature selection (FS)gradient boosted decision tree (GBDT)histogram-based gradient boosting trees (histGBT)hyperspectral image classification |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Alim Samat Erzhu Li Peijun Du Sicong Liu Junshi Xia |
spellingShingle |
Alim Samat Erzhu Li Peijun Du Sicong Liu Junshi Xia GPU-Accelerated CatBoost-Forest for Hyperspectral Image Classification Via Parallelized mRMR Ensemble Subspace Feature Selection IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing CatBoost ensemble learning (EL) feature selection (FS) gradient boosted decision tree (GBDT) histogram-based gradient boosting trees (histGBT) hyperspectral image classification |
author_facet |
Alim Samat Erzhu Li Peijun Du Sicong Liu Junshi Xia |
author_sort |
Alim Samat |
title |
GPU-Accelerated CatBoost-Forest for Hyperspectral Image Classification Via Parallelized mRMR Ensemble Subspace Feature Selection |
title_short |
GPU-Accelerated CatBoost-Forest for Hyperspectral Image Classification Via Parallelized mRMR Ensemble Subspace Feature Selection |
title_full |
GPU-Accelerated CatBoost-Forest for Hyperspectral Image Classification Via Parallelized mRMR Ensemble Subspace Feature Selection |
title_fullStr |
GPU-Accelerated CatBoost-Forest for Hyperspectral Image Classification Via Parallelized mRMR Ensemble Subspace Feature Selection |
title_full_unstemmed |
GPU-Accelerated CatBoost-Forest for Hyperspectral Image Classification Via Parallelized mRMR Ensemble Subspace Feature Selection |
title_sort |
gpu-accelerated catboost-forest for hyperspectral image classification via parallelized mrmr ensemble subspace feature selection |
publisher |
IEEE |
series |
IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing |
issn |
2151-1535 |
publishDate |
2021-01-01 |
description |
In this article, the graphics processing unit (GPU)-accelerated CatBoost (GPU-CatBoost) algorithm for hyperspectral image classification is first introduced and comparatively studied using diverse features. To further foster the classification performance from both accurate and efficient viewpoints, an ensemble version of GPU-CatBoost, the GPU-accelerated CatBoost-Forest (GPU-CatBF) algorithm, is proposed by adopting the parallelized minimum redundancy maximum relevance (mRMR) ensemble (PmRMRE) feature selection (FS) algorithm. To evaluate the performance and suitability of mRMR and PmRMRE, 11 other state-of-the-art FS algorithms are comprehensively investigated. Experimental results on three widely acknowledged hyperspectral benchmarks showed that: 1) GPU-CatBoost is also an advanced ensemble learning (EL) algorithm for hyperspectral image classification using diverse features; 2) mRMR and PmRMRE have advanced properties for highly discriminative features and band selection, and the best results are achieved by PmRMRE in most cases in terms of both the robustness and computational efficiency; and 3) GPU-CatBF always outperforms CatBoost and GPU-CatBoost, while compatible and even better results are reachable without losing much computational efficiency in contrast with other selected decision tree-based EL algorithms. |
topic |
CatBoost ensemble learning (EL) feature selection (FS) gradient boosted decision tree (GBDT) histogram-based gradient boosting trees (histGBT) hyperspectral image classification |
url |
https://ieeexplore.ieee.org/document/9368975/ |
work_keys_str_mv |
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1721398765321977856 |