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Highly Accurate Visual Method of Mars Terrain Classification for Rovers Based on Novel Image Features
by
Gao, Haibo
, Liu, Guangjun
, Ding, Liang
, Li, Nan
, Deng, Zongquan
, Lv, Fengtian
, Liu, Chuankai
in
Accuracy
/ Amplitudes
/ Analysis
/ Classification
/ Curiosity (Mars rover)
/ Datasets
/ Decision trees
/ Discovery and exploration
/ Feature selection
/ Image classification
/ Mars
/ Mars exploration
/ Mars probes
/ Mars rovers
/ Mars surface
/ Mars terrain
/ Methods
/ Neural networks
/ Rough terrain
/ rovers
/ Roving vehicles
/ Support vector machines
/ terrain classification
/ terrain visual features
2022
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Highly Accurate Visual Method of Mars Terrain Classification for Rovers Based on Novel Image Features
by
Gao, Haibo
, Liu, Guangjun
, Ding, Liang
, Li, Nan
, Deng, Zongquan
, Lv, Fengtian
, Liu, Chuankai
in
Accuracy
/ Amplitudes
/ Analysis
/ Classification
/ Curiosity (Mars rover)
/ Datasets
/ Decision trees
/ Discovery and exploration
/ Feature selection
/ Image classification
/ Mars
/ Mars exploration
/ Mars probes
/ Mars rovers
/ Mars surface
/ Mars terrain
/ Methods
/ Neural networks
/ Rough terrain
/ rovers
/ Roving vehicles
/ Support vector machines
/ terrain classification
/ terrain visual features
2022
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Do you wish to request the book?
Highly Accurate Visual Method of Mars Terrain Classification for Rovers Based on Novel Image Features
by
Gao, Haibo
, Liu, Guangjun
, Ding, Liang
, Li, Nan
, Deng, Zongquan
, Lv, Fengtian
, Liu, Chuankai
in
Accuracy
/ Amplitudes
/ Analysis
/ Classification
/ Curiosity (Mars rover)
/ Datasets
/ Decision trees
/ Discovery and exploration
/ Feature selection
/ Image classification
/ Mars
/ Mars exploration
/ Mars probes
/ Mars rovers
/ Mars surface
/ Mars terrain
/ Methods
/ Neural networks
/ Rough terrain
/ rovers
/ Roving vehicles
/ Support vector machines
/ terrain classification
/ terrain visual features
2022
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Highly Accurate Visual Method of Mars Terrain Classification for Rovers Based on Novel Image Features
Journal Article
Highly Accurate Visual Method of Mars Terrain Classification for Rovers Based on Novel Image Features
2022
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Overview
It is important for Mars exploration rovers to achieve autonomous and safe mobility over rough terrain. Terrain classification can help rovers to select a safe terrain to traverse and avoid sinking and/or damaging the vehicle. Mars terrains are often classified using visual methods. However, the accuracy of terrain classification has been less than 90% in read operations. A high-accuracy vision-based method for Mars terrain classification is presented in this paper. By analyzing Mars terrain characteristics, novel image features, including multiscale gray gradient-grade features, multiscale edges strength-grade features, multiscale frequency-domain mean amplitude features, multiscale spectrum symmetry features, and multiscale spectrum amplitude-moment features, are proposed that are specifically targeted for terrain classification. Three classifiers, K-nearest neighbor (KNN), support vector machine (SVM), and random forests (RF), are adopted to classify the terrain using the proposed features. The Mars image dataset MSLNet that was collected by the Mars Science Laboratory (MSL, Curiosity) rover is used to conduct terrain classification experiments. The resolution of Mars images in the dataset is 256 × 256. Experimental results indicate that the RF classifies Mars terrain at the highest level of accuracy of 94.66%.
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