TY - JOUR
T1 - When low rank representation based hyperspectral imagery classification meets segmented stacked denoising auto-encoder based spatial-spectral feature
AU - Wang, Cong
AU - Zhang, Lei
AU - Wei, Wei
AU - Zhang, Yanning
N1 - Publisher Copyright:
© 2018 by the authors.
PY - 2018/2/1
Y1 - 2018/2/1
N2 - When confronted with limited labelled samples, most studies adopt an unsupervised feature learning scheme and incorporate the extracted features into a traditional classifier (e.g., support vector machine, SVM) to deal with hyperspectral imagery classification. However, these methods have limitations in generalizing well in challenging cases due to the limited representative capacity of the shallowfeature learningmodel, aswell as the insufficient robustness of the classifierwhich only depends on the supervision of labelled samples. To address these two problems simultaneously, we present an effective low-rank representation-based classification framework for hyperspectral imagery. In particular, a novel unsupervised segmented stacked denoising auto-encoder-based feature learning model is proposed to depict the spatial-spectral characteristics of each pixel in the imagery with deep hierarchical structure. With the extracted features, a low-rank representation based robust classifier is then developed which takes advantage of both the supervision provided by labelled samples and unsupervised correlation (e.g., intra-class similarity and inter-class dissimilarity, etc.) among those unlabelled samples. Both the deep unsupervised feature learning and the robust classifier benefit, improving the classification accuracy with limited labelled samples. Extensive experiments on hyperspectral imagery classification demonstrate the effectiveness of the proposed framework.
AB - When confronted with limited labelled samples, most studies adopt an unsupervised feature learning scheme and incorporate the extracted features into a traditional classifier (e.g., support vector machine, SVM) to deal with hyperspectral imagery classification. However, these methods have limitations in generalizing well in challenging cases due to the limited representative capacity of the shallowfeature learningmodel, aswell as the insufficient robustness of the classifierwhich only depends on the supervision of labelled samples. To address these two problems simultaneously, we present an effective low-rank representation-based classification framework for hyperspectral imagery. In particular, a novel unsupervised segmented stacked denoising auto-encoder-based feature learning model is proposed to depict the spatial-spectral characteristics of each pixel in the imagery with deep hierarchical structure. With the extracted features, a low-rank representation based robust classifier is then developed which takes advantage of both the supervision provided by labelled samples and unsupervised correlation (e.g., intra-class similarity and inter-class dissimilarity, etc.) among those unlabelled samples. Both the deep unsupervised feature learning and the robust classifier benefit, improving the classification accuracy with limited labelled samples. Extensive experiments on hyperspectral imagery classification demonstrate the effectiveness of the proposed framework.
KW - Deep unsupervised feature learning
KW - Hyperspectral imagery classification
KW - Low rank representation
KW - Segmented stacked denoising auto-encoder
UR - http://www.scopus.com/inward/record.url?scp=85042531857&partnerID=8YFLogxK
U2 - 10.3390/rs10020284
DO - 10.3390/rs10020284
M3 - 文章
AN - SCOPUS:85042531857
SN - 2072-4292
VL - 10
JO - Remote Sensing
JF - Remote Sensing
IS - 2
M1 - 284
ER -