[期刊论文]


Land use and land cover classification for rural residential areas in China using soft-probability cascading of multifeatures

作   者:
Bin Zhang;Yueyan Liu;Zuyu Zhang;Yonglin Shen;

出版年:2017

页    码:1 - 1
出版社:SPIE-Intl Soc Optical Eng


摘   要:

A multifeature soft-probability cascading scheme to solve the problem of land use and land cover (LULC) classification using high-spatial-resolution images to map rural residential areas in China is proposed. The proposed method is used to build midlevel LULC features. Local features are frequently considered as low-level feature descriptors in a midlevel feature learning method. However, spectral and textural features, which are very effective low-level features, are neglected. The acquisition of the dictionary of sparse coding is unsupervised, and this phenomenon reduces the discriminative power of the midlevel feature. Thus, we propose to learn supervised features based on sparse coding, a support vector machine (SVM) classifier, and a conditional random field (CRF) model to utilize the different effective low-level features and improve the discriminability of midlevel feature descriptors. First, three kinds of typical low-level features, namely, dense scale-invariant feature transform, gray-level co-occurrence matrix, and spectral features, are extracted separately. Second, combined with sparse coding and the SVM classifier, the probabilities of the different LULC classes are inferred to build supervised feature descriptors. Finally, the CRF model, which consists of two parts: unary potential and pairwise potential, is employed to construct an LULC classification map. Experimental results show that the proposed classification scheme can achieve impressive performance when the total accuracy reached about 87%.



关键字:

Image classification ; Associative arrays ; Feature extraction ; Remote sensing ; Image segmentation ; Roads ; Vegetation ; Visualization ; Classification systems ; Visual process modeling


所属期刊
Journal of Applied Remote Sensing
ISSN: 1931-3195
来自:SPIE-Intl Soc Optical Eng