Abstract

Satellite video scene classification (SVSC) is a challenging work in remote sensing. The main procedure of SVSC is spatial–temporal feature extraction. Unfortunately, massive numbers of dim small moving targets and the low signal-to-noise ratio (SNR) of satellite video bring great challenges to feature extraction. It is difficult to apply traditional feature extraction methods to SVSC because they are used to classify the actions of high-quality video. According to the theory of low-rank sparse decomposition, a Low-rank Sparse Representation Two-stream Network (LSRTN) is designed to increase the classification accuracy of two-stream networks. First, we propose a Low-rank Sparse Component Analysis Network (LSCAN) to decompose satellite videos into low-rank background images and sparse moving target sequences. The LSCAN possesses the advantage of low-rank sparse decomposition to solve small targets and has the capability to adjust the features using the data. Moreover, the LSCAN can efficiently improve the feature extraction of low SNR video. Second, a two-stream structure that was proven to be effective for multiclass video classification was applied to obtain the spatial features and temporal features in each stream. Finally, a fully connected layer integrates the features to classify the satellite video scenes. To utilize the label information, we refine the loss function to adjust the degree of low-rank sparse characteristics and ensure the classification accuracy of training. The experimental results demonstrate that the proposed method achieves better performance than the baseline methods for the SVSC task.

Full Text
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