Structural and Textural-Aware Feature Extraction for Hyperspectral Image Classification.

IEEE Geosci. Remote. Sens. Lett.(2024)

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摘要
Feature extraction is a prevalent technique in hyperspectral remote sensing. Various tasks require this technique as a pre-processing step, including image classification, anomaly detection, image denoising, and so on. Edge-preserving filtering based methods have been extensively utilized for this purpose. However, these methods do not take the inherent structural and textural information into account, leading to poor performance in classifying hyperspectral images (HSIs). In this letter, a new structural and textural-aware feature extraction method is proposed that preserves the relevant structural information and removes useless textures. First, structural and textural-aware recursive filtering features (STRFs) are extracted along with an exponential form of windowed inherent variance (eWIV). Then, multi-scale STRFs are integrated by the principal component analysis (PCA) method to obtain more discriminative features (MSTRF). Finally, the fused features are fed into a pixel-wise classifier to obtain the final results. The main difference between the MSTRF method and other feature extraction methods is that the MSTRF method can make full use of the proposed eWIV map, which can help to properly characterize structure and texture in HSIs. Experimental results on several public data sets indicate that our method leads to state-of-the-art classification performance, especially in the presence of very small training set.
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关键词
Structural and textural-aware feature extraction,hyperspectral image classification,windowed inherent variance,edge-preserving filtering
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