Abstract

Polarimetric synthetic aperture radar (PolSAR) image classification is one of the fundamental research areas in remote sensing. Superpixels can provide boundary constraint information and are widely used in PolSAR image interpretation. However, traditional machine learning superpixel algorithms have many limitations for PolSAR image interpretation. Pseudo-color images are usually used as the superpixel algorithm inputs, and the loss of polarimetric information will decrease the performance. In addition, the superpixel algorithms are difficult to incorporate into state-of-the-art deep learning models and cannot be trained in an end-to-end manner. In this letter, a trainable end-to-end deep superpixel network is proposed for PolSAR image classification. The inputs of the proposed method can be any low/middle-level polarimetric features of a PolSAR image and the rich polarimetric feature representation can be learned. The produced superpixels of the proposed method are more concentrated near the land cover boundaries and can significantly improve the performance of PolSAR image classification. Experimental results show that the overall accuracies of the proposed method are approximately 2.57% and 1.44% higher than traditional superpixel algorithms on two PolSAR datasets and surpass some well-known deep learning methods.

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