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Depthwise Separable ResNet in the MAP Framework for Hyperspectral Image Classification

Kui Li, Zhiguo Ma, Linlin Xu, Ye Chen, Yiyi Ma, Wei Wu, Fang Wang, Zihao Liu

2020IEEE Geoscience and Remote Sensing Letters20 citationsDOI

Abstract

To build small and efficient neural networks for hyperspectral image (HSI) classification, this letter presents a depthwise separable residual neural network (ResNet). This approach, motivated by the popular MobileNet architecture, decomposes the traditional spatial-spectral convolution operation into a spatial-independent pointwise spectral convolution and a spectral-independent depthwise spatial convolution. It allows the separation of spectral and spatial information in HSI and also greatly reduces the network size to prevent the overfitting issue. To better preserve the class boundaries and edges, the proposed ResNet is integrated into a maximum a posteriori (MAP) framework to allow the use of the conditional random field (CRF) model. The experiment results on benchmark HSI scene demonstrate that the proposed ResNet compares favorably with several popular deep learning HSI classifiers and that the ResNet-CRF approach achieves higher accuracy and better boundaries among neighboring classes.

Topics & Concepts

Computer scienceArtificial intelligencePattern recognition (psychology)Hyperspectral imagingOverfittingConvolution (computer science)Residual neural networkContextual image classificationConvolutional neural networkPointwiseSpatial analysisDecision boundaryArtificial neural networkImage (mathematics)MathematicsRemote sensingSupport vector machineGeographyMathematical analysisRemote-Sensing Image ClassificationRemote Sensing and Land UseAdvanced Image Fusion Techniques
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