Title :
High-Resolution SAR Image Classification via Deep Convolutional Autoencoders
Author :
Jie Geng ; Jianchao Fan ; Hongyu Wang ; Xiaorui Ma ; Baoming Li ; Fuliang Chen
Author_Institution :
Sch. of Inf. & Commun. Eng., Dalian Univ. of Technol., Dalian, China
Abstract :
Synthetic aperture radar (SAR) image classification is a hot topic in the interpretation of SAR images. However, the absence of effective feature representation and the presence of speckle noise in SAR images make classification difficult to handle. In order to overcome these problems, a deep convolutional autoencoder (DCAE) is proposed to extract features and conduct classification automatically. The deep network is composed of eight layers: a convolutional layer to extract texture features, a scale transformation layer to aggregate neighbor information, four layers based on sparse autoencoders to optimize features and classify, and last two layers for postprocessing. Compared with hand-crafted features, the DCAE network provides an automatic method to learn discriminative features from the image. A series of filters is designed as convolutional units to comprise the gray-level cooccurrence matrix and Gabor features together. Scale transformation is conducted to reduce the influence of the noise, which integrates the correlated neighbor pixels. Sparse autoencoders seek better representation of features to match the classifier, since training labels are added to fine-tune the parameters of the networks. Morphological smoothing removes the isolated points of the classification map. The whole network is designed ingeniously, and each part has a contribution to the classification accuracy. The experiments of TerraSAR-X image demonstrate that the DCAE network can extract efficient features and perform better classification result compared with some related algorithms.
Keywords :
convolution; feature extraction; image classification; image texture; matrix algebra; radar imaging; radar resolution; speckle; synthetic aperture radar; Gabor features; TerraSAR-X image; convolutional layer; convolutional units; deep convolutional autoencoders; feature extraction; feature representation; gray-level cooccurrence matrix; high-resolution SAR image classification; morphological smoothing; scale transformation layer; sparse autoencoders; speckle noise; synthetic aperture radar; texture features; training labels; Accuracy; Feature extraction; Noise; Speckle; Synthetic aperture radar; Training; Transforms; Deep convolutional autoencoders (DCAEs); supervised classification; synthetic aperture radar (SAR) image;
Journal_Title :
Geoscience and Remote Sensing Letters, IEEE
DOI :
10.1109/LGRS.2015.2478256