Abstract

Change detection from synthetic aperture radar (SAR) images is of great significance for natural environmental protection and human societal activity, which can be regarded as the process of assigning a class label (changed or unchanged) to each of the image pixels. This paper presents a novel classification technique to address the SAR change-detection task that employs a generalized Gamma deep belief network (gΓ-DBN) to learn features from difference images. We aim to develop a robust change detection method that can adapt to different types of scenarios for bitemporal co-registered Yellow River SAR image data set. This data set characterized by different looks, which means that the two images are affected by different levels of speckle. Widely used probability distributions offer limited accuracy for describing the opposite class pixels of difference images, making change detection entail greater difficulties. To address the issue, first, a gΓ-DBN can be constructed to extract the hierarchical features from raw data and fit the distribution of the difference images by means of a generalized Gamma distribution. Next, we propose learning the stacked spatial and temporal information extracted from various difference images by the gΓ-DBN. Consequently, a joint high-level representation can be effectively learned for the final change map. The visual and quantitative analysis results obtained on the Yellow River SAR image data set demonstrate the effectiveness and robustness of the proposed method.

Highlights

  • Change detection can be regarded as a classification procedure that classifies pixels into changed and unchanged classes

  • We focus on the change detection in the Yellow River Estuary area related to changes in water and farmland by analyzing two synthetic aperture radar (SAR) images captured over the study area

  • We focus on change detection in the Yellow River Estuary area, which is defined as identifying significantly changed areas in farmland, coastline and river by analyzing two SAR images captured over the same geographical area

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Summary

Introduction

Change detection can be regarded as a classification procedure that classifies pixels into changed and unchanged classes. With the use of various feature learning and classification technologies, change detection can be used to acquire land cover change information from two images taken in the same area at two different times. This interesting task features a wide range of applications related to environmental monitoring [1,2], urban studies [3], forest monitoring and damage assessment [4,5], risk analysis, etc. SAR image change-detection techniques are applicable in a wide range of fields. We focus on the change detection in the Yellow River Estuary area related to changes in water and farmland by analyzing two synthetic aperture radar (SAR) images captured over the study area

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