Abstract

Remote sensing image change detection is widely used in land use and natural disaster detection. In order to improve the accuracy of change detection, a robust change detection method based on nonsubsampled contourlet transform (NSCT) fusion and fuzzy local information C-means clustering (FLICM) model is introduced in this paper. Firstly, the log-ratio and mean-ratio operators are used to generate the difference image (DI), respectively; then, the NSCT fusion model is utilized to fuse the two difference images, and one new DI is obtained. The fused DI can not only reflect the real change trend but also suppress the background. The FLICM is performed on the new DI to obtain the final change detection map. Four groups of homogeneous remote sensing images are selected for simulation experiments, and the experimental results demonstrate that the proposed homogeneous change detection method has a superior performance than other state-of-the-art algorithms.

Highlights

  • The application of remote sensing images is more and more extensive in the current research

  • We present a novel remote sensing image change detection method based on a multiscale geometric analysis fusion and fuzzy local information c-means (FLICM) model

  • The log-ratio image and mean-ratio image can be integrated into one new difference image with complementary information

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Summary

Introduction

The application of remote sensing images is more and more extensive in the current research. These applications include image fusion [1,2,3,4,5,6], image classification [7,8,9,10,11], change detection [12,13,14,15,16,17], etc. Compared with the supervised method, the unsupervised method does not need labeled reference images for training; in general, the multi-temporal remote sensing images we obtained do not have reference images, which matches the practical applications. Remote sensing image change detection mainly contains three steps: preprocessing (e.g., geometric registration or denoising); difference image generation; and analyzing the difference image to obtain the change detection map

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