Abstract

Traditional image change detection based on a non-subsampled contourlet transform always ignores the neighborhood information’s relationship to the non-subsampled contourlet coefficients, and the detection results are susceptible to noise interference. To address these disadvantages, we propose a denoising method based on the non-subsampled contourlet transform domain that uses the Hidden Markov Tree model (NSCT-HMT) for change detection of remote sensing images. First, the ENVI software is used to calibrate the original remote sensing images. After that, the mean-ratio operation is adopted to obtain the difference image that will be denoised by the NSCT-HMT model. Then, using the Fuzzy Local Information C-means (FLICM) algorithm, the difference image is divided into the change area and unchanged area. The proposed algorithm is applied to a real remote sensing data set. The application results show that the proposed algorithm can effectively suppress clutter noise, and retain more detailed information from the original images. The proposed algorithm has higher detection accuracy than the Markov Random Field-Fuzzy C-means (MRF-FCM), the non-subsampled contourlet transform-Fuzzy C-means clustering (NSCT-FCM), the pointwise approach and graph theory (PA-GT), and the Principal Component Analysis-Nonlocal Means (PCA-NLM) denosing algorithm. Finally, the five algorithms are used to detect the southern boundary of the Gurbantunggut Desert in Xinjiang Uygur Autonomous Region of China, and the results show that the proposed algorithm has the best effect on real remote sensing image change detection.

Highlights

  • Image change detection is the process of identifying changes in land cover through analyzing remote sensing images acquired in the same geographical location at different times [1]

  • A remote sensing image change detection algorithm based on the non-sampling contourlet transform (NSCT)-hidden Markov tree (HMT) denoising model is proposed in this paper

  • The mean-ratio operation is adopted to obtain the difference image, which will be denosing by the NSCT-HMT model

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Summary

Introduction

Image change detection is the process of identifying changes in land cover through analyzing remote sensing images acquired in the same geographical location at different times [1]. It is widely used in the fields of video surveillance [2], medical diagnosis [3], land use [4], and natural disaster detection [5]. Information regarding changes in land use and coverage are important for natural resource management and scientific decision-making [6,7], and are a critical component of research in the areas of the environment, forestry, hydrology, agriculture, geography, and ecology.

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