Abstract
In this paper, we present a novel method for change-pattern mining in Synthetic Aperture Radar (SAR) image time series based on a distance matrix clustering algorithm, called K-Matrix. As it is different from the state-of-the-art methods, which analyze the SAR image time series based on the change detection matrix (CDM), here, we directly use the distance matrix to determine changed pixels and extract change patterns. The proposed scheme involves two steps: change detection in SAR image time series and change-pattern discovery. First, these distance matrices are constructed for each spatial position over the time series by a dissimilarity measurement. The changed pixels are detected by using a thresholding algorithm on the energy feature map of all distance matrices. Then, according to the change detection results in SAR image time series, the changed areas for pattern mining are determined. Finally, the proposed K-Matrix algorithm which clusters distance matrices by the matrix cross-correlation similarity is used to group all changed pixels into different change patterns. Experimental results on two datasets of TerraSAR-X image time series illustrate the effectiveness of the proposed method.
Highlights
The success of launching Earth Observation satellites has provided a powerful tool to map Earth’s surface and acquire information about targets on the ground
The method is based on the distance matrix which records the dissimilarity of two pixels at the same spatial position in time series
A novel method is proposed to detect the changes in the synthetic aperture radar (SAR) image time series
Summary
The success of launching Earth Observation satellites has provided a powerful tool to map Earth’s surface and acquire information about targets on the ground. Change detection (CD) has become an important application of remote sensing images [1], such as environmental monitoring [2,3,4], the observation of natural disasters [5], risk management [6], and the change analysis of human activity [7,8]. SAR is an active microwave imaging sensor and it can image in all-time and any weather conditions [9,10]. SAR sensors can acquire many high-quality image data of the same target area. That remotely sensed multitemporal images are usually used to analyze the changes taking place between two or more images acquired over the same area at different time [11]
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