Abstract

Change detection is a popular topic in remote sensing that is generally constrained to two remote sensing images captured at two different times. However, the optimal type of remote sensing image for change detection tasks has not yet been determined. The use of only hyperspectral images (HSIs) with low spatial resolution or multispectral images (MSIs) with low spectral resolution cannot obtain satisfactory change detection results. In this paper, we propose the fusion of simultaneously captured low spatial resolution HSIs and low spectral resolution MSIs with the use of a tensor regression-based method to detect change regions from the fused images at two different time points. In this method, non-local couple tensor CP decomposition (NCTCP) is initially applied to fuse the HSIs and MSIs. A difference image is then obtained by subtracting the fused images at two different time points. Thereafter, the tensors are extracted from the difference image and the tensor regression-based method is used to classify the difference image and detect the final change results. Experimental results from three real datasets suggest that the proposed method substantially outperforms the existing state-of-the-art change detection methods as well as any change detection methods using single-source images.

Highlights

  • CHANGE detection refers to calculating the difference between images captured in the same area at different time points via image processing and mathematical modeling techniques [1,2,3,4,5]

  • We propose a tensor regression- and image fusion-based change detection method (TRIFCD) using hyperspectral images (HSIs) and multispectral images (MSIs)

  • The experimental results for three simulated datasets suggest that the proposed method substantially outperforms existing state-of-the-art change detection methods as well as any change detection methods using single-source images

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Summary

INTRODUCTION

CHANGE detection refers to calculating the difference between images captured in the same area at different time points via image processing and mathematical modeling techniques [1,2,3,4,5]. Li et al proposed a new hyperspectral image fusion method based on non-local sparse tensor decomposition [37]. Kanatsoulis et al proposed a joint dictionary decomposition framework for remote sensing image fusion using the multidimensional structure of HSIs and MSIs [38] This method can ensure the high discrimination of fusion results in practical applications without requiring additional prior knowledge of the degradation calculations. Xu et al proposed a hyperspectral image fusion method based on the sparse representation of nonlocal block tensors (NCTCP) [39]. Based on the aforementioned information, it is known that: (1) HSI and MSI fusion can improve image resolution and the accuracy of change detection; (2) A tensor form can avoid breaking the original structure of high-dimensional data and helps to improve change detection accuracy. (4) The use of a simple and stable tensor regression classifier can obtain change detection results more accurately and efficiently

TENSOR NOTATIONS AND PROBLEM FORMULATION
HSI-MSI fusion
Change detection
OUR METHOD
Change detection using tensor regression
Algorithm procedure
Datasets
Quality measures
Parameter selection
Findings
CONCLUSION
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