Abstract

Change detection (CD) for multitemporal hyperspectral images (HSI) can be approached as classification consisting of two steps, change feature extraction and change identification. This paper is focused on binary classification of the changed and the unchanged samples, which is the essential case of change detection. Meanwhile, it is challenging to extract clean change features from heavily corrupted spectral change vectors (SCV) of multitemporal HSI. The corruptions can be characterized as gross sample-specific errors, i.e., outliers, and small entry-wise noise following Gaussian distribution. To address the issue, this paper proposes a novel Spectrally-Spatially (SS) Regularized Low-Rank and Sparse Decomposition (LRSD) model, denoted by LRSD_SS. It decomposes the SCV into three components, a locally smoothed low-rank matrix for the clean change features, a sparse matrix for the outliers and an error matrix for the small Gaussian noise. The proposed method is effective in change feature extraction and robust to noise corruptions as it exploits the underlying data structures of the SCV, especially local spectral-spatial smoothness. It is also efficient since there is a closed-form solution for the feature component in the optimization problem of LRSD_SS. The experimental results in the paper show that the proposed method outperforms several classic methods which only deal with the spectral domain of image samples, as well as some state-of-the-art methods which use both spectral and spatial information

Highlights

  • Detection of land changes in multitemporal remote sensing images is useful to various areas, such as disaster monitoring, resource management and urban development [1,2,3,4]

  • With the proposed SS regularization which maintains the local patterns in the spectral change vectors (SCV), LRSD_SS can further characterize the nature of the change features, making it easier to separate the features from various types of noise and identify the changes

  • For better change detection in hyperspectral images (HSI), this paper considers change detection as a classification problem and proposes a novel method, LRSD_SS

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Summary

Introduction

Detection of land changes in multitemporal remote sensing images is useful to various areas, such as disaster monitoring, resource management and urban development [1,2,3,4]. This paper proposes a Spectrally-Spatially Regularized Low-Rank and Sparse Decomposition (LRSD_SS) method for change feature extraction. It addresses the most essential case in HSI change detection, which is binary classification of the changed and the unchanged samples [5,6,7,10]. In this way, the proposed method, LRSD_SS, maintains the change features by enhancing the local spectral-spatial smoothness in the low-rank data and further suppressing the noise that could not be completely contained or removed in the noise components yielded by the original LRSD.

The LRSD Model
Spatial Regularization
Methodology
The Proposed Model
Implementation
Bitemporal HSI:
Efficacy
Methods
StoppinMgeCthroitdesria for Optimization
Conclusions

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