Yang Meng, Zhang Gong. Unsupervised compressive sensing of change area in remote sensing images[J]. Journal of Image and Graphics, 2011, 16(11): 2081-2087. DOI: 10.11834/jig.20111119.
Unsupervised compressive sensing of change area in remote sensing images
Traditional remote sensing image change detection approaches based on structure features are usually limited by imaging stability. In this paper
we introduce a new method for unsupervised change detection in remote sensing images using compressive sensing (CS) based on the image inherent sparse structures. For this algorithm
a large collection of image patches is projected onto high dimensional spaces through redundant dictionary
giving an adaptive sparse representation per each image patch. A random matrix is taken as measurement matrix to realize feature space dimension reduction. Then
the final change detection is realized by clustering the feature vector space using the fuzzy C-mean clustering(FCM)algorithm
achieving the reconstruction of change regional information. The experimental results demonstrate that the proposed algorithm has good change detection results both in contour and region and has a good robustness.