Title :
SAR Image Change Detection Based on Iterative Label-Information Composite Kernel Supervised by Anisotropic Texture
Author :
Lu Jia ; Ming Li ; Yan Wu ; Peng Zhang ; Gaofeng Liu ; Hongmeng Chen ; Lin An
Author_Institution :
Nat. Key Lab. of Radar Signal Process., Xidian Univ., Xi´an, China
Abstract :
Kernel methods with specifically designed kernel function are suitable for dealing with practical nonlinear problems. However, kernel methods have found limited applications to synthetic aperture radar (SAR) image change detection in that their performances are affected by the inherent multiplicative speckle noise of SAR images. It is known that the spatial-contextual information is helpful in suppressing the degrading effects of the noise. Therefore, a label-information composite kernel (LIC kernel) constructed on the basis of the spatial-contextual information is proposed in this paper for SAR image change detection. A typical spatial information, the output-space label-neighborhood information that is extracted using all labels in the neighborhood of each pixel, may enhance noise immunity, but with inaccurate edge locations simultaneously. Consequently, the anisotropic Gaussian kernel model is utilized for analyzing anisotropic textures of the bitemporal images, and then, a comparison scheme acting on the input-space textures of the bi-temporal images is proposed to supervise the extraction of the output-space label-neighborhood information in the construction of the LIC kernel. The constructed LIC kernel is of good preservation of edge locations of changed areas as well as strong noise immunity. The LIC kernel is updated iteratively with the newest change map outputted from the support vector machine, until the change map converges. Experiments on real SAR images demonstrate the effectiveness of the LIC kernel method and illustrate that it has both strong noise immunity and good preservation of edge locations of changed areas for SAR image change detection.
Keywords :
Gaussian processes; image texture; iterative methods; radar detection; radar imaging; speckle; support vector machines; synthetic aperture radar; Gaussian kernel model; LIC kernel method; SAR image change detection; anisotropic texture; edge location preservation; inherent multiplicative speckle noise; input-space bitemporal image texture; iterative label-information composite supervised kernel; output-space label-neighborhood information extraction; spatial-contextual information; support vector machine; synthetic aperture radar; Analytical models; Data mining; Feature extraction; Kernel; Noise; Support vector machines; Synthetic aperture radar; Anisotropic texture analysis; kernel method and support vector machine (SVM); label-information composite kernel (LIC kernel kernel); spatial-contextual information; synthetic aperture radar (SAR) image change detection;
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
DOI :
10.1109/TGRS.2015.2388495