Centroid adapted frequency selective extrapolation for reconstruction of lost image areas

2015 Visual Communications and Image Processing (VCIP)(2015)

引用 6|浏览19
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摘要
Lost image areas with different size and arbitrary shape can occur in many scenarios such as error-prone communication, depth-based image rendering or motion compensated wavelet lifting. The goal of image reconstruction is to restore these lost image areas as close to the original as possible. Frequency selective extrapolation is a block-based method for efficiently reconstructing lost areas in images. So far, the actual shape of the lost area is not considered directly. We propose a centroid adaption to enhance the existing frequency selective extrapolation algorithm that takes the shape of lost areas into account. To enlarge the test set for evaluation we further propose a method to generate arbitrarily shaped lost areas. On our large test set, we obtain an average reconstruction gain of 1.29 dB.
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关键词
Image Reconstruction,Signal Extrapolation,Error Concealment,Wavelet Transform
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