Decompressed video enhancement via accurate regression prior

VCIP 2016 - 30th Anniversary of Visual Communication and Image Processing(2017)

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摘要
There is an increasing need for high-quality multimedia applications based on block-based hybrid video coding. Inevitably, the frame will degrade during the process of block-wise intra/inter prediction, transformation, and quantization, especially when the bit rate is low. In this paper, we propose an efficient decompressed video enhancement algorithm based on the adjusted anchored neighborhood regression (A+) method. In our work, first, we learn offline linear regressors, i.e. projection matrices from the decompressed to original video frames in the training phase. For grouping anchored neighborhoods more accurately, we adopt MI-KSVD rather than KSVD to learn the dictionary. Moreover, we exploit the mutual coherence between dictionary atoms and training samples to find the nearest neighbors. Second, in the enhancement phase, we boost the quality of input decompressed videos offline by learned regression priors. To verify the robustness of our enhancement method, extensive experiments are conducted. As shown in our experimental results, the proposed enhancement method yields superior performance both objectively and subjectively. © 2016 IEEE.
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关键词
Dictionary learning,image enhancement,ridge regression,video coding standard,video decompression
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