Content-based and perceptual bit-allocation using matching pursuits
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When communicating at a very-low bit-rate, video coders are unable to preserve high visual quality for all images. A selection of key regions according to human viewing and understanding may therefore be useful: it allows extracting essential features and to code them with a high quality, while the remainder of the image is coarsely transmitted. Such an approach requires a signal decomposition allowing an adaptive spatial variant bit allocation. Matching pursuits (MP) explicitly select the information to be transmitted among a large and overcomplete set of functions and quantize it according to a fixed and constant step. For MP, bit allocation is equivalent to function selection. This makes matching pursuits well suited for spatial variant bit allocation, since functions matched to important objects can be chosen. In this paper, we first show the abilities of matching pursuits to allocate an available bit-budget according to a semantic understanding of the scene. This semantic information can be provided either automatically or interactively. Second, the possibility to incorporate perceptive criteria within the MP coding algorithm is investigated.
论文关键词:Content-based scalability,Video coding,Bit-rate allocation,Perceptual coding
论文评审过程:Received 22 March 1999, Revised 17 February 2000, Accepted 30 May 2000, Available online 26 March 2001.
论文官网地址:https://doi.org/10.1016/S0923-5965(00)00039-4