SIFT feature-preserving bit allocation for H.264/AVC video compression

ICIP(2012)

引用 14|浏览6
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摘要
Compression artifacts in low-quality videos strongly influence the performance of feature matching algorithms. In order to achieve reasonable feature matching performance even for low bit rate video, we propose to allocate the bit budget during compression such that the important features are preserved. Specifically, we present two bit allocation approaches to preserve the strongest SIFT features for H.264 encoded videos. For both approaches, we first categorize the Macroblocks in a Group of Pictures into several groups according to the scale specific characteristics of SIFT features. In our first approach a novel R-D model based on the matching score is applied to allocate the bit budget to these groups. In our second approach, in order to reduce the computational complexity, we analyze the detector characteristics of correctly matched pairs and propose a R-D optimization method based on the repeatability metric. Our experiments show that both approaches achieve better feature preservation when compared to standard video encoding which is optimized for maximum picture quality. The proposed approaches are fully standard compatible and the encoded videos can be decoded by any H.264 decoder.
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关键词
optimisation,picture quality,repeatability metric,matching score,bit budget allocation,image matching,r-d optimization method,h.264,data compression,low quality videos,h.264 encoded videos,computational complexity,feature extraction,video coding,sift features,compression artifacts,feature matching algorithms,r-d optimization,sift feature preserving bit allocation,h.264-avc video compression,low bit rate video
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