Bitrate reduction with little to no degradation in visual perception is a long-standing challenge in video coding. This paper targets this challenge by adaptively filtering the content prior to video… Click to show full abstract
Bitrate reduction with little to no degradation in visual perception is a long-standing challenge in video coding. This paper targets this challenge by adaptively filtering the content prior to video compression and in the preprocessing stage. This is done by applying a bilateral filter where the filter parameters are selected according to regional content complexity and estimated visual importance besides bitrate and quality requirements. A multi-scale metric based on 2D gradient is employed to determine bandwidth requirements of different regions. A random forest regression model is trained to predict distortion and bit requirements for a block, if it is filtered and encoded at a given quality. The predicted distortion and bit requirements are used to select filter parameters considering a cost function. The proposed approach is applied to both H.264 and HEVC encoders, with different GOP structures. The results show up to 60% bitrate reduction in terms of BD-Rate (about 20% on average) for the attempted test cases with little to no noticeable quality degradation.
               
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