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A QP-adaptive Mechanism for CNN-based Filter in Video Coding (2010.13059v1)

Published 25 Oct 2020 in eess.IV, cs.LG, and cs.MM

Abstract: Convolutional neural network (CNN)-based filters have achieved great success in video coding. However, in most previous works, individual models are needed for each quantization parameter (QP) band. This paper presents a generic method to help an arbitrary CNN-filter handle different quantization noise. We model the quantization noise problem and implement a feasible solution on CNN, which introduces the quantization step (Qstep) into the convolution. When the quantization noise increases, the ability of the CNN-filter to suppress noise improves accordingly. This method can be used directly to replace the (vanilla) convolution layer in any existing CNN-filters. By using only 25% of the parameters, the proposed method achieves better performance than using multiple models with VTM-6.3 anchor. Besides, an additional BD-rate reduction of 0.2% is achieved by our proposed method for chroma components.

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Authors (5)
  1. Chao Liu (358 papers)
  2. Heming Sun (39 papers)
  3. Jiro Katto (36 papers)
  4. Xiaoyang Zeng (12 papers)
  5. Yibo Fan (19 papers)
Citations (5)

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