Hongkui Wang, Shengju Yu, Y. Zhang, Zhuo Kuang, Li Yu
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Hard-Decision Quantization Algorithm Based on Deep Learning in Intra Video Coding
In video encoder, hard-decision quantization (HDQ) is well-suited for parallel processing, but suffers from non-negligible coding performance degradation compared with soft-decision quantization (SDQ). In this paper, by fully simulating the behavior of SDQ, a coefficient-adaptive offset model constructed by the deep learning approach is proposed to adjust the output of HDQ. Experiment results show that the proposed algorithm achieves promising RD performance and well-suited for hardware encoder implementation design.