2019
DOI: 10.1109/access.2019.2947260
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Efficient Hard-Decision Quantization Using an Adaptive Deadzone Offset Model for Video Coding

Abstract: In video coding, rate distortion optimized quantization (RDOQ), a popular version of softdecision quantization (SDQ), achieves superior coding performance, however is ill-suited for hardware implementation due to its inherent sequential processing. On the other hand, deadzone hard-decision quantization (HDQ) is friendly to hardware implementation, however suffers from non-negligible coding performance degradation. This paper proposes a content-adaptive deadzone offset model to improve the coefficient-wise dead… Show more

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Cited by 5 publications
(2 citation statements)
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“…Yan et al [19] utilized spatial and temporal characteristics to establish a spatiotemporal perception-aware model to adjust the CTUlevel QP offset. In [10], [20]- [22], the information loss and compression artifacts introduced by quantization can be effectively reduced by accurately modeling the distribution of DCT coefficients. In [8], [9], [23], the temporal adaptive quantization methods were used to reduce the inter-frame dependency and achieve a significant global optimization by using a group of neighboring frames.…”
Section: A Adaptive Quantizationmentioning
confidence: 99%
See 1 more Smart Citation
“…Yan et al [19] utilized spatial and temporal characteristics to establish a spatiotemporal perception-aware model to adjust the CTUlevel QP offset. In [10], [20]- [22], the information loss and compression artifacts introduced by quantization can be effectively reduced by accurately modeling the distribution of DCT coefficients. In [8], [9], [23], the temporal adaptive quantization methods were used to reduce the inter-frame dependency and achieve a significant global optimization by using a group of neighboring frames.…”
Section: A Adaptive Quantizationmentioning
confidence: 99%
“…Under this strategy, blocks with uniform size still need to share the same inverse transform kernels. To avoid the cost of transmitting parameters, some studies [8]- [10] have proposed adaptive quantization, which indirectly achieves the purpose of reducing quantization distortion by dynamically adjusting the quantization level at the encoder, but the decoder still follows a unified inverse quantization rule without having the ability of adaptive compensation. The in-loop filters [2] further reduce the quantization distortion by using the pixel correlations.…”
Section: Introductionmentioning
confidence: 99%