ID | 115813 |
Author |
Jiang, Xiantao
Shanghai Maritime University
Song, Tian
Tokushima University
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Katayama, Takafumi
Tokushima University
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Leu, Jenq-Shiou
National Taiwan University of Science and Technology
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Keywords | H.265/HEVC
motion-vector prediction
video-coding efficiency
CU depth
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Content Type |
Journal Article
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Description | H.265/HEVC achieves an average bitrate reduction of 50% for fixed video quality compared with the H.264/AVC standard, while computation complexity is significantly increased. The purpose of this work is to improve coding efficiency for the next-generation video-coding standards. Therefore, by developing a novel spatial neighborhood subset, efficient spatial correlation-based motion vector prediction (MVP) with the coding-unit (CU) depth-prediction algorithm is proposed to improve coding efficiency. Firstly, by exploiting the reliability of neighboring candidate motion vectors (MVs), the spatial-candidate MVs are used to determine the optimized MVP for motion-data coding. Secondly, the spatial correlation-based coding-unit depth-prediction is presented to achieve a better trade-off between coding efficiency and computation complexity for interprediction. This approach can satisfy an extreme requirement of high coding efficiency with not-high requirements for real-time processing. The simulation results demonstrate that overall bitrates can be reduced, on average, by 5.35%, up to 9.89% compared with H.265/HEVC reference software in terms of the Bjontegaard Metric.
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Journal Title |
Symmetry
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ISSN | 20738994
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Publisher | MDPI
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Volume | 11
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Issue | 2
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Start Page | 129
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Published Date | 2019-01-23
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Rights | This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
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language |
eng
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Publisher
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departments |
Science and Technology
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