多视点视频编码的快速视差估计与模式决策

Haoqian Wang, Chengli Du, Xingzheng Wang, Yongbing Zhang, Lei Zhang
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引用次数: 0

摘要

视差估计和模式决策是多视点视频编码(MVC)中的关键技术,在计算量大幅增加的情况下可以提高压缩效率。基于卡尔曼滤波,提出了一种新的快速视差估计和模式决策算法。首先在时空相关的基础上建立视差向量的自回归(AR)模型,得到视差估计的初步结果。在此基础上,利用卡尔曼滤波进行优化,提高了估计速度。此外,提出了一种有效的模式预测可靠性判断方法,可以获得更有价值的模式预测结果,有效地缩小了编码模式的选择范围,实现了低复杂度的模式决策。实验结果表明,该方法在保持压缩效率的前提下,显著降低了计算复杂度。
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Fast Disparity Estimation and Mode Decision for Multi-view Video Coding
Disparity estimation and mode decisions are key techniques in multi-view video coding (MVC) which could improve the compression efficiency when the computational complexity increasing greatly. Based on Kalman filtering, a novel fast disparity estimation and mode decision algorithm is presented in this paper. We firstly built a autoregressive (AR) model of disparity vectors on the basis of spatio-temporal correlation so as to achieve a preliminary result of disparity estimation. Furthermore, the Kalman filter is utilized to optimize and improve the estimation speed. Moreover, an effective reliability judgment method for mode prediction is presented, with which, a more precious mode prediction result can be obtained and the selected range of coding mode is effectively reduced to achieve low complexity mode decision. The experimental results show that the computational complexity is significantly reduced while the compression efficiency is still maintained.
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