Multiple description video coding based on Lagrangian rate allocation and JPEG2000

Zohre Foroushi, M. Ardestani, A. Shirazi
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引用次数: 2

Abstract

Multiple description coding is a technique where all the transmitted segments of data, or descriptions, can be independently decoded. In this paper, a multiple description coding technique for videos is proposed, based on optimal Lagrangian rate allocation. in "T+2D" wavelet video coding, first, motion compensated temporal filtering (MCTF) is performed along the temporal direction to efficiently de-correlate frames within a GOP. Then, all low-pass filtered frames are encoded using JPEG2000 coder. All code blocks are coded at two different rates. Then blocks are split into three subsets with similar rate distortion characteristics; three balanced descriptions are generated by combining code blocks belonging to the three subsets encoded at opposite rates. A theoretical analysis is carried out, and the optimal rate distortion conditions are worked out. Simulation results show a noticeable performance improvement with respect to Akyol algorithm.
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基于拉格朗日速率分配和JPEG2000的多描述视频编码
多描述编码是一种可以对所有传输的数据片段或描述进行独立解码的技术。本文提出了一种基于最优拉格朗日速率分配的视频多描述编码技术。在“T+2D”小波视频编码中,首先沿时间方向进行运动补偿时间滤波(MCTF),有效地去除GOP内帧的相关。然后,使用JPEG2000编码器对所有低通滤波帧进行编码。所有代码块都以两种不同的速率编码。然后将数据块分成三个具有相似率失真特征的子集;通过组合属于以相反速率编码的三个子集的代码块,生成三个平衡的描述。进行了理论分析,得出了最优的速率畸变条件。仿真结果表明,与Akyol算法相比,该算法的性能有了明显的提高。
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