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Human centered peceptual video compression

机译:以人为中心的感知视频压缩

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摘要

In traditional visual saliency based video compression, the saliency feature changes according to persons, viewpoints, and distances. In this paper, we propose to apply a technique of human centered perceptual computation to improve video coding in the region of human centered perception. To detect the region of interest (ROI), we construct Harr and histogram of oriented gradients (HOG) features based combo of detectors to analyze a video in the first frame (intra-frame). The optical flow in human centered ROI is then used for macroblock (MB) quantization adjustment in H.264/AVC. For each MB, the quantization parameter (QP) is optimized with density value of optical flow image. The QP optimization process is based on a MB mapping model, which can be calculated by an inverse of the inverse tangent function. The Lagrange multiplier in the rate distortion optimization is also adapted so that the MB distortion at human centered region is minimized. By evaluating our scheme with the H.264 reference software, our results show that the proposed algorithm can improve the visual quality of ROI by about 1.01 dB while preserving coding efficiency.
机译:在传统的基于视觉显着性的视频压缩中,显着性特征会根据人,视点和距离而变化。在本文中,我们建议应用以人为中心的感知计算技术来改善以人为中心的感知区域中的视频编码。为了检测感兴趣的区域(ROI),我们基于检测器组合构造了Harr和定向梯度直方图(HOG)特征直方图,以分析第一帧(帧内)中的视频。然后将以人为中心的ROI中的光流用于H.264 / AVC中的宏块(MB)量化调整。对于每个MB,使用光流图像的密度值优化量化参数(QP)。 QP优化过程基于MB映射模型,可以通过反正切函数的反算来计算。还对速率失真优化中的拉格朗日乘数进行了调整,以使以人为中心的区域的MB失真最小化。通过使用H.264参考软件评估我们的方案,我们的结果表明,该算法可以在保持编码效率的同时,将ROI的视觉质量提高约1.01 dB。

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