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SIFT-flow-based color correction for multi-view video

机译:基于SIFT流的多视图视频色彩校正

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During the multi-view video acquisition, color variation across the views tends to be incurred due to different camera positions, orientations, and local lighting conditions. Such color variation will inevitably deteriorate the performance of the follow-up multi-view video processing, such as multi-view video coding (MVC). To address this problem, an effective color correction algorithm, called the SIFT flow-based color correction (SFCC), is proposed in this paper. First, the SIFT-flow technique is used to establish point-to-point correspondences across all the views of the multi-view video. The average color is then computed based on those identified common corresponding points and used as the reference color. By minimizing the energy of the difference yielded between the color of those identified common corresponding points in each view with respect to the reference color, the color correction matrix for each view can be obtained and used to correct its color. Experimental results have shown that the proposed SFCC algorithm is able to effectively eliminate the color variation inherited in multi-view video. By further exploiting the developed SFCC algorithm as a pre-processing for the MVC, extensive simulation results have shown that the coding efficiency of the color-corrected multi-view video can be greatly improved (on average, 0.85 dB, 1.27 dB and 1.63 dB gain for Y, U, and V components, respectively), compared with that of the original multi-view video without color correction. (C) 2015 Elsevier B.V. All rights reserved.
机译:在多视点视频采集期间,由于不同的相机位置,方向和局部照明条件,往往会导致各视点的颜色变化。这种颜色变化将不可避免地恶化后续多视图视频处理(例如多视图视频编码(MVC))的性能。为了解决这个问题,本文提出了一种有效的色彩校正算法,称为SIFT基于流的色彩校正(SFCC)。首先,SIFT流技术用于在多视图视频的所有视图之间建立点对点对应关系。然后根据识别出的公共对应点计算平均颜色,并将其用作参考颜色。通过最小化相对于参考颜色在每个视图中识别的那些公共对应点的颜色之间产生的差异的能量,可以获取每个视图的颜色校正矩阵并将其用于校正其颜色。实验结果表明,所提出的SFCC算法能够有效消除多视点视频中遗传的颜色变化。通过进一步利用已开发的SFCC算法作为MVC的预处理,广泛的仿真结果表明,色彩校正的多视图视频的编码效率可以大大提高(平均分别为0.85 dB,1.27 dB和1.63 dB)与没有色彩校正的原始多视点视频相比,分别获得了Y,U和V分量的最大增益)。 (C)2015 Elsevier B.V.保留所有权利。

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