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New weighted prediction architecture for coding scenes with various fading effects image and video processing

机译:新的加权预测架构,用于对具有各种衰落效果的场景进行图像和视频处理编码

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Weighted prediction (WP) is one of the new tools in H.264 for encoding scenes with brightness variations. However, a single WP model does not handle all types of brightness variations. Also, large luminance difference induced by object motions would mislead an encoder in its use of WP which results in low coding efficiency. To solve these problems, a picture-based multi-pass encoding strategy, which extensively encodes the same picture multiple times with different WP models and selects the model with the minimum rate-distortion cost, has been adopted in H.264 to obtain better coding performance. However, computational complexity is impractically high. In this paper, a new WP referencing architecture is proposed to facilitate the use of multiple WP models by making a new arrangement of multiple frame buffers in multiple reference frame motion estimation. Experimental results show that the proposed scheme can improve prediction in scenes with different types of brightness variations and considerable luminance difference induced by motions within the same sequence.
机译:加权预测(WP)是H.264中用于对具有亮度变化的场景进行编码的新工具之一。但是,单个WP模型无法处理所有类型的亮度变化。而且,由物体运动引起的大的亮度差会误导编码器使用WP,从而导致编码效率低。为了解决这些问题,在H.264中采用了基于图片的多遍编码策略,该策略使用不同的WP模型广泛地对同一图片进行多次编码,并选择具有最小速率失真成本的模型,以获得更好的编码。表现。但是,计算复杂度不切实际。在本文中,提出了一种新的WP参考体系结构,以通过在多个参考帧运动估计中对多个帧缓冲区进行新安排来促进多个WP模型的使用。实验结果表明,所提出的方案可以提高场景中不同类型的亮度变化和相同序列中运动引起的明显亮度差异的场景中的预测。

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