提高帧间预测编码效率的超分辨和模糊解码图像

Y. Matsuo, A. Ichigaya, Kikufumi Kanda
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引用次数: 1

摘要

如果一个对象在帧间被锐化或模糊,那么视频编码中的帧间预测会很困难。因此,我们提出了一种利用超分辨率和模糊解码图像进行帧间预测的视频编码方法。在随机访问模式的联合勘探模型(JEM)中,利用先前解码的图像进行帧间预测。该方法在帧间预测之前,先对解码后的图像进行超分辨和模糊处理。帧间预测是利用三种类型的图像进行的,三种类型的图像由先前解码的图像和它的超分辨率和模糊图像组成。从这三种类型的图像中选择具有最低率失真(RD)代价的先前解码图像。在实验中,该方法在JEM 7.0中得到了实现。实验结果表明,该方法比传统的jem7.0编码器产生更高的视频质量。
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Super-Resolved and Blurred Decoded Pictures for Improving Coding Efficiency in Inter-Frame Prediction
Inter-frame prediction in video coding can be difficult if an object is sharped or blurred between inter frames. We therefore propose a video coding method for inter-frame prediction using super-resolved and blurred decoded pictures. In the joint exploration model (JEM) of random-access mode, inter-frame prediction is performed by using previously decoded pictures. In the proposed method, super-resolved and blurred pictures of the previously decoded pictures are generated before the inter-frame prediction. The inter-frame prediction is performed by using a three-type picture, which consist of a previously decoded picture and its super-resolved and blurred pictures. A previously decoded picture with the lowest rate distortion (RD) cost is selected from these three- type pictures. In the experiment, the proposed method is implemented in the JEM 7.0. The experimental results show that the proposed method produces higher video quality than the conventional JEM 7.0 coder.
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