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Online Dictionary Learning Based Intra-frame Video Coding

机译:基于在线字典学习的帧内视频编码

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摘要

In this paper, we propose an online learning based intra-frame video coding approach, exploiting the texture sparsity of natural images. The proposed method is capable of learning the basic texture elements from previous frames with convergence guaranteed, leading to effective dictionaries for sparser representation of incoming frames. Benefiting from online learning, the proposed online dictionary learning based codec (ODL codec) is able to achieve a goal that the more video frames are being coded, the less non-zero coefficients are required to be transmitted. Then, these non-zero coefficients for image patches are further quantized and coded combined with dictionary synchronization. The experimental results demonstrate that the number of non-zero coefficients of each frame decreases rapidly while more frames are encoded. Compared to the off-line mode training, the proposed ODL codec, learning from video on the fly, is able to reduce the computational complexity with fast convergence. Finally, the rate distortion performance shows improvement in terms of PSNR compared with the K-SVD dictionary based compression and H.264/AVC for intra-frame video at low bit rates.
机译:在本文中,我们提出了一种基于在线学习的帧内视频编码方法,它利用了自然图像的纹理稀疏性。所提出的方法能够在保证收敛的情况下从先前的帧中学习基本纹理元素,从而为输入帧的稀疏表示提供有效的字典。受益于在线学习,提出的基于在线词典学习的编解码器(ODL编解码器)能够实现以下目标:编码的视频帧越多,需要传输的非零系数就越少。然后,将这些用于图像块的非零系数进一步量化和编码,并与字典同步结合。实验结果表明,在编码更多帧的同时,每帧的非零系数数量迅速减少。与离线模式训练相比,所提出的ODL编解码器可以实时从视频中学习,能够通过快速收敛来降低计算复杂度。最后,与基于K-SVD字典的压缩和低比特率的帧内视频的H.264 / AVC相比,速率失真性能在PSNR方面有所改善。

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