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Progressive Dictionary Learning With Hierarchical PredictiveStructure for Low Bit-Rate Scalable Video Coding

机译:分层预测的渐进式字典学习低比特率可伸缩视频编码的结构

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摘要

Dictionary learning has emerged as a promising alternative to the conventional hybrid coding framework. However, the rigid structure of sequential training and prediction degrades its performance in scalable video coding. This paper proposes a progressive dictionary learning framework with hierarchical predictive structure for scalable video coding, especially in low bitrate region. For pyramidal layers, sparse representation based on spatio-temporal dictionary is adopted to improve the coding efficiency of enhancement layers with a guarantee of reconstruction performance. The overcomplete dictionary is trained to adaptively capture local structures along motion trajectories as well as exploit the correlations between the neighboring layers of resolutions. Furthermore, progressive dictionary learning is developed to enable the scalability in temporal domain and restrict the error propagation in a closed-loop predictor. Under the hierarchical predictive structure, online learning is leveraged to guarantee the training and prediction performance with an improved convergence rate. To accommodate with the state-of-the-art scalable extension of H.264/AVC and latest High Efficiency Video Coding (HEVC), standardized codec cores are utilized to encode the base and enhancement layers.Experimental results show that the proposed method outperforms the latestscalable extension of HEVC and HEVC simulcast over extensive test sequences withvarious resolutions.
机译:字典学习已成为传统混合编码框架的有前途的替代方法。但是,顺序训练和预测的严格结构降低了其在可伸缩视频编码中的性能。本文提出了一种具有分层预测结构的渐进式字典学习框架,用于可伸缩视频编码,尤其是在低比特率区域。对于金字塔层,采用基于时空字典的稀疏表示来提高增强层的编码效率,并保证重建性能。对不完整的字典进行训练,以适应性地捕获沿运动轨迹的局部结构,并利用相邻分辨率层之间的相关性。此外,开发了渐进式字典学习以实现时域的可伸缩性并限制闭环预测器中的错误传播。在分级预测结构下,利用在线学习来保证训练和预测性能,并提高收敛速度。为了适应H.264 / AVC的最新可扩展性扩展和最新的高效视频编码(HEVC),标准化编解码器内核用于对基础层和增强层进行编码。实验结果表明,该方法优于最新方法。可扩展HEVC和HEVC同播的扩展测试范围,包括各种决议。

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