MMAug 29, 2018

Wavelet Video Coding Algorithm Based on Energy Weighted Significance Probability Balancing Tree

arXiv:1808.09640v11 citations
Originality Incremental advance
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This work addresses video compression efficiency for multimedia applications, presenting an incremental improvement over prior wavelet-based techniques.

The paper tackles video compression by proposing a 3-D wavelet coding algorithm that weights subbands based on energy and uses a significance probability balancing tree, resulting in improved PSNR gains of up to 2.57dB and lower computation cost compared to existing methods.

This work presents a 3-D wavelet video coding algorithm. By analyzing the contribution of each biorthogonal wavelet basis to reconstructed signal's energy, we weight each wavelet subband according to its basis energy. Based on distribution of weighted coefficients, we further discuss a 3-D wavelet tree structure named \textbf{significance probability balancing tree}, which places the coefficients with similar probabilities of being significant on the same layer. It is implemented by using hybrid spatial orientation tree and temporal-domain block tree. Subsequently, a novel 3-D wavelet video coding algorithm is proposed based on the energy-weighted significance probability balancing tree. Experimental results illustrate that our algorithm always achieves good reconstruction quality for different classes of video sequences. Compared with asymmetric 3-D orientation tree, the average peak signal-to-noise ratio (PSNR) gain of our algorithm are 1.24dB, 2.54dB and 2.57dB for luminance (Y) and chrominance (U,V) components, respectively. Compared with temporal-spatial orientation tree algorithm, our algorithm gains 0.38dB, 2.92dB and 2.39dB higher PSNR separately for Y, U, and V components. In addition, the proposed algorithm requires lower computation cost than those of the above two algorithms.

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