动态纹理的时空空洞分析

Yuping Sun, Yong Xu, Yuhui Quan
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引用次数: 9

摘要

本文解决了动态纹理(DT)中局部时空模式时间特征的可靠捕获问题。提出了一种强大的DT描述子,对视点变化、光照变化和视频变形具有较强的鲁棒性。观察到局部二值化的DT模式在时空上具有平稳的不规则性,我们提出通过空隙度分析来表征局部二值化的DT模式在时间轴和空间轴上的分布。我们还观察到这种不规则性在沿同一轴的DT切片上相似,但在轴线之间不同。因此,由此产生的基于缺乏性的特征沿每个轴平均并连接为最终的DT描述符。我们将提出的DT描述符应用于DT分类,并在几个基准数据集上评估了其性能。实验结果表明,与现有的描述符相比,所提出的描述符具有强大的功能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Characterizing dynamic textures with space-time lacunarity analysis
This paper addresses the challenge of reliably capturing the temporal characteristics of local space-time patterns in dynamic texture (DT). A powerful DT descriptor is proposed, which enjoys strong robustness to viewpoint changes, illumination changes, and video deformation. Observing that local DT patterns are spatial-temporally distributed with stationary irregularities, we proposed to characterize the distributions of local binarized DT patterns along both the temporal and the spatial axes via lacunarity analysis. We also observed such irregularities are similar on the DT slices along the same axis but distinct between axes. Thus, the resulting lacunarity based features are averaged along each axis and concatenated as the final DT descriptor. We applied the proposed DT descriptor to DT classification and evaluated its performance on several benchmark datasets. The experimental results have demonstrated the power of the proposed descriptor in comparison with existing ones.
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