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The gait identification challenge problem: data sets and baseline algorithm

机译:步态识别挑战问题:数据集和基线算法

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Recognition of people through gait analysis is an important research topic, with potential applications in video surveillance, tracking, and monitoring. Recognizing the importance of evaluating and comparing possible competing solutions to this problem, we previously introduced the HumanID challenge problem consisting of a set of experiments of increasing difficulty; a baseline algorithm, and a large set of video sequences (about 300 GB of data related to 452 sequences from 74 subjects) acquired to investigate important dimensions of this problem, such as variations due to viewpoint, footwear and walking surface. In this paper we present a detailed investigation of the baseline algorithm, quantify the dependence of the various covariates on gait-based identification, and update the previous baseline performance with optimized on Cs. We establish that the performance of the baseline algorithm is robust with respect to its various parameters. The over- all identification performance is also stable with respect to the quality of the silhouettes. We find that the approximately lower 20% of the silhouette accounts for most of the recognition achieved. Viewpoint has barely statistically significant effect on identification rates, whereas footwear and surface-type does have significant effects with the effect due to surface-type being approximately 5 times that of shoe-type. The data set, the source code for the baseline algorithm, and UNIX scripts to reproduce the basic results reported here are available to the research community at marathon.csee.usf.edu/GaitBaseline/.
机译:通过步态分析识别人们是一个重要的研究主题,具有视频监控,跟踪和监控的潜在应用。认识到评估和比较可能的竞争解决方案对这个问题的重要性,我们之前介绍了人类挑战问题,这些挑战问题由一组增加难度的实验;基线算法和大量的视频序列(与来自74个受试者相关的约300 GB数据),以研究该问题的重要方面,例如由于观点,鞋类和行走表面引起的变化。在本文中,我们提出了对基线算法的详细研究,量化了各种协变量对基于步态的识别的依赖性,并更新了以CS优化的基线性能。我们确定基线算法的性能对其各种参数具有鲁棒性。关于剪影的质量也是稳定的所有识别性能。我们发现大多数较低的20%的轮廓占据了识别的识别。观点对识别率几乎没有统计学显着影响,而鞋类和表面型确实具有显着的影响,由于表面类型的效果是鞋类的约5倍。数据集,基线算法的源代码和unix脚本重现的基本结果在此处报告的基本结果可用于Marathon.csee.usf.edu/gaitbaseline/的研究社区。

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