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首页> 外文期刊>Journal of mechanics in medicine and biology >A NOVEL BIOMECHANICS-BASED APPROACH FOR PERSON RE-IDENTIFICATION BY GENERATING DENSE COLOR SIFT SALIENCE FEATURES
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A NOVEL BIOMECHANICS-BASED APPROACH FOR PERSON RE-IDENTIFICATION BY GENERATING DENSE COLOR SIFT SALIENCE FEATURES

机译:通过产生致密色彩筛选显着特征的人重新识别新的生物力学方法

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摘要

Currently, identifying humans using biomechanics-based approaches has gained a lot of significance for person re-identification. Biomechanics-based approaches use knee-hip angle-angle relationships and body movements for person re-identification. Generally, biomechanics of human walking and running is used for person re-identification. In fact, person re-identification is a complex and important task in academia as well as industry and remains an unsolved issue in the computer vision field. The subjects most commonly addressed regarding person re-identification include significant feature extraction that can function accurately with invariant appearance and robust classification. In this study, a significant color feature descriptor is proposed by combining dense color-SIFT and global convex hull salience region features. First convex hull boundary points are detected using the SIFT technique. Furthermore, it is extended with Grubb's outlier test to eliminate the outlier points detected by SIFT and mark the saliency region via convex hull. Then dense-SIFT and dense-CHF methods are used to extract local and global features within the convex hull region, respectively. Finally, the pre-ranked common nearest neighbor selection technique is applied to minimize overhead of dataset and generate more robust rank classification. The proposed technique is tested using three-camera database video sequences and three publicly available datasets, namely i-LIDS, VIPeR and GRID. Performance of re-identification system is evaluated using a statistical method with CMC curves. The results show better re-identification accuracy in solving the aforementioned problems.
机译:目前,使用基于生物力学的方法识别人类对人的重新识别产生了许多意义。基于生物力学的方法使用膝关节角角关系和身体运动来重新识别。通常,人类行走和运行的生物力学用于人员重新识别。事实上,人员重新识别是学术界以及行业的复杂和重要任务,仍然是计算机视野领域的未解决问题。关于人重新识别最常寻求的受试者包括显着的特征提取,可以用不变的外观和稳健的分类准确地起作用。在本研究中,通过组合密集的颜色筛选和全局凸船振荡区域特征来提出显着的颜色特征描述符。使用SIFT技术检测第一凸壳边界点。此外,它与GRUBB的异常试验扩展,以消除通过SIFT检测到的异常点,并通过凸船标记显着区域。然后,致密筛选和密集CHF方法分别用于提取凸壳区域内的局部和全局特征。最后,应用了预排列的常见邻居选择技术,以最小化数据集的开销,并生成更强大的等级分类。使用三相机数据库视频序列和三个公共数据集,即i-lids,Viper和Grid来测试所提出的技术。使用具有CMC曲线的统计方法来评估重新识别系统的性能。结果在解决上述问题方面表现出更好的重新识别准确性。

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