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A novel gait recognition using SRML learning with AP clustering

机译:使用AP聚类的SRML学习进行新型步态识别

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摘要

The human identity and gender recognition from gait sequences with random walking Directions. First collect a new gait dataset, where people walk freely in the scene, and the walking directions are arbitrary and time-varying throughout the sequence. Some frames of a gait sequence from our dataset, as well as the segmented and aligned human shadow. The latest approaches make the idealistic statement that persons walk along a fixed direction. First preprocessing the input video and by background calculation find the object detection and cluster them into several clusters. For each cluster, compute the cluster-based averaged gait image as features. Then, propose a sparse reconstruction based metric learning method to classify the video and identify the gender and person and maximize the inter-class sparse reconstruction errors and minimize the intra-class sparse reconstruction errors. The discriminative information can be demoralized for human identity and gender recognition.
机译:从具有随机步行方向的步态序列中识别人类身份和性别。首先收集一个新的步态数据集,使人们在场景中自由行走,整个序列中行走的方向是任意的且随时间变化。我们的数据集中的步态序列的某些帧,以及分割并对齐的人类阴影。最新的方法提出了理想主义的说法,即人们沿着固定的方向行走。首先对输入视频进行预处理,然后通过背景计算找到目标检测并将它们聚类为几个聚类。对于每个群集,将基于群集的平均步态图像计算为特征。然后,提出了一种基于稀疏重构的度量学习方法,对视频进行分类,识别性别和人,最大化类间稀疏重构误差,最大程度地减少类内稀疏重构误差。可以使歧视性信息士气低落,以实现人的身份认同和性别认同。

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