Exploring Novel Optical Properties with Attention Mechanism for Gait Recognition

Mohammad Sabih, D. Vishwakarma, Narendra Kumar
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引用次数: 1

Abstract

One of the most hotly debated aspects of human biometry is gait recognition. It entails understanding human propulsion without any physical touch, which makes it an effective biometric technique because it is difficult to mimic. However, images of persons captured are frequently discovered with a complex diversity of clothing and ambient statistics, resulting in a low identification rate in many occasions. The research presents a unique framework for learning the projections of two-dimensional optical flowfields. Rich optical streams are also collected, which are then adjusted using a moving average approach to keep the dispersed information over optical maps. Finally, a post-training Attention method is used to remedy the incorrect prediction, hence improving training ability. The suggested technique specifically handles self-occlusion scenarios in Gait recognition with a higher recognition rate and is evaluated on benchmark datasets, notably CASIA-B and OUM-VLP, outperforming many other existing state-of-the-art methods.
基于注意机制的新型光学特性在步态识别中的应用
步态识别是人体生物计量学中争论最激烈的方面之一。它需要在没有任何身体接触的情况下理解人体的推进力,这使它成为一种有效的生物识别技术,因为它很难模仿。然而,被捕获的人的图像往往具有复杂的服装和环境统计的多样性,导致在许多情况下识别率很低。该研究提出了一种独特的学习二维光流场投影的框架。还收集了丰富的光流,然后使用移动平均方法对其进行调整,以保持光学地图上的分散信息。最后,采用训练后注意方法对预测错误进行修正,提高训练能力。所建议的技术专门处理步态识别中的自闭塞场景,具有更高的识别率,并在基准数据集(特别是CASIA-B和OUM-VLP)上进行了评估,优于许多其他现有的最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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