PerFication: A Person Identifying Technique by Evaluating Gait with 2D LiDAR Data

Mahmudul Hasan, Md. Kamal Uddin, R. Suzuki, Yoshinori Kuno, Yoshinori Kobayashi
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Abstract

PerFication is a person identification technique that uses a 2D LiDAR sensor in a customized dataset KoLaSu (Kobayashi Laboratory of Saitama University). Video-based recognition systems are highly effective and are now at the forefront of research. However, it experiences bottlenecks. New inventions can cause embarrassing situations, settings, and momentum. To address the limitations of technology, one must introduce a new technology to enhance it. Using biometric characteristics are highly reliable and valuable methods for identifying individuals. Most approaches depend on close interactions with the subject. A gait is the walking pattern of an individual. Most research on identifying individuals based on their walking patterns is conducted using RGB or RGB-D cameras. Only a limited number of studies utilized LiDAR data. Working with 2D LiDAR imagery for individual tracking and identification is excellent in situations where video monitoring is ineffective, owing to environmental challenges such as disasters, smoke, occlusion, and economic constraints. This study presented an extensive analysis of 2D LiDAR data using a meticulously created dataset and a modified residual neural network. In this paper, an alternative method of person identification is proposed that circumvents the limitations of video cameras in terms of capturing difficulties. An individual is precisely identified by the system through the utilization of ankle-level 2D LiDAR data. Our LiDAR-based detection system offers a unique method for person identification in modern surveillance systems, with a painstaking dataset, remarkable results, and a break from traditional camera setups. We focused on demonstrating the cost-effectiveness and durability of LiDAR sensors by utilizing 2D sensors in our research.
PerFication:利用二维激光雷达数据评估步态的人员识别技术
PerFication 是一种使用二维激光雷达传感器在定制数据集 KoLaSu(琦玉大学小林实验室)中进行人物识别的技术。基于视频的识别系统非常有效,目前正处于研究的前沿。然而,它也遇到了瓶颈。新发明可能会造成尴尬的局面、设置和势头。要解决技术的局限性,就必须引入新技术来提升技术。利用生物识别特征是非常可靠和有价值的识别个人身份的方法。大多数方法都依赖于与主体的密切互动。步态是一个人的行走模式。根据步行模式识别个人的大多数研究都是使用 RGB 或 RGB-D 摄像机进行的。只有少数研究使用了激光雷达数据。在由于灾害、烟雾、遮挡和经济限制等环境挑战而无法有效进行视频监控的情况下,利用二维激光雷达图像进行个体跟踪和识别是非常好的方法。这项研究利用精心创建的数据集和改进的残差神经网络对二维激光雷达数据进行了广泛分析。本文提出了一种另类的人员识别方法,它规避了摄像机在捕捉难度方面的局限性。该系统通过利用脚踝级二维激光雷达数据来精确识别个人。我们基于激光雷达的检测系统为现代监控系统中的人员识别提供了一种独特的方法,其数据集艰苦、效果显著,并打破了传统的摄像机设置。我们在研究中利用二维传感器,重点展示了激光雷达传感器的成本效益和耐用性。
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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