首页> 外文期刊>IEEE Transactions on Circuits and Systems for Video Technology >Quantifying and recognizing human movement patterns from monocular video images-part II: applications to biometrics
【24h】

Quantifying and recognizing human movement patterns from monocular video images-part II: applications to biometrics

机译:量化和识别单眼视频图像的人体运动模式 - 第二部分:生物识别技术的应用

获取原文
获取原文并翻译 | 示例
           

摘要

Biometric authentication of gait, anthropometric data, human activities, and movement disorders are presented in this paper using the continuous human movement recognition (CHMR) framework introduced in Part I. A novel biometric authentication of anthropometric data is presented based on the realization that no one is average-sized in as many as ten dimensions. These body part dimensions are quantified using the CHMR body model. Gait signatures are then evaluated using motion vectors, temporally segmented by gait dynemes, and projected into a gait space for an eigengait-based biometric authentication. Left-right asymmetry of gait is also evaluated using robust CHMR left-right labeling of gait strides. Accuracy of the gait signature is further enhanced by incorporating the knee-hip angle-angle relationship popular in biomechanics gait research, together with other gait parameters. These gait and anthropometric biometrics are fused to further improve accuracy. The next biometric identifies human activities which require a robust segmentation of the many skills encompassed. For this reason, the CHMR activity model is used to identify various activities from making coffee to using a computer. Finally, human movement disorders were evaluated by studying patients with dopa-responsive Parkinsonism and age-matched normals who were videotaped during several gait cycles to determine a robust metric for classifying movement disorders. The results suggest that the CHMR system enabled successful biometric authentication of anthropometric data, gait signatures, human activities, and movement disorders.
机译:本文使用第I部分中引入的连续人体运动识别(CHMR)框架在本文中介绍了步态,人体测量数据,人类活动和运动障碍的生物识别认证。基于没有人的实现,提出了一种新的人类测量数据的新型生物识别认证平均大小多达十个维度。使用CHMR主体模型量化这些体部件尺寸。然后使用步态Dynemes暂时分割的运动矢量来评估步态签名,并投影到基于EIGENGIEAT的生物认证的步态空间。使用鲁棒ChMR左右标记进行评估步态的左右不对称性。通过纳入生物力学步态研究中流行的膝关节角度关系,进一步增强了步态签名的准确性,以及其他步态参数。这些步态和人体测量生物识别性融合以进一步提高精度。下一个生物识别识别人类活动,这些活动需要稳健的细分所包含的许多技能。因此,CHMR活动模型用于识别从咖啡使用计算机的各种活动。最后,通过研究在几个步态周期中进行录像的DOPA响应帕金森主义和年龄匹配的法线来评估人体运动障碍,以确定对分类运动障碍的强大指标。结果表明,CHMR系统使能力成功的人类数据,步态签名,人类活动和运动障碍的生物识别认证。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号