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Gait Analysis Using Shadow Motion

机译:使用阴影运动进行步态分析

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摘要

Gait is considered as one of the biometric traits that does not require physical interaction with machines and can be performed at a distance from the computing device. However, majority of the gait recognition systems require the subjects to be monitored in constrained environment within the viewing field of the capturing device. Such systems may fail to recognize a few of the features when the interaction environment is changed or when the body occlusion occurs due to position variations, clothing or belongings. Moreover, the walking style of a user may vary when engaged in different activities such as listening to music, playing games, fast walking, etc. In this paper, we propose a new approach of human gait recognition using Shadow motion sensor, a full body sensor unit. The framework is able to identify users robustly despite changes in their appearances. The device uses a combination of accelerometer, gyroscope and magnetometer sensors for collecting gait features. The identification process is performed using a Random Forest based classification scheme by varying number of trees. A set of users comprising with 23 males and females have participated in the data collection and they have performed four different types of walks including, normal-walk, fastwalk, walking while listening to music and walking while watching video on mobile. An average accuracy of 87.68% has been recorded in all walk scenarios. Results reveal that the proposed study can be used as a stepping stone to design robust gait biometric systems with the help of contact less sensors.
机译:步态被认为是不需要与机器进行物理交互的生物特征之一,可以在距计算设备一定距离的地方进行。然而,大多数步态识别系统要求在捕获设备的视场内的受限环境中对对象进行监视。当交互环境改变或由于位置变化,衣服或所有物而发生身体闭塞时,此类系统可能无法识别一些功能。此外,用户在进行不同的活动(例如听音乐,玩游戏,快步走等)时,其走动风格可能会有所不同。在本文中,我们提出了一种使用阴影运动传感器(一种全身)进行人体步态识别的新方法传感器单元。尽管外观有所变化,该框架仍能够可靠地识别用户。该设备结合使用了加速度计,陀螺仪和磁力计传感器来收集步态特征。使用基于随机森林的分类方案,通过改变树的数量来执行识别过程。一组由23名男性和女性组成的用户参加了数据收集,他们执行了四种不同类型的步行,包括正常步行,快步步行,边听音乐边走路和边看手机视频边走路。在所有步行场景中,均记录为87.68%的平均准确度。结果表明,所提出的研究可以作为垫脚石,借助非接触式传感器设计健壮的步态生物识别系统。

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