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Accelerometer Dense Trajectories for Activity Recognition and People Identification

机译:用于活动识别和人员识别的加速度计密集轨迹

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This paper addresses the problem of activity recognition and people identification using accelerometer signals acquired by personal devices. Specifically, we propose a framework based on a Deep Neural Network that employs an efficient dense trajectory encoding to compute features. These Accelerometer Dense Trajectory (ADT) features, which are similar to those used for action recognition in the spatio-temporal domain of video data, densely map the accelerometer signals into three-dimensional normalised positions. To deal with the unordered nature and dimensional variation of trajectories associated with the classes, the proposed framework employs Fisher Vectors as a high order representation of the extracted features. We evaluate the proposed ADT features and framework on the Sphere2016 Challenge and WISDM datasets for activity recognition. For people identification, we employ the RecodGait dataset. For these two significantly different classification tasks, the performance evaluation results confirm the high descriptiveness of the proposed ADT features and the effectiveness of the proposed framework.
机译:本文解决了使用个人设备获取的加速度计信号进行活动识别和人员识别的问题。具体来说,我们提出了一个基于深度神经网络的框架,该框架采用有效的密集轨迹编码来计算特征。这些加速度计密集轨迹(ADT)功能类似于在视频数据的时空域中用于动作识别的功能,将加速度计信号密集地映射到三维标准化位置。为了处理与类相关的轨迹的无序性质和尺寸变化,建议的框架采用Fisher向量作为提取特征的高阶表示。我们在Sphere2016 Challenge和WISDM数据集上评估建议的ADT功能和框架,以进行活动识别。为了识别人员,我们使用RecodGait数据集。对于这两个明显不同的分类任务,性能评估结果证实了所提出的ADT功能的高度描述性以及所提出框架的有效性。

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