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User independent, multi-modal spotting of subtle arm actions with minimal training data

机译:用户独立,多模式地发现微不足道的手臂动作,只需最少的训练数据

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摘要

We address a specific, particularly difficult class of activity recognition problems defined by (1) subtle, and hardly discriminative hand motions such as a short press or pull, (2) large, ill defined NULL class (any other hand motion a person may express during normal life), and (3) difficulty of collecting sufficient training data, that generalizes well from one to multiple users. In essence we intend to spot activities such as opening a cupboard, pressing a button, or taking an object from a shelve in a large data stream that contains typical every day activity. We focus on body-worn sensors without instrumenting objects, we exploit available infrastructure information, and we perform a one-to-many-users training scheme for minimal training effort. We demonstrate that a state of the art motion sensors based approach performs poorly under such conditions (Equal Error Rate of 18% in our experiments). We present and evaluate a new multi modal system based on a combination of indoor location with a wrist mounted proximity sensor, camera and inertial sensor that raises the EER to 79%.
机译:我们解决由(1)细微且几乎没有区别的手势(例如短按或拉动),(2)定义不正确的NULL大类(人可能表达的任何其他手势)定义的特定的,特别困难的活动识别问题在正常生活中),以及(3)难以收集足够的培训数据,这可以很好地概括一个用户到多个用户的情况。从本质上讲,我们打算发现活动,例如打开橱柜,按下按钮或从包含常规日常活动的大型数据流中搁置的对象。我们专注于不带检测对象的穿戴式传感器,我们利用可用的基础设施信息,并执行一对多用户的培训计划,以减少培训工作量。我们证明,在这种情况下(基于我们实验的18%的均等错误率),基于运动传感器的先进方法效果不佳。我们介绍并评估了一种新的多模式系统,该系统基于室内位置与腕上安装的接近传感器,摄像头和惯性传感器的组合,可将EER提升至79%。

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