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Human Activity Recognition: From Controlled Lab Experiments to Competitive Live Evaluation

机译:人体活动识别:从受控实验室实验到竞争性现场评估

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Human activity recognition is a basic building block in numerous healthcare systems, mainly because the ability to understand the user's situation and context. This paper presents a solution to the general problem with evaluation of human activity recognition systems, i.e., an activity recognition system may perform perfectly in controlled lab experiments, but significantly worse once applied to more realistic conditions. The solution is presented through the practical experience gained with the creation of our RAReFall activity recognition system. Although the system was awarded the first place at the EvAAL-AR live competition, the recognition accuracy at the competition was significantly lower compared to the controlled lab experiments performed just before the competition. To overcome the encountered problem we developed an automatic calibration method, which solves the encountered problem by adapting and re-calibrating the accelerometer data in real-time while the user is performing everyday activities. The method increased the overall accuracy for 8 percentage points and for 51 percentage points for the sitting activity.
机译:人体活动识别是许多医疗保健系统中的基本构建块,主要是因为了解用户情况和上下文的能力。本文提出了一种通过评估人类活动识别系统来解决一般问题的解决方案,即活动识别系统在受控实验室实验中可能表现完美,但一旦应用于更现实的条件,则性能会大大降低。通过创建RAReFall活动识别系统获得的实践经验来介绍该解决方案。尽管该系统在EvAAL-AR现场比赛中获得了第一名,但与比赛前进行的受控实验室实验相比,比赛中的识别准确度要低得多。为了克服所遇到的问题,我们开发了一种自动校准方法,该方法通过在用户执行日常活动时实时调整和重新校准加速度计数据来解决所遇到的问题。该方法将坐姿活动的整体准确度提高了8个百分点,提高了51个百分点。

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