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An Online Adaptive Sampling Rate Learning Framework for Sensor-Based Human Activity Recognition

机译:基于传感器的人类活动识别的在线自适应采样率学习框架

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In the field of sensor based human activity recognition, fixed sampling rate scheme is difficult to accommodate the dynamic characteristics of streaming data. It may directly leads to high energy consumption or activities detail missing problems. In this paper, an efficiency online activity recognition framework is proposed by integrating sampling rate optimization with novel class detection and recurring class detection algorithms. Based on the proposed framework, we believe that this system can effectively save battery life and computation capacity without decreasing the overall recognition performance.
机译:在基于传感器的人类活动识别领域,固定采样率方案难以适应流数据的动态特性。它可能直接导致高能耗或活动细节缺失的问题。本文通过将采样率优化与新颖的类检测和递归类检测算法相结合,提出了一种高效的在线活动识别框架。基于提出的框架,我们认为该系统可以有效地节省电池寿命和计算能力,而不会降低整体识别性能。

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