The past decade has seen an increased interest in human activity recognition based on sensor data. Most often, the sensor data come unannotated, creating the need for fast labelling methods. For assessing the quality of the labelling, an appropriate performance measure has to be chosen. Our main contribution is a novel post-processing method for activity recognition. It improves the accuracy of the classification methods by correcting for unrealistic short activities in the estimate. We also propose a new performance measure, the Locally Time-Shifted Measure (LTS measure), which addresses uncertainty in the times of state changes. The effectiveness of the post-processing method is evaluated, using the novel LTS measure, on the basis of a simulated dataset and a real application on sensor data from football. The simulation study is also used to discuss the choice of the parameters of the post-processing method and the LTS measure.
翻译:在过去的十年中,人们越来越关注基于感官数据的人类活动认识,大多数情况下,传感器数据没有附加说明,从而产生了快速标签方法的需要。为了评估标签的质量,必须选择适当的业绩计量。我们的主要贡献是活动识别的新型后处理方法;通过纠正估计数中不切实际的短期活动,提高分类方法的准确性。我们还提出了一个新的性能衡量标准,即当地时间调整措施(LTS措施),它解决了国家变化时期的不确定性。后处理方法的有效性,利用新型LTS措施,在模拟数据集和足球传感器数据实际应用的基础上进行评估。模拟研究还用来讨论后处理方法参数的选择和LTS措施。