Human activity recognition (HAR) using IMU sensors, namely accelerometer and gyroscope, has several applications in smart homes, healthcare and human-machine interface systems. In practice, the IMU-based HAR system is expected to encounter variations in measurement due to sensor degradation, alien environment or sensor noise and will be subjected to unknown activities. In view of practical deployment of the solution, analysis of statistical confidence over the activity class score are important metrics. In this paper, we therefore propose XAI-BayesHAR, an integrated Bayesian framework, that improves the overall activity classification accuracy of IMU-based HAR solutions by recursively tracking the feature embedding vector and its associated uncertainty via Kalman filter. Additionally, XAI-BayesHAR acts as an out of data distribution (OOD) detector using the predictive uncertainty which help to evaluate and detect alien input data distribution. Furthermore, Shapley value-based performance of the proposed framework is also evaluated to understand the importance of the feature embedding vector and accordingly used for model compression
翻译:利用IMU传感器,即加速计和陀螺仪,人类活动识别(HAR)使用IMU传感器,即加速计和陀螺仪,在智能家庭、保健和人体-机械界面系统中有若干应用,实际上,IMU的HAR系统预计将由于传感器退化、外环境或感应噪音而在测量上出现差异,并将受到未知活动的影响。鉴于解决办法的实际部署,对活动等级分统计信任度的分析是重要的衡量尺度。因此,我们在本文件中提议,一个综合性贝叶西亚框架,即XAI-BayesHAR(一个一体化的贝耶斯堡框架),通过对嵌入的特性矢量及其相关的不确定性进行同步跟踪,提高IMUHAR解决方案的总体活动分类准确性。此外,XAI-Bayshar(Bayeshar)作为数据分布的外源(OOOD)探测器,使用预测不确定性,帮助评估和检测外来输入数据分布。此外,还评估拟议框架的基于价值的性表现,以了解嵌入矢量的重要性,并据此用于模型压缩。