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Analysis of Sensor Locations on Human Body for Wearable Sensor based Activity Classification during Fast Bowling in Cricket

机译:基于可穿戴传感器的人体传感器位置分析了蟋蟀快速保龄球术中的可穿戴传感器的活性分类

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This paper focuses on determining best body sensor position among calf, thigh, upper trunk and forearm when classifying Run Up, Delivery Stride and Follow Through phases during fast bowling in cricket by the usage of a machine learning model. Nine-axis Inertial Measurement Units (IMU) were used to collect data at 350Hz and Madgwick's quaternion based algorithm was used for orientation estimation. The study also focused on determining best quaternion to be considered for such activity classification requirements in fast bowling. Three fast bowlers with Mixed type bowling action were considered for the study. A sliding window with 200 samples/window with 50% overlap collected eight, time domain statistical features from the sensor data and Principal Component Analysis was used to reduce dimensionality of the feature set. A linear kernel based Support Vector Machine classified the features into the three main phases and five-fold cross validation was used to determine model performance. The results indicate that fourth quaternion on calf or forearm is the best quaternion and body position to be considered for activity classification of fast bowling action in cricket.
机译:本文侧重于在通过使用机器学习模型进行分类时测定小牛,大腿,上部躯干和前臂之间的最佳机身传感器位置,然后通过在板球快速保龄球期间通过阶段进行阶段。九轴惯性测量单元(IMU)用于在350Hz和Madgwick的基于算法处收集数据,用于取向估计。该研究还集中于在快节保龄球中确定最佳四元数。考虑了三个具有混合型保龄球作用的快速投放者进行了研究。带有200个样本/窗口的滑动窗口,收集了50%的重叠八个,时间域统计特征来自传感器数据和主成分分析,用于减少特征集的维度。基于线性内核的支持向量机将特征分类为三个主要阶段,使用五倍交叉验证来确定模型性能。结果表明,小腿或前臂上的第四十二季度是用于在板球快速保龄球作用的活动分类的最佳四元数和身体位置。

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