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Adaptive compressed sensing for acceleration data transmission in human motion capture

机译:自适应压缩感测用于人体运动捕捉中的加速度数据传输

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In a human motion capture system, massive acceleration data will cost much transmission time. In order to reduce the acceleration data transmission volume while guaranteeing measurement accuracy, this paper presents an adaptive compressed sensing algorithm for acceleration data transmission in human motion capture. An innovative feature of our approach is to associate the sparsity and best Compression Ratio of acceleration data in a learning phase. Based on this correlation, the sensor node uses sparsity to describe the structural characteristics of acceleration data, and it adjusts best Compression Ratios of data according to the characteristics of the real-time acceleration data. The results of experiment show that algorithm can adjust the best Compression Ratios of original acceleration data at different parts of body in several typical motions, while ensuring Reconstruction Accuracy. For example, in running, the approach can achieve that the Compression Ratios at arms and legs separately reach to approximately 80% and 60%, while the compression data can achieve the same Reconstruction Accuracy. What's more, the algorithm can increase the Compression Ratio of capture system by about 20% compared with the current BSBL-BO algorithm, while achieving the same minimum Reconstruction Accuracy of capture system.
机译:在人体运动捕捉系统中,大量的加速度数据将花费大量的传输时间。为了在保证测量精度的同时减少加速度数据的传输量,提出了一种自适应压缩感知算法,用于人体运动捕捉中的加速度数据传输。我们方法的一个创新功能是在学习阶段将加速度数据的稀疏性和最佳压缩率相关联。基于此相关性,传感器节点使用稀疏性描述加速度数据的结构特征,并根据实时加速度数据的特征调整最佳数据压缩率。实验结果表明,该算法可以在几个典型运动中调节人体不同部位原始加速度数据的最佳压缩率,同时又能保证重建的准确性。例如,在跑步中,该方法可以实现手臂和腿部的压缩率分别达到大约80%和60%,而压缩数据可以达到相同的重建精度。而且,与当前的BSBL-BO算法相比,该算法可以将捕获系统的压缩率提高约20%,同时实现与捕获系统相同的最低重建精度。

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