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Recurrent Transformation of Prior Knowledge Based Model for Human Motion Recognition

机译:基于先验知识的人体运动识别模型的递归转换

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Motion related human activity recognition using wearable sensors can potentially enable various useful daily applications. So far, most studies view it as a stand-alone mathematical classification problem without considering the physical nature and temporal information of human motions. Consequently, they suffer from data dependencies and encounter the curse of dimension and the overfitting issue. Their models are hard to be intuitively understood. Given a specific motion set, if structured domain knowledge could be manually obtained, it could be used for better recognizing certain motions. In this study, we start from a deep analysis on natural physical properties and temporal recurrent transformation possibilities of human motions and then propose a useful Recurrent Transformation Prior Knowledge-based Decision Tree (RT-PKDT) model for recognition of specific human motions. RT-PKDT utilizes temporal information and hierarchical classification method, making the most of sensor streaming data and human knowledge to compensate the possible data inadequacy. The experiment results indicate that the proposed method performs superior to those adopted in related works, such as SVM, BP neural networks, and Bayesian Network, obtaining an accuracy of 96.68%.
机译:使用可穿戴传感器的与运动相关的人类活动识别可以潜在地实现各种有用的日常应用。到目前为止,大多数研究都将其视为独立的数学分类问题,而没有考虑人体运动的物理性质和时间信息。因此,它们遭受数据依赖性的困扰,并且遇到了尺寸诅咒和过拟合问题。他们的模型很难直观地理解。给定特定的运动集,如果可以手动获得结构化领域知识,则可以将其用于更好地识别某些运动。在这项研究中,我们从对人体运动的自然物理特性和时间递归变换可能性的深入分析开始,然后提出一个有用的基于递归变换先验知识的决策树(RT-PKDT)模型来识别特定的人体运动。 RT-PKDT利用时间信息和层次分类方法,充分利用传感器流数据和人类知识来补偿可能的数据不足。实验结果表明,该方法的性能优于SVM,BP神经网络和贝叶斯网络等相关研究方法,准确率达到96.68%。

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