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Using mini minimum jerk model for human activity classification in home-based monitoring

机译:在基于家庭的监视中使用迷你最小混动模型进行人类活动分类

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This paper proposes a method for human activity classification in home based monitoring. The proposed approach is based on minimum jerk (MinJerk), a primary model for smooth path planning employed by human motor control in upper-extremity motion. Based on new evidences that show common control strategies in lower and upper extremity, MinJerk is adapted in our study to estimate the foot motion with fifth order polynomial functions. Experimental data are recorded during walking and going up and down the stairs using a single inertial measurement unit. Features of interest in this study are the optimized curve fitting coefficients. Using a structured support vector machine with radial basis function, an overall accuracy of 98.6% is achieved for activity classification. The proposed method is also capable of detecting the transitions between the movements with accuracy of 99.96%.
机译:本文提出了一种基于家庭监测的人类活动分类方法。所提出的方法基于最小加速度(MinJerk),它是上肢运动中人为运动控制所采用的平滑路径规划的主要模型。基于显示下肢和上肢常见控制策略的新证据,MinJerk在我们的研究中进行了调整,以利用五阶多项式函数来估计足部运动。使用单个惯性测量单元记录步行和上下楼梯期间的实验数据。该研究中感兴趣的特征是优化的曲线拟合系数。使用具有径向基函数的结构化支持向量机,活动分类的总体准确性达到98.6%。所提出的方法还能够以99.96%的精度检测运动之间的过渡。

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