论文标题
计算机鼠标移动的急性应力预测的线性预测编码
Linear Predictive Coding for Acute Stress Prediction from Computer Mouse Movements
论文作者
论文摘要
先前的工作证明了使用线性预测编码(LPC)过滤器近似于肌肉刚度并从计算机鼠标移动中抑制肌肉的潜力,以预测用户的急性应力水平。从理论上讲,可以使用质量弹力抑制剂(MSD)生物力学模型来估计手臂中的肌肉刚度和阻尼。但是,尚未与理论MSD模型的阻尼频率(即刚度)和阻尼比值相比。这项工作表明,LPC的阻尼频率和阻尼比与MSD模型的阻尼率显着相关,从而证实了使用LPC推断肌肉刚度和阻尼的有效性。我们还使用来自LPC和MSD的值以及基于神经网络的基线的值比较了应力水平二进制分类性能。我们在所有条件下都发现了可比的性能,这些性能表明LPC和基于MSD模型的应力预测功效,尤其是对于更长的小鼠轨迹。临床相关性:这项工作证明了LPC滤波器对近似肌肉刚度和阻尼并预测计算机小鼠运动的急性应力的有效性。
Prior work demonstrated the potential of using the Linear Predictive Coding (LPC) filter to approximate muscle stiffness and damping from computer mouse movements to predict acute stress levels of users. Theoretically, muscle stiffness and damping in the arm can be estimated using a mass-spring-damper (MSD) biomechanical model. However, the damping frequency (i.e., stiffness) and damping ratio values derived using LPC were not yet compared with those from a theoretical MSD model. This work demonstrates that the damping frequency and damping ratio from LPC are significantly correlated with those from an MSD model, thus confirming the validity of using LPC to infer muscle stiffness and damping. We also compare the stress level binary classification performance using the values from LPC and MSD with each other and with neural network-based baselines. We found comparable performance across all conditions demonstrating LPC and MSD model-based stress prediction efficacy, especially for longer mouse trajectories. Clinical relevance: This work demonstrates the validity of the LPC filter to approximate muscle stiffness and damping and predict acute stress from computer mouse movements.