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A Differential Evolution Approach to Optimize Weights of Dynamic Time Warping for Multi-Sensor Based Gesture Recognition

机译:基于多传感器的手势识别中动态时间规整权重优化的差分进化方法

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摘要

In this research, we present a differential evolution approach to optimize the weights of dynamic time warping for multi-sensory based gesture recognition. Mainly, we aimed to develop a robust gesture recognition method that can be used in various environments. Both a wearable inertial sensor and a depth camera (Kinect Sensor) were used as heterogeneous sensors to verify and collect the data. The proposed approach was used for the calculation of optimal weight values and different characteristic features of heterogeneous sensor data, while having different effects during gesture recognition. In this research, we studied 27 different actions to analyze the data. As finding the optimal value of the data from numerous sensors became more complex, a differential evolution approach was used during the fusion and optimization of the data. To verify the performance accuracy of the presented method in this study, a University of Texas at Dallas Multimodal Human Action Datasets (UTD-MHAD) from previous research was used. However, the average recognition rates presented by previous research using respective methods were still low, due to the complexity in the calculation of the optimal values of the acquired data from sensors, as well as the installation environment. Our contribution was based on a method that enabled us to adjust the number of depth cameras and combine this data with inertial sensors (multi-sensors in this study). We applied a differential evolution approach to calculate the optimal values of the added weights. The proposed method achieved an accuracy 10% higher than the previous research results using the same database, indicating a much improved accuracy rate of motion recognition.
机译:在这项研究中,我们提出了一种差分进化方法来优化基于多传感器手势识别的动态时间规整的权重。主要是,我们旨在开发一种可在各种环境中使用的可靠的手势识别方法。穿戴式惯性传感器和深度相机(Kinect传感器)均用作异类传感器,以验证和收集数据。所提出的方法用于计算最佳权重值和异构传感器数据的不同特征,同时在手势识别过程中具有不同的效果。在这项研究中,我们研究了27种不同的动作来分析数据。随着从众多传感器中找到数据的最佳值变得越来越复杂,在数据的融合和优化过程中使用了差分演化方法。为了验证本研究中提出的方法的性能准确性,使用了得克萨斯大学达拉斯分校的多模态人类行为数据集(UTD-MHAD)。然而,由于计算从传感器获取的数据的最佳值以及安装环境的复杂性,以前的研究使用相应方法提出的平均识别率仍然很低。我们的贡献基于一种方法,该方法使我们能够调整深度相机的数量,并将此数据与惯性传感器(本研究中为多传感器)结合起来。我们应用了差分演化方法来计算增加权重的最佳值。与使用相同数据库的以前的研究结果相比,该方法的准确性提高了10%,这表明运动识别的准确性大大提高。

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