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Determining the optimal number of body-worn sensors for human activity recognition

机译:确定人类活动识别的最佳数量的身体磨损传感器

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摘要

Recent developments in sensors increased the importance of action recognition. Generally, the previous studies were based on the assumption that the complex actions can be recognized by more features. Therefore, generally more than required body-worn sensor types and sensor nodes were used by the researchers. On the other hand, this assumption leads many drawbacks, such as computational complexity, storage and communication requirements. The main aim of this paper is to investigate the applicability of recognizing the actions without degrading the accuracy with less number of sensors by using a more sophisticated feature extraction and classification method. Since, human activities are complex and include variable temporal information in nature, in this study one-dimensional local binary pattern, which is sensitive to local changes, and the grey relational analysis, which can successfully classify incomplete or insufficient datasets, were employed for feature extraction and classification purposes, respectively. Achieved mean classification accuracies by the proposed approach are 95.69, 98.88, and 99.08 % while utilizing all data, data obtained from a sensor node attached to left calf and data obtained from only 3D gyro sensors, respectively. Furthermore, the results of this study showed that the accuracy obtained by using only a 3D acceleration sensor attached in the left calf, 98.8 %, is higher than accuracy obtained by using all sensor nodes, 95.69 %, and reported accuracies in the previous studies that made use of the same dataset. This result highlighted that the position and type of sensors are much more important than the number of utilized sensors.
机译:传感器最近的发展增加了行动认可的重要性。通常,先前的研究基于假设可以通过更多特征识别复杂的动作。因此,研究人员通常使用超过所需的身体磨损的传感器类型和传感器节点。另一方面,这种假设引导了许多缺点,例如计算复杂性,存储和通信要求。本文的主要目的是调查通过使用更复杂的特征提取和分类方法,探讨认识到识别行动而不会降低少量传感器的准确性。由于,人类活动是复杂的并且包括自然界中的变量时间信息,在这项研究中,对局部变化敏感的一维局部二进制模式,以及可以成功分类不完整或不足的数据集的灰色关系分析分别提取和分类目的。通过所提出的方法实现平均分类精度是95.69,98.88和99.08%在利用所有数据的同时,从附加到左小牛的传感器节点和仅从3D陀螺传感器获得的数据获得的数据。此外,该研究的结果表明,通过仅使用左牛犊的3D加速度传感器获得的3D加速度传感器,98.8%,高于通过使用所有传感器节点,95.69%和先前研究中报告的准确性所获得的精度的准确性使用相同的数据集。该结果突出显示传感器的位置和类型比利用传感器的数量更重要。

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