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Human Activities and Postures Recognition: From Inertial Measurements to Quaternion-Based Approaches

机译:人类活动和姿势识别:从惯性测量到基于四元数的方法

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摘要

This paper presents two approaches to assess the effect of the number of inertial sensors and their location placements on recognition of human postures and activities. Inertial and Magnetic Measurement Units (IMMUs)—which consist of a triad of three-axis accelerometer, three-axis gyroscope, and three-axis magnetometer sensors—are used in this work. Five IMMUs are initially used and attached to different body segments. Placements of up to three IMMUs are then considered: back, left foot, and left thigh. The subspace k-nearest neighbors (KNN) classifier is used to achieve the supervised learning process and the recognition task. In a first approach, we feed raw data from three-axis accelerometer and three-axis gyroscope into the classifier without any filtering or pre-processing, unlike what is usually reported in the state-of-the-art where statistical features were computed instead. Results show the efficiency of this method for the recognition of the studied activities and postures. With the proposed algorithm, more than 80% of the activities and postures are correctly classified using one IMMU, placed on the lower back, left thigh, or left foot location, and more than 90% when combining all three placements. In a second approach, we extract attitude, in term of quaternion, from IMMUs in order to more precisely achieve the recognition process. The obtained accuracy results are compared to those obtained when only raw data is exploited. Results show that the use of attitude significantly improves the performance of the classifier, especially for certain specific activities. In that case, it was further shown that using a smaller number of features, with quaternion, in the recognition process leads to a lower computation time and better accuracy.
机译:本文提出了两种方法来评估惯性传感器的数量及其位置对人类姿势和活动的识别的影响。这项工作使用了由三轴加速度计,三轴陀螺仪和三轴磁力计传感器组成的惯性和磁测量单元(IMMU)。最初使用五个IMMU,并将它们连接到不同的身体部位。然后考虑最多放置三个IMMU:背部,左脚和左大腿。子空间k最近邻(KNN)分类器用于实现监督学习过程和识别任务。在第一种方法中,我们将来自三轴加速度计和三轴陀螺仪的原始数据输入到分类器中,而无需进行任何滤波或预处理,这与通常在计算统计特征的最新技术中通常报告的结果不同。结果表明,该方法可有效识别所研究的活动和姿势。使用所提出的算法,使用一个IMMU可以正确分类80%以上的活动和姿势,并将其放置在下背部,左大腿或左脚的位置,而将所有三个位置组合在一起时可以超过90%。在第二种方法中,我们从四元组中提取以四元数表示的态度,以便更精确地实现识别过程。将获得的准确性结果与仅利用原始数据时获得的准确性结果进行比较。结果表明,使用态度显着提高了分类器的性能,尤其是对于某些特定活动。在那种情况下,进一步表明,在识别过程中使用较少数量的具有四元数的特征可以缩短计算时间并提高准确性。

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