Investigating Optimal Smartphone Placement for Identifying Stairs Movement using Machine Learning

MRA Shourov, M. A. B. Husman, Siti Fauziah Toha, Farahiyah Jasni
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Abstract

The identification of gait activities such as stair ascending and descending poses a significant challenge due to the proximity of data provided by the sensory pathway. Accurate identification of gait activities is crucial in conveying essential gait information to users for the recognition of human movement activities. However, gait patterns can vary significantly between individuals, making it challenging to develop a generalized algorithm for identifying incline surface gait activity. Factors such as walking speed, stride length, and body mechanics can all influence gait patterns, making it difficult to establish a consistent framework. Despite various research on gait event detection for level ground walking, the identification of gait activities on an inclined surface such as stairs, especially using smartphones as sensors, is currently lacking. The goal of this study is to investigate and develop a reliable and accurate method for detecting gait activities on an inclined surface such as stairs using smartphones as the sensing device. Specifically, this study focuses on investigating optimal placement of smartphones to extract tri- axis accelerometer data from the inertial sensors during stair movement. The inertial sensor data was collected from the smartphone at two different positions and two different orientations. The data was trained against 6 machine learning algorithms namely Decision Tree, Logistic Regression, Naive Bayes, Random Forest, Neural Networks and KNN. It was observed that, by using Decision Tree and Random Forest algorithm 100% accuracy was achieved, when smartphone was placed at the thigh during stair movement. Successful identification of stair movement activity by using a smartphone can significantly contribute to future research and could also prove useful to the wider community such as amputees and those with pathological gait. In addition, since smartphones are available to a wide group of people, a low-cost solution for gait activity identification can be realized, without requiring the use of external sensors and circuitry.
研究使用机器学习识别楼梯运动的最佳智能手机放置位置
由于感觉通路提供的数据接近,步态活动的识别(如上下楼梯)提出了重大挑战。步态活动的准确识别对于向用户传递必要的步态信息以识别人体运动活动至关重要。然而,步态模式在个体之间可能存在显着差异,因此开发一种用于识别斜面步态活动的通用算法具有挑战性。诸如步行速度、步幅和身体力学等因素都会影响步态模式,因此很难建立一致的框架。尽管对平地行走的步态事件检测进行了各种研究,但目前还缺乏对楼梯等倾斜表面上的步态活动的识别,特别是使用智能手机作为传感器的识别。本研究的目标是研究和开发一种可靠而准确的方法,用于使用智能手机作为传感设备检测楼梯等倾斜表面上的步态活动。具体来说,本研究的重点是研究智能手机在楼梯运动过程中从惯性传感器中提取三轴加速度计数据的最佳位置。惯性传感器数据从智能手机在两个不同的位置和两个不同的方向收集。使用决策树、逻辑回归、朴素贝叶斯、随机森林、神经网络和KNN等6种机器学习算法对数据进行训练。我们观察到,当智能手机在楼梯运动中放置在大腿上时,使用决策树和随机森林算法可以达到100%的准确率。通过使用智能手机成功识别楼梯运动活动可以为未来的研究做出重大贡献,也可以证明对更广泛的社区有用,如截肢者和那些有病理步态的人。此外,由于智能手机适用于广泛的人群,因此可以实现步态活动识别的低成本解决方案,而无需使用外部传感器和电路。
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