Department of Computer Languages and Computer Science, University of Málaga Bulevar Louis Pasteur, 35, 29071, Málaga, Spain.
Biomedical Research Institute of Málaga (IBIMA), C/ Doctor Miguel Díaz Recio, 28, 29010, Málaga, Spain.
Int J Neural Syst. 2023 Nov;33(11):2350058. doi: 10.1142/S0129065723500582. Epub 2023 Sep 30.
Human activity recognition is an application of machine learning with the aim of identifying activities from the gathered activity raw data acquired by different sensors. In medicine, human gait is commonly analyzed by doctors to detect abnormalities and determine possible treatments for the patient. Monitoring the patient's activity is paramount in evaluating the treatment's evolution. This type of classification is still not enough precise, which may lead to unfavorable reactions and responses. A novel methodology that reduces the complexity of extracting features from multimodal sensors is proposed to improve human activity classification based on accelerometer data. A sliding window technique is used to demarcate the first dominant spectral amplitude, decreasing dimensionality and improving feature extraction. In this work, we compared several state-of-art machine learning classifiers evaluated on the HuGaDB dataset and validated on our dataset. Several configurations to reduce features and training time were analyzed using multimodal sensors: all-axis spectrum, single-axis spectrum, and sensor reduction.
人体活动识别是机器学习的一个应用,旨在从不同传感器采集的活动原始数据中识别活动。在医学领域,医生通常会分析人体步态,以检测异常情况,并为患者确定可能的治疗方法。监测患者的活动对于评估治疗效果至关重要。这种分类方法仍然不够精确,可能会导致不良反应和反应。为了提高基于加速度计数据的人体活动分类的准确性,提出了一种新的方法,该方法可以降低从多模态传感器中提取特征的复杂性。使用滑动窗口技术来标记第一个主要谱幅度,从而降低维度并改善特征提取。在这项工作中,我们比较了几种基于 HuGaDB 数据集的最先进的机器学习分类器,并在我们的数据集上进行了验证。使用多模态传感器分析了几种减少特征和训练时间的配置:全轴频谱、单轴频谱和传感器减少。