Andò Bruno, Baglio Salvatore, Manenti Mattia, Finocchiaro Valeria, Marletta Vincenzo, Rajan Sreeraman, Nehary Ebrahim Ali, Dibilio Valeria, Zappia Mario, Mostile Giovanni
Department of Electrical, Electronic and Computer Engineering (DIEEI), University of Catania, 95123 Catania, Italy.
STMicroelectronics S.r.l., 95121 Catania, Italy.
Sensors (Basel). 2025 Jul 9;25(14):4262. doi: 10.3390/s25144262.
Postural instability is one of the main critical aspects to be monitored in the case of degenerative diseases, and is also a predictor of potential falls. This paper presents a multi-layer perceptron approach for the classification of four different classes of postural behaviors that is implemented by an embedded sensing architecture. The robustness of the methodology against noisy data and the effects of using different sets of classification features have been investigated. In the case of noisy input data, a reliability index of almost 100% has been obtained, with a negligible drop (less than 5%) being shown for the whole range of noise levels that was investigated. Such an achievement substantiates the better robustness of this approach with respect to threshold-based algorithms, which have been also considered for the sake of comparison.
姿势不稳是退行性疾病中需要监测的主要关键方面之一,也是潜在跌倒的一个预测指标。本文提出了一种用于对四种不同姿势行为类别进行分类的多层感知器方法,该方法由嵌入式传感架构实现。研究了该方法对噪声数据的鲁棒性以及使用不同分类特征集的效果。在存在噪声输入数据的情况下,获得了几乎100%的可靠性指标,在所研究的整个噪声水平范围内,下降幅度可忽略不计(小于5%)。这一成果证实了该方法相对于基于阈值的算法具有更好的鲁棒性,为了进行比较,也考虑了基于阈值的算法。