Optimal Image Characterization for In-Bed Posture Classification by Using SVM Algorithm

C. A. Rivera-Romero, J. U. Munoz-Minjares, Carlos Lastre-Dominguez, M. Lopez-Ramirez
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Abstract

Identifying patient posture while they are lying in bed is an important task in medical applications such as monitoring a patient after a surgical intervention, sleep supervision to identify behavioral and physiological markers, or for bedsore prevention. An acceptable strategy to identify the patient’s position is the classification of images created from a grid of pressure sensors located in the bed. These samples can be arranged based on supervised learning methods. Usually, image conditioning is required before images are loaded into a learning method to increase classification accuracy. However, continuous monitoring of a person requires large amounts of time and computational resources if complex pre-processing algorithms are used. So, the problem is to classify the image posture of patients with different weights, heights, and positions by using minimal sample conditioning for a specific supervised learning method. In this work, it is proposed to identify the patient posture from pressure sensor images by using well-known and simple conditioning techniques and selecting the optimal texture descriptors for the Support Vector Machine (SVM) method. This is in order to obtain the best classification and to avoid image over-processing in the conditioning stage for the SVM. The experimental stages are performed with the color models Red, Green, and Blue (RGB) and Hue, Saturation, and Value (HSV). The results show an increase in accuracy from 86.9% to 92.9% and in kappa value from 0.825 to 0.904 using image conditioning with histogram equalization and a median filter, respectively.
利用 SVM 算法进行躺姿分类的最佳图像特征描述
在医疗应用中,识别病人躺在床上时的姿势是一项重要任务,例如监控手术后的病人、睡眠监测以识别行为和生理标记或预防褥疮。一种可接受的识别病人体位的策略是对床上压力传感器网格产生的图像进行分类。这些样本可根据监督学习方法进行排列。通常情况下,在将图像载入学习方法之前需要对图像进行调节,以提高分类的准确性。但是,如果使用复杂的预处理算法,对人的连续监测需要大量的时间和计算资源。因此,问题的关键在于如何通过最小化的样本调节,为特定的监督学习方法对不同体重、身高和体位的患者的图像姿势进行分类。在这项工作中,建议使用众所周知的简单调节技术,并为支持向量机(SVM)方法选择最佳纹理描述符,从而从压力传感器图像中识别病人的姿势。这是为了获得最佳分类,并避免在 SVM 的调节阶段对图像进行过度处理。实验阶段使用红、绿、蓝(RGB)和色调、饱和度、值(HSV)色彩模型。结果显示,使用直方图均衡化和中值滤波器调节图像,准确率从 86.9% 提高到 92.9%,卡帕值从 0.825 提高到 0.904。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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