Machine learning and uLBP histograms for posture recognition of dependent people via Big Data Hadoop and Spark platform

F. Alfayez, H. Bouhamed
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引用次数: 1

Abstract

For dependent population, falls accident are a serious health issue, particularly in a situation of pandemic saturation of health structures. It is, therefore, highly desirable to quarantine patients at home, in order to avoid the spread of contagious diseases. A dedicated surveillance system at home may become an urgent need in order to improve the patients’ living autonomy and significantly reduce assistance costs while preserving their privacy and intimacy. The domestic fall accident is regarded as an abrupt pose transition. Accordingly, normal human postures have to be recognized first. To this end, we proposed a novel big data scalable method for posture recognition using uniform local binary pattern (uLBP) histograms for pattern extraction. Instead of saving the pixels of the entire image, only the patterns were kept for the identification of human postures. By doing so, we tried to preserve people’s intimacy, which is very important in ehealth. To our knowledge, our work is the first to use this approach in a big data platform context for fall event detection while using Random Forest instead of complex deep learning methods. Application results of our conduct are very interesting in comparison to complex architectures such as convolutional deep neural networks (CNN) and feedforward deep neural networks (DFFNN).
基于大数据Hadoop和Spark平台的机器学习和uLBP直方图对依赖者的姿势识别
对于依赖人口来说,跌倒事故是一个严重的健康问题,特别是在卫生机构大流行病饱和的情况下。因此,为了避免传染病的传播,最好将患者隔离在家中。为了提高患者的生活自主权,在保护他们的隐私和亲密关系的同时显著降低援助成本,家庭专用监控系统可能成为迫切需要。国内的跌倒事故被认为是一个突发性的姿势转变。因此,必须首先识别正常的人体姿势。为此,我们提出了一种基于统一局部二值模式(uLBP)直方图的姿态识别新方法。而不是保存整个图像的像素,只有模式被保留用于识别人类的姿势。通过这样做,我们试图保持人们的亲密关系,这在电子健康中非常重要。据我们所知,我们的工作是第一个在大数据平台环境中使用这种方法进行跌倒事件检测,同时使用随机森林而不是复杂的深度学习方法。与卷积深度神经网络(CNN)和前馈深度神经网络(DFFNN)等复杂架构相比,我们的行为的应用结果非常有趣。
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