Htun Swe Nwe Nwe, Zin Thi Thi, Tin Pyke
Interdisciplinary Graduate School of Agriculture and Engineering, University of Miyazaki, Miyazaki 889-2192, Japan.
Graduate School of Engineering, University of Miyazaki, Miyazaki 889-2192, Japan.
J Imaging. 2020 Jun 13;6(6):49. doi: 10.3390/jimaging6060049.
Advances in image processing technologies have provided more precise views in medical and health care management systems. Among many other topics, this paper focuses on several aspects of video-based monitoring systems for elderly people living independently. Major concerns are patients with chronic diseases and adults with a decline in physical fitness, as well as falling among elderly people, which is a source of life-threatening injuries and a leading cause of death. Therefore, in this paper, we propose a video-vision-based monitoring system using image processing technology and a Hidden Markov Model for differentiating falls from normal states for people. Specifically, the proposed system is composed of four modules: (1) object detection; (2) feature extraction; (3) analysis for differentiating normal states from falls; and (4) a decision-making process using a Hidden Markov Model for sequential states of abnormal and normal. In the object detection module, background and foreground segmentation is performed by applying the Mixture of Gaussians model, and graph cut is applied for foreground refinement. In the feature extraction module, the postures and positions of detected objects are estimated by applying the hybrid features of the virtual grounding point, inclusive of its related area and the aspect ratio of the object. In the analysis module, for differentiating normal, abnormal, or falling states, statistical computations called the moving average and modified difference are conducted, both of which are employed to estimate the points and periods of falls. Then, the local maximum or local minimum and the half width value are determined in the observed modified difference to more precisely estimate the period of a falling state. Finally, the decision-making process is conducted by developing a Hidden Markov Model. The experimental results used the Le2i fall detection dataset, and showed that our proposed system is robust and reliable and has a high detection rate.
图像处理技术的进步为医疗保健管理系统提供了更精确的视图。在众多其他主题中,本文重点关注针对独立生活老年人的基于视频的监测系统的几个方面。主要关注点是患有慢性病的患者和身体机能下降的成年人,以及老年人跌倒问题,跌倒是危及生命伤害的一个来源,也是主要死因之一。因此,在本文中,我们提出了一种基于视频视觉的监测系统,该系统使用图像处理技术和隐马尔可夫模型来区分人的跌倒状态和正常状态。具体而言,所提出的系统由四个模块组成:(1)目标检测;(2)特征提取;(3)区分正常状态和跌倒状态的分析;(4)使用隐马尔可夫模型对异常和正常的连续状态进行决策的过程。在目标检测模块中,通过应用高斯混合模型进行背景和前景分割,并应用图割进行前景细化。在特征提取模块中,通过应用虚拟接地的混合特征(包括其相关区域和目标的宽高比)来估计检测到的目标的姿势和位置。在分析模块中,为了区分正常、异常或跌倒状态,进行了称为移动平均和修正差分的统计计算,这两者都用于估计跌倒的点和时间段。然后,在观察到的修正差分中确定局部最大值或局部最小值以及半宽值,以更精确地估计跌倒状态的时间段。最后,通过开发隐马尔可夫模型进行决策过程。实验结果使用了Le2i跌倒检测数据集,结果表明我们提出的系统具有鲁棒性和可靠性,并且检测率很高。