Yu Miao, Rhuma Adel, Naqvi Syed Mohsen, Wang Liang, Chambers Jonathon
IEEE Trans Inf Technol Biomed. 2012 Nov;16(6):1274-86. doi: 10.1109/TITB.2012.2214786. Epub 2012 Aug 22.
We propose a novel computer vision based fall detection system for monitoring an elderly person in a home care application. Background subtraction is applied to extract the foreground human body and the result is improved by using certain post-processing. Information from ellipse fitting and a projection histogram along the axes of the ellipse are used as the features for distinguishing different postures of the human. These features are then fed into a directed acyclic graph support vector machine (DAGSVM) for posture classification, the result of which is then combined with derived floor information to detect a fall. From a dataset of 15 people, we show that our fall detection system can achieve a high fall detection rate (97.08%) and a very low false detection rate (0.8%) in a simulated home environment.
我们提出了一种新颖的基于计算机视觉的跌倒检测系统,用于在家庭护理应用中监测老年人。应用背景减法来提取前景人体,并通过使用特定的后处理来改善结果。来自椭圆拟合的信息以及沿椭圆轴的投影直方图被用作区分人体不同姿势的特征。然后将这些特征输入到有向无环图支持向量机(DAGSVM)中进行姿势分类,其结果再与导出的地面信息相结合以检测跌倒。从15人的数据集中,我们表明我们的跌倒检测系统在模拟家庭环境中可以实现较高的跌倒检测率(97.08%)和非常低的误检率(0.8%)。