Banerjee Tanvi, Keller James M, Skubic Marjorie
Electrical and Computer Engineering Department at the University of Missouri, Columbia, MO 65211, USA.
Annu Int Conf IEEE Eng Med Biol Soc. 2012;2012:5102-5. doi: 10.1109/EMBC.2012.6347141.
As a part of our passive fall risk assessment research in home environments, we present a method to identify older residents using features extracted from their gait information from a single depth camera. Depth images have been collected continuously for about eight months from several apartments at a senior housing facility. Shape descriptors such as bounding box information and image moments were extracted from silhouettes of the depth images. The features were then clustered using Possibilistic C Means for resident identification. This technology will allow researchers and health professionals to gather more information on the individual residents by filtering out data belonging to non-residents. Gait related information belonging exclusively to the older residents can then be gathered. The data can potentially help detect changes in gait patterns which can be used to analyze fall risk for elderly residents by passively observing them in their home environments.
作为我们在家庭环境中进行的被动跌倒风险评估研究的一部分,我们提出了一种方法,该方法利用从单个深度相机获取的步态信息中提取的特征来识别老年居民。在一个老年住宅设施的几个公寓中,已经连续大约八个月收集深度图像。从深度图像的轮廓中提取了诸如边界框信息和图像矩等形状描述符。然后使用可能性C均值对这些特征进行聚类以识别居民。这项技术将使研究人员和健康专业人员能够通过过滤掉属于非居民的数据来收集更多关于个体居民的信息。然后可以收集专门属于老年居民的步态相关信息。这些数据有可能帮助检测步态模式的变化,通过在其家庭环境中被动观察老年居民,可用于分析他们的跌倒风险。