Ghasemzadeh Hassan, Loseu Vitali, Jafari Roozbeh
Department of Electrical Engineering, University of Texas at Dallas, Richardson, TX 75080, USA.
IEEE Trans Inf Technol Biomed. 2010 Mar;14(2):425-35. doi: 10.1109/TITB.2009.2036722. Epub 2009 Dec 11.
Mobile sensor-based systems are emerging as promising platforms for healthcare monitoring. An important goal of these systems is to extract physiological information about the subject wearing the network. Such information can be used for life logging, quality of life measures, fall detection, extraction of contextual information, and many other applications. Data collected by these sensor nodes are overwhelming, and hence, an efficient data processing technique is essential. In this paper, we present a system using inexpensive, off-the-shelf inertial sensor nodes that constructs motion transcripts from biomedical signals and identifies movements by taking collaboration between the nodes into consideration. Transcripts are built of motion primitives and aim to reduce the complexity of the original data. We then label each primitive with a unique symbol and generate a sequence of symbols, known as motion template, representing a particular action. This model leads to a distributed algorithm for action recognition using edit distance with respect to motion templates. The algorithm reduces the number of active nodes during every classification decision. We present our results using data collected from five normal subjects performing transitional movements. The results clearly illustrate the effectiveness of our framework. In particular, we obtain a classification accuracy of 84.13% with only one sensor node involved in the classification process.
基于移动传感器的系统正成为用于医疗保健监测的有前景的平台。这些系统的一个重要目标是提取关于佩戴该网络的受试者的生理信息。此类信息可用于生活记录、生活质量测量、跌倒检测、上下文信息提取以及许多其他应用。这些传感器节点收集的数据量巨大,因此,一种高效的数据处理技术至关重要。在本文中,我们提出了一种使用廉价的现成惯性传感器节点的系统,该系统从生物医学信号构建运动记录,并通过考虑节点之间的协作来识别运动。记录由运动原语构建而成,旨在降低原始数据的复杂性。然后,我们用唯一的符号标记每个原语,并生成一个符号序列,即运动模板,来表示特定的动作。该模型引出了一种使用与运动模板相关的编辑距离进行动作识别的分布式算法。该算法在每次分类决策时减少了活跃节点的数量。我们使用从五个进行过渡性动作的正常受试者收集的数据展示了我们的结果。结果清楚地说明了我们框架的有效性。特别是,在分类过程中仅涉及一个传感器节点时,我们获得了84.13%的分类准确率。