首页> 外文会议>Intelligent Sensing and Information Processing, 2004. Proceedings of International Conference on >Distributed multisensor processing and classification under constrained resources for mobile health monitoring and remote environmental monitoring
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Distributed multisensor processing and classification under constrained resources for mobile health monitoring and remote environmental monitoring

机译:在资源受限的情况下进行分布式多传感器处理和分类,用于移动健康监控和远程环境监控

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Recent advancements in sensors, wireless technology, and a reduction in the form factor of computing devices, provide the realization of true autonomy in mobile sensing systems. Past field-deployable sensing systems for health-biomedical applications and even environmental sensing have been designed for data collection and data transmission at pre-set intervals, rather than for on-board processing. This lack of true autonomy has resulted in systems with lower lifetimes and those that require large amounts of bandwidth to transmit all sensory data at all times. The use of a new, general machine learning architecture that can be used for a variety of autonomous sensing applications that have very limited computing, power, and bandwidth resources is proposed in this paper. The general solutions for efficient processing in a multi-tiered (three-tier) machine learning framework that is suited for remote, mobile sensing systems with low computing capabilities is provided. Simple pattern recognition methods are used at the sensor level to filter significant events. Novel dimensionality reduction techniques that are designed for classification are used to compress each individual sensor data and pass only relevant information to the mobile multisensor fusion module (second-tier). Statistical classifiers that are capable of handling missing/partial sensory data due to sensor failure or power loss are used to detect critical events and pass the information to the third tier (central server) for manual analysis and/or analysis by advanced pattern recognition techniques. The applicability of the proposed technology in mobile health & alcohol monitoring is shown. Other uses of the provided solutions are also discussed.
机译:传感器,无线技术的最新进展以及计算设备尺寸的减小,为移动感测系统提供了真正的自主权。过去用于健康,生物医学应用乃至环境传感的可现场部署的传感系统已被设计用于以预定的时间间隔进行数据收集和数据传输,而不是用于机载处理。由于缺乏真正的自主权,导致系统的寿命缩短,而那些需要大量带宽以始终传输所有传感数据的系统。本文提出了一种新的通用机器学习架构的使用,该架构可用于计算,功能和带宽资源非常有限的各种自主传感应用程序。提供了适用于具有低计算能力的远程移动感测系统的多层(三层)机器学习框架中高效处理的一般解决方案。在传感器级别使用简单的模式识别方法来过滤重要事件。设计用于分类的新颖降维技术用于压缩每个单独的传感器数据,并且仅将相关信息传递到移动多传感器融合模块(第二层)。能够处理由于传感器故障或功率损耗而导致的缺失/部分感官数据的统计分类器用于检测关键事件,并将信息传递给第三层(中央服务器),以进行手动分析和/或通过高级模式识别技术进行分析。显示了所提出的技术在移动健康和酒精监测中的适用性。还讨论了提供的解决方案的其他用途。

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