首页> 外文会议>International conference on hybrid artificial intelligent systems;HAIS 2011 >A Hybrid Context-Aware Wearable System with Evolutionary Optimization and Selective Inference of Dynamic Bayesian Networks
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A Hybrid Context-Aware Wearable System with Evolutionary Optimization and Selective Inference of Dynamic Bayesian Networks

机译:动态贝叶斯网络的进化优化和选择推理的混合上下文感知可穿戴系统

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Multiple sensor-based context inference systems can perceive users' tasks in detail while it requires complicated recognition models with larger resources. Such limitations make the systems difficult to be used for the mobile environment where the context-awareness would be most needed. In order to design and operate the complex models efficiently, this paper proposes an evolutionary process for generating the context models and a selective inference method. Dynamic Bayesian networks are employed as the context models to cope with the uncertain and noisy time-series sensor data, where the operations are managed by using the semantic network which describes the hierarchical and semantic relations of the contexts. The proposed method was validated on a wearable system with variable sensors including accelerometers, gyroscopes, physiological sensors, and data gloves.
机译:多个基于传感器的上下文推断系统可以详细感知用户的任务,而同时又需要具有较大资源的复杂识别模型。这样的限制使得该系统难以用于最需要上下文感知的移动环境。为了有效地设计和操作复杂模型,本文提出了生成上下文模型的演化过程和选择性推理方法。动态贝叶斯网络被用作上下文模型来处理不确定和嘈杂的时间序列传感器数据,其中操作通过使用描述上下文的层次结构和语义关系的语义网络进行管理。所提出的方法在具有可变传感器(包括加速度计,陀螺仪,生理传感器和数据手套)的可穿戴系统上得到了验证。

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