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Context-Awareness for Multi-sensor Data Fusion in Smart Environments

机译:智能环境中多传感器数据融合的上下文感知

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Multi-sensor data fusion is extensively used to merge data collected by heterogeneous sensors deployed in smart environments. However, data coming from sensors are often noisy and inaccurate, and thus probabilistic techniques, such as Dynamic Bayesian Networks, are often adopted to explicitly model the noise and uncertainty of data. This work proposes to improve the accuracy of probabilistic inference systems by including context information, and proves the suitability of such an approach in the application scenario of user activity recognition in a smart home environment. However, the selection of the most convenient set of context information to be considered is not a trivial task. To this end, we carried out an extensive experimental evaluation which shows that choosing the right combination of context information is fundamental to maximize the inference accuracy.
机译:多传感器数据融合被广泛用于合并由智能环境中部署的异构传感器收集的数据。但是,来自传感器的数据通常是嘈杂且不准确的,因此,通常采用诸如动态贝叶斯网络之类的概率技术来显式地对数据的噪声和不确定性进行建模。这项工作提出通过包含上下文信息来提高概率推理系统的准确性,并证明这种方法在智能家居环境中的用户活动识别的应用场景中的适用性。但是,选择要考虑的最方便的上下文信息集并不是一件容易的事。为此,我们进行了广泛的实验评估,结果表明选择正确的上下文信息组合对于最大化推理准确性至关重要。

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