计算机科学
隐马尔可夫模型
人工智能
分类器(UML)
支持向量机
机器学习
朴素贝叶斯分类器
上下文模型
语境意识
数据挖掘
电话
语言学
哲学
对象(语法)
作者
Feng Zhu,Weijie Chen,Fei Guo,Xiaohong Zhang
标识
DOI:10.1109/jiot.2023.3293792
摘要
The emergence of seamless mobile navigation systems integrating various Internet of Things (IoT) devices has sparked interest in context awareness enhancement technology. In the concept of advanced adaptive integrated navigation technology, the context comprises two key elements: environment characteristics and carrier behaviors, which are not entirely independent, especially in certain scenarios. Leveraging the abundant sensors in smartphones, a model combining context connectivity and behavior association is developed to detect environment scenes accurately with low energy consumption across outdoor, semi-outdoor, and indoor spaces. The model comprises three main parts: sensor-based SVM (Support Vector Machine), behavior-aided HMM (Hidden Markov Model), and classifier combination. The parameters of a behavior-aided HMM are adjusted by behavioral probabilities and a specified EMA method. Four classifier combination techniques, including SA, EWA, EBWA, and stacking, are used to integrate the environment detecting strengths of multiple smartphone sensors. The proposed model is evaluated on a dataset collected from a complex building at Wuhan University and achieves a best environment detection accuracy of 94.22% with stacking ensemble technique. The multisensor model outperforms the other three classifier combination techniques, improving detection accuracy by 6.93% compared to a GNSS-supported model. The proposed model has certain advantages over high recognition accuracy, low model consumption compared to the main existing environment detection models.
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