Canghong Jin, Ting Tao, Tao Ruan, Lei Xu, Xianzhe Luo, Rui Li
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引用次数: 0
摘要
随着信息技术的发展,城市各处的传感器都可以捕捉到居民的行踪,从而识别嫌疑人等特定人群,这已经成为近年来公安部门关注的焦点。虽然大量的时空记录具有一定的优势,但同时包含时空背景的活动记录具有高阶性和稀疏性。因此,很难识别用户,特别是那些小群体的个人。本文提出了一种利用模糊时空轨迹识别用户的框架,该框架首先从多个角度提取特征,生成TSGH (Time-slice Geohash)模型和STPS (spatial -temporal Proportion and Similarity)模型。将这些特征与经典的分类模型相结合来区分用户。我们建立了一个真实的数据集,并通过精确率和召回率来评估性能有效性。结果表明,模糊运算能较好地描述轨迹特征,提高预测性能
A Novel Spatial-Temporal Fusion Framework Based on Object Trajectories
With the development of information technology, the traces of residents could be caught by sensors all over the city, from which to identify specific people such as suspects, has become the focus of public security departments in recent years. Although there are some advantages of the mass of Spatio-temporal records, the activity records contain both temporal and spatial context is high-order and sparse. Therefore, it is difficult to identify users, especially for those small groups of individuals. In this paper, we propose a framework to identify users by fuzzed Spatio-temporal traces, in which we first extract the features from several perspectives and generate the TSGH (Time-slice Geohash) model and STPS (Spatio-temporal Proportion and Similarity) model. All these features are combined with classical classification models to distinguish users. We set up a real-life dataset and evaluate performance effectiveness with precision and recall measures. The final results show that the fuzzy operations could describe the characteristic of traces better and improve the prediction performance