稀疏移动人群感知中数据推断和长时间预测的时空转换

E. Wang, Weiting Liu, Wenbin Liu, Chaocan Xiang, Boai Yang, Yongjian Yang
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引用次数: 0

摘要

MCS (Mobile CrowdSensing)是一种招募携带移动终端的用户进行数据采集的数据感知范式。作为其变体,稀疏MCS被进一步提出用于大规模和细粒度的感知任务,其优点是只收集少量数据来推断未感知数据。但是,在很多现实场景中,比如疫情的早期预防,人们感兴趣的不仅仅是当下的数据,还有未来甚至长远的未来,而后者可能更重要。长期预测不仅可以降低传感成本,还可以识别数据的趋势或其他特征。本文提出了一种基于Transformer的时空模型,利用时空关系对稀疏感知数据进行推断和预测。我们设计了一个时空特征嵌入,将感知地图的先验时空信息嵌入到模型中,以指导模型学习。此外,我们还设计了一种新的多头时空注意机制来动态捕捉数据之间的时空关系。在三种典型的城市感知任务上进行了大量的实验,验证了我们提出的算法在提高稀疏感知数据推理和长期预测精度方面的有效性。
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Spatiotemporal Transformer for Data Inference and Long Prediction in Sparse Mobile CrowdSensing
Mobile CrowdSensing (MCS) is a data sensing paradigm that recruits users carrying mobile terminals to collect data. As its variant, Sparse MCS has been further proposed for large-scale and fine-grained sensing task with the advantage of collecting only a few data to infer unsensed data. However, in many real-world scenarios, such as early prevention of epidemic, people are interested in not only the data at the current, but also in the future or even long-term future, and the latter may be more important. Long-term prediction not only reduces sensing cost, but also identifies trends or other characteristics of the data. In this paper, we propose a spatiotemporal model based on Transformer to infer and predict the data with sparse sensed data by utilizing spatiotemporal relationships. We design a spatiotemporal feature embedding to embed the prior spatiotemporal information of sensing map into the model to guide model learning. Moreover, we also design a novel multi-head spatiotemporal attention mechanism to dynamically capture spatiotemporal relationships among data. Extensive experiments have been conducted on three types of typical urban sensing tasks, which verify the effectiveness of our proposed algorithms in improving the inference and long-term prediction accuracy with the sparse sensed data.
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