Indoor Periodic Fingerprint Collections by Vehicular Crowdsensing via Primal-Dual Multi-Agent Deep Reinforcement Learning

Haoming Yang;Qiran Zhao;Hao Wang;Chi Harold Liu;Guozheng Li;Guoren Wang;Jian Tang;Dapeng Wu
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Abstract

Indoor localization is drawing more and more attentions due to the growing demand of various location-based services, where fingerprinting is a popular data driven techniques that does not rely on complex measurement equipment, yet it requires site surveys which is both labor-intensive and time-consuming. Vehicular crowdsensing (VCS) with unmanned vehicles (UVs) is a novel paradigm to navigate a group of UVs to collect sensory data from certain point-of-interests periodically (PoIs, i.e., coverage holes in localization scenarios). In this paper, we formulate the multi-floor indoor fingerprint collection task with periodical PoI coverage requirements as a constrained optimization problem. Then, we propose a multi-agent deep reinforcement learning (MADRL) based solution, “MADRL-PosVCS”, which consists of a primal-dual framework to transform the above optimization problem into the unconstrained duality, with adjustable Lagrangian multipliers to ensure periodic fingerprint collection. We also propose a novel intrinsic reward mechanism consists of the mutual information between a UV’s observations and environment transition probability parameterized by a Bayesian Neural Network (BNN) for exploration, and a elevator-based reward to allow UVs to go cross different floors for collaborative fingerprint collections. Extensive simulation results on three real-world datasets in SML Center (Shanghai), Joy City (Hangzhou) and Haopu Fashion City (Shanghai) show that MADRL-PosVCS achieves better results over four baselines on fingerprint collection ratio, PoI coverage ratio for collection intervals, geographic fairness and average moving distance.
通过Primal-Dual多代理深度强化学习,利用车载人群感应进行室内周期性指纹采集
由于各种基于位置的服务的需求日益增长,室内定位越来越受到关注,其中指纹识别是一种流行的数据驱动技术,它不依赖于复杂的测量设备,但它需要现场勘测,既耗费人力又耗费时间。使用无人车(UVs)的车载群感(VCS)是一种新颖的范例,它可以引导一群无人车定期从某些兴趣点(PoIs,即定位场景中的覆盖孔)收集感知数据。在本文中,我们将具有周期性 PoI 覆盖要求的多楼层室内指纹采集任务表述为一个约束优化问题。然后,我们提出了一种基于多代理深度强化学习(MADRL)的解决方案--"MADRL-PosVCS",它包括一个将上述优化问题转化为无约束二元性的基元-二元框架,以及可调整的拉格朗日乘数,以确保周期性指纹采集。我们还提出了一种新颖的内在奖励机制,包括由贝叶斯神经网络(BNN)参数化的 UV 观察结果与环境转换概率之间的互信息,用于探索;以及基于电梯的奖励,允许 UV 穿过不同楼层,协同采集指纹。在上海 SML 中心、杭州大悦城和豪普时尚城三个真实世界数据集上进行的大量仿真结果表明,MADRL-PosVCS 在指纹采集率、采集间隔的 PoI 覆盖率、地理公平性和平均移动距离方面都比四种基线方法取得了更好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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