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Deep Reinforcement Learning (DRL): Another Perspective for Unsupervised Wireless Localization

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arxiv 2004.04618 v1 pith:IW7EHN4E submitted 2020-04-09 cs.LG eess.SPstat.ML

Deep Reinforcement Learning (DRL): Another Perspective for Unsupervised Wireless Localization

classification cs.LG eess.SPstat.ML
keywords datalocalizationprocesslocationunsupervisedwirelessdeeplearning
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Location is key to spatialize internet-of-things (IoT) data. However, it is challenging to use low-cost IoT devices for robust unsupervised localization (i.e., localization without training data that have known location labels). Thus, this paper proposes a deep reinforcement learning (DRL) based unsupervised wireless-localization method. The main contributions are as follows. (1) This paper proposes an approach to model a continuous wireless-localization process as a Markov decision process (MDP) and process it within a DRL framework. (2) To alleviate the challenge of obtaining rewards when using unlabeled data (e.g., daily-life crowdsourced data), this paper presents a reward-setting mechanism, which extracts robust landmark data from unlabeled wireless received signal strengths (RSS). (3) To ease requirements for model re-training when using DRL for localization, this paper uses RSS measurements together with agent location to construct DRL inputs. The proposed method was tested by using field testing data from multiple Bluetooth 5 smart ear tags in a pasture. Meanwhile, the experimental verification process reflected the advantages and challenges for using DRL in wireless localization.

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