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Hidden Markov Models for Vehicle Tracking with Bluetooth
Autor
John D. Lees-Miller, R. Eddie Wilson, Simon Box
Letzte Aktualisierung
vor 11 Jahren
Lizenz
Other (as stated in the work)
Abstrakt
Bluetooth is a short range communication protocol. Bluetooth-enabled devices can be detected using road-side equipment, and each detected device reports a unique identifier. These unique identifiers can be used to track vehicles through road networks over time. The focus of this paper is on reconstructing the paths of vehicles through a road network using Bluetooth detection data. A method is proposed that uses Hidden Markov Models, which are a well-known tool for statistical pattern recognition. The proposed method is evaluated on a mixture of real and synthetic Bluetooth data with GPS ground truth, and it outperforms a simple deterministic strategy by a large margin (30%-50%) in this case.
![Hidden Markov Models for Vehicle Tracking with Bluetooth](https://writelatex.s3.amazonaws.com/published_ver/137.jpeg?X-Amz-Expires=14400&X-Amz-Date=20240727T123237Z&X-Amz-Algorithm=AWS4-HMAC-SHA256&X-Amz-Credential=AKIAWJBOALPNFPV7PVH5/20240727/us-east-1/s3/aws4_request&X-Amz-SignedHeaders=host&X-Amz-Signature=f211bf87ac9fff4dc3945a858de8f426a54af0164c9f8a064aab3bfd4e1bbf19)