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arxiv 2203.10938 v1 pith:XT65T534 submitted 2022-03-08 cs.CV cs.AI

Geolocation estimation of target vehicles using image processing and geometric computation

classification cs.CV cs.AI
keywords vehiclestrafficestimatemethodologyobservedproposedalgorithmscomputation
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Estimating vehicles' locations is one of the key components in intelligent traffic management systems (ITMSs) for increasing traffic scene awareness. Traditionally, stationary sensors have been employed in this regard. The development of advanced sensing and communication technologies on modern vehicles (MVs) makes it feasible to use such vehicles as mobile sensors to estimate the traffic data of observed vehicles. This study aims to explore the capabilities of a monocular camera mounted on an MV in order to estimate the geolocation of the observed vehicle in a global positioning system (GPS) coordinate system. We proposed a new methodology by integrating deep learning, image processing, and geometric computation to address the observed-vehicle localization problem. To evaluate our proposed methodology, we developed new algorithms and tested them using real-world traffic data. The results indicated that our proposed methodology and algorithms could effectively estimate the observed vehicle's latitude and longitude dynamically.

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