2024
DOI: 10.1007/s00521-024-09466-8
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A reinforcement learning (RL)-based hybrid method for ground penetrating radar (GPR)-driven buried object detection

Mahmut Nedim Alpdemir,
Mehmet Sezgin

Abstract: Ground penetrating radar (GPR) systems are effective sensors for discovering various types of objects buried underground, such as military mines, metal objects, and pieces of underground infrastructures. A GPR system can be manually operated by a human or can be an integral part of a host platform. The host platform may be semi- or fully autonomous and may operate in different environments such as land vehicles or more recently air-borne drones. One challenge for the fully or semi-autonomous host platforms in … Show more

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