This paper presents a pioneering study in the application of real-time surface landmine detection using a combination of robotics and deep learning. We introduce a novel system integrated within a demining robot, capable of detecting landmines in real time with high recall. Utilizing YOLOv8 models, we leverage both optical imaging and artificial intelligence to identify two common types of surface landmines: PFM-1 (butterfly) and PMA-2 (starfish with tripwire). Our system runs at 2 FPS on a mobile device missing at most 1.6% of targets. It demonstrates significant advancements in operational speed and autonomy, surpassing conventional methods while being compatible with other approaches like UAV. In addition to the proposed system, we release two datasets with remarkable differences in landmine and background colors, built to train and test the model performances.

Deep Learning-Based Real-Time Detection of Surface Landmines Using Optical Imaging / Vivoli, Emanuele; Bertini, Marco; Capineri, Lorenzo. - In: REMOTE SENSING. - ISSN 2072-4292. - ELETTRONICO. - 16:(2024), pp. 677.0-677.0. [10.3390/rs16040677]

Deep Learning-Based Real-Time Detection of Surface Landmines Using Optical Imaging

Vivoli, Emanuele
;
Bertini, Marco;Capineri, Lorenzo
2024

Abstract

This paper presents a pioneering study in the application of real-time surface landmine detection using a combination of robotics and deep learning. We introduce a novel system integrated within a demining robot, capable of detecting landmines in real time with high recall. Utilizing YOLOv8 models, we leverage both optical imaging and artificial intelligence to identify two common types of surface landmines: PFM-1 (butterfly) and PMA-2 (starfish with tripwire). Our system runs at 2 FPS on a mobile device missing at most 1.6% of targets. It demonstrates significant advancements in operational speed and autonomy, surpassing conventional methods while being compatible with other approaches like UAV. In addition to the proposed system, we release two datasets with remarkable differences in landmine and background colors, built to train and test the model performances.
2024
16
0
0
Vivoli, Emanuele; Bertini, Marco; Capineri, Lorenzo
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Utilizza questo identificatore per citare o creare un link a questa risorsa: https://hdl.handle.net/2158/1355766
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