Drone to Obstacle Distance Estimation Using YOLO V3 Network and Mathematical Principles

Now a days, drones are very commonly used in various real time applications. Moving towards autonomy, these drones rely on obstacle detection sensors and various collision avoidance algorithms programmed into it. Development of fully autonomous drones provide the fundamental benefits of being able t...

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Veröffentlicht in:Journal of physics. Conference series 2022-01, Vol.2161 (1), p.12022
Hauptverfasser: Aswini, N, Uma, S V, Akhilesh, V
Format: Artikel
Sprache:eng
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Zusammenfassung:Now a days, drones are very commonly used in various real time applications. Moving towards autonomy, these drones rely on obstacle detection sensors and various collision avoidance algorithms programmed into it. Development of fully autonomous drones provide the fundamental benefits of being able to operate in hazardous environments without a human pilot. Among the various sensors, monocular cameras provide a rich source of information and are one of the main sensing mechanisms in low flying drones. These drones can be used for rescue and search operations, traffic monitoring, infrastructure, and pipeline inspection, and in construction sites. In this paper, we propose an onboard obstacle detection model using deep learning techniques, combined with a mathematical approach to calculate the distance between the detected obstacle and the drone. This when implemented does not need any additional sensor or Global Positioning Systems (GPS) other than the vision sensor.
ISSN:1742-6588
1742-6596
DOI:10.1088/1742-6596/2161/1/012022