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An analysis of the robustness of UAV agriculture field coverage using multi-agent reinforcement learning
by
Wazir, Samar
, Singh, Vivek Kumar
, Kashyap, Gautam Siddharth
, Marwah, Nirmal
in
Agriculture
/ Algorithms
/ Artificial Intelligence
/ Cameras
/ Climate change
/ Computer Imaging
/ Computer Science
/ Drones
/ Field of view
/ Global positioning systems
/ GPS
/ Image Processing and Computer Vision
/ Internet of Things
/ Machine Learning
/ Military history
/ Multiagent systems
/ Optimization
/ Original Research
/ Pattern Recognition and Graphics
/ Sensors
/ Software Engineering
/ Unmanned aerial vehicles
/ Vision
2023
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An analysis of the robustness of UAV agriculture field coverage using multi-agent reinforcement learning
by
Wazir, Samar
, Singh, Vivek Kumar
, Kashyap, Gautam Siddharth
, Marwah, Nirmal
in
Agriculture
/ Algorithms
/ Artificial Intelligence
/ Cameras
/ Climate change
/ Computer Imaging
/ Computer Science
/ Drones
/ Field of view
/ Global positioning systems
/ GPS
/ Image Processing and Computer Vision
/ Internet of Things
/ Machine Learning
/ Military history
/ Multiagent systems
/ Optimization
/ Original Research
/ Pattern Recognition and Graphics
/ Sensors
/ Software Engineering
/ Unmanned aerial vehicles
/ Vision
2023
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While trying to remove the title from your shelf something went wrong :( Kindly try again later!
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An analysis of the robustness of UAV agriculture field coverage using multi-agent reinforcement learning
by
Wazir, Samar
, Singh, Vivek Kumar
, Kashyap, Gautam Siddharth
, Marwah, Nirmal
in
Agriculture
/ Algorithms
/ Artificial Intelligence
/ Cameras
/ Climate change
/ Computer Imaging
/ Computer Science
/ Drones
/ Field of view
/ Global positioning systems
/ GPS
/ Image Processing and Computer Vision
/ Internet of Things
/ Machine Learning
/ Military history
/ Multiagent systems
/ Optimization
/ Original Research
/ Pattern Recognition and Graphics
/ Sensors
/ Software Engineering
/ Unmanned aerial vehicles
/ Vision
2023
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An analysis of the robustness of UAV agriculture field coverage using multi-agent reinforcement learning
Journal Article
An analysis of the robustness of UAV agriculture field coverage using multi-agent reinforcement learning
2023
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Overview
Agriculture is a vital sector in developing nations such as India, and the use of autonomous vehicles and Internet of Things (IoT) technology has the potential to revolutionize farming practices. Unmanned Aerial Vehicles (UAVs) are becoming increasingly important in agriculture, as they can provide valuable data for crop monitoring and pest control. In this study, we investigate the reliability of a Multi-Agent Reinforcement Learning (MARL) method for UAV field coverage. The algorithm enables a group of UAVs equipped with ground-facing cameras to learn how to provide complete coverage of an unknown Field of Interest (FoI) while minimizing camera view overlap. We test the algorithm in scenarios where the FoI and camera Field of View (FoV) are dynamically updated in the environment, to evaluate its performance under more dynamic conditions. Our results demonstrate the effectiveness and resilience of the proposed method in varying environmental conditions, highlighting its potential for Precision Agriculture (PA) applications.
Publisher
Springer Nature Singapore,Springer Nature B.V
Subject
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