Learning Approach to Efficient Vision-based Active Tracking of a Flying Target by an Unmanned Aerial Vehicle
Jagadeswara PKV Pothuri, Aditya Bhatt, Prajit KrisshnaKumar, Manaswin Oddiraju, Souma Chowdhury

TL;DR
This paper introduces a novel vision-based active tracking system for UAVs that combines deep learning with Kernelized Correlation Filters for efficient detection and reinforcement learning for maneuvering, validated in simulation.
Contribution
It presents an integrated perception and control framework for UAV target tracking, combining a new detection method with reinforcement learning-based maneuvering in simulation.
Findings
Outperforms baseline PID control in tracking duration.
Achieves efficient detection without accuracy loss.
Validated in a lab-scale and simulation environment.
Abstract
Autonomous tracking of flying aerial objects has important civilian and defense applications, ranging from search and rescue to counter-unmanned aerial systems (counter-UAS). Ground based tracking requires setting up infrastructure, could be range limited, and may not be feasible in remote areas, crowded cities or in dense vegetation areas. Vision based active tracking of aerial objects from another airborne vehicle, e.g., a chaser unmanned aerial vehicle (UAV), promises to fill this important gap, along with serving aerial coordination use cases. Vision-based active tracking by a UAV entails solving two coupled problems: 1) compute-efficient and accurate (target) object detection and target state estimation; and 2) maneuver decisions to ensure that the target remains in the field of view in the future time-steps and favorably positioned for continued detection. As a solution to the…
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