A Compendium of Autonomous Navigation using Object Detection and Tracking in Unmanned Aerial Vehicles
Mohit Arora, Pratyush Shukla, Shivali Chopra

TL;DR
This paper reviews various computer vision algorithms for autonomous UAV navigation using object detection and tracking, aiming to enhance real-time decision-making in applications like disaster management and surveillance.
Contribution
It provides a comprehensive review of existing approaches for autonomous UAV navigation through object detection and tracking algorithms in real time.
Findings
Various algorithms enable real-time object detection and tracking in UAVs.
Autonomous UAVs improve efficiency in disaster management and surveillance.
Challenges include hardware limitations and data security.
Abstract
Unmanned Aerial Vehicles (UAVs) are one of the most revolutionary inventions of 21st century. At the core of a UAV lies the central processing system that uses wireless signals to control their movement. The most popular UAVs are quadcopters that use a set of four motors, arranged as two on either side with opposite spin. An autonomous UAV is called a drone. Drones have been in service in the US army since the 90's for covert missions critical to national security. It would not be wrong to claim that drones make up an integral part of the national security and provide the most valuable service during surveillance operations. While UAVs are controlled using wireless signals, there reside some challenges that disrupt the operation of such vehicles such as signal quality and range, real time processing, human expertise, robust hardware and data security. These challenges can be solved by…
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Taxonomy
TopicsUAV Applications and Optimization · Internet of Things and AI · Smart Systems and Machine Learning
Methodstravel james · Sparse Evolutionary Training
