Skybound Intelligence: AI's Impact on Drone Technology
Dr.Anandhi1, Assistant Professor, Department of Computer Science
B.Keerthana2, II - Yr, Department of Computer Science
D.Velmurugan3, I - Yr, Department of Computer Science
Abstract
The integration of Artificial Intelligence (AI) with drone technology has revolutionized various industries, from agriculture and construction to defense and emergency response. This paper aims to provide an overview of the multifaceted role AI plays in enhancing drone capabilities and addressing challenges in different domains.Firstly, the paper discusses how AI-driven autonomy enables drones to perform complex tasks autonomously, such as navigation, obstacle avoidance, and mission planning. Advanced algorithms, including machine learning and computer vision, empower drones to interpret and respond to dynamic environments in real-time, significantly expanding their operational capabilities.Secondly, the paper examines the crucial role of AI in data processing and analysis for drones. AI algorithms enable drones to collect, process, and analyze vast amounts of data quickly and efficiently, extracting actionable insights for various applications. In agriculture, for instance, drones equipped with AI can analyze crop health, identify pest infestations, and optimize resource allocation for improved yields.Furthermore, the paper explores how AI enhances the security and safety of drone operations. AI-powered systems enable drones to detect and mitigate potential risks, such as unauthorized access, airspace violations, and mechanical failures, thereby ensuring safer and more reliable operations, especially in densely populated areas or sensitive environments.
Moreover, the paper discusses the implications of AI in enabling swarming capabilities among drones. Through collaborative AI algorithms, drones can coordinate their actions, communicate intelligently, and achieve collective goals efficiently, leading to applications like search and rescue, surveillance, and infrastructure inspection on a large scale.
Lastly, the paper addresses the ethical and regulatory considerations associated with the integration of AI in drone technology, including privacy concerns, algorithmic biases, and the need for transparent decision-making processes.
Keywords:
AI-enabled drones, Autonomous UAVs, Drone autonomy, AI-driven navigation, Machine learning for drones, and Drone surveillance