AI and IoT Based Anti-Poaching System
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Abstract
Poaching of wildlife and deforestation are constant threats to ecological balance and biodiversity across the globe, particularly in nations such as India with extensive forest cover and diverse fauna richness. Conventional manual patrolling is limited in scale, coverage, and speed, making it impossible to prevent wildlife offences in remote forest areas. This paper presents the design and proposed deployment of an IoT- and AIenabled Anti-Poaching System for real-time detection of human intrusion and gunfire in safeguarded forest reserves. The solution includes an array of multi-sensor pods with cameras, microphones, and GPS modules. Lightweight AI models analyse sensed information, developed and evaluated on benchmark datasets, for human and animal identification, sound categorisation, and prompt alert generation. The AI system achieves high detection accuracy and low inference latency, as demonstrated by experimental evaluation, making it feasible for future integration into IoT hardware. This work highlights the value of integrating embedded systems, AI, and IoT technologies to develop cost-effective, scalable, and energy-efficient antipoaching solutions tailored to remote, resource-constrained forest environments.
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