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MultiCore+TPU Accelerated Multi-Modal TinyML for Livestock Behaviour Recognition

Published: April 10, 2025 | arXiv ID: 2504.11467v2

By: Qianxue Zhang, Eiman Kanjo

Potential Business Impact:

Helps farmers watch animals with tiny computers.

Business Areas:
Image Recognition Data and Analytics, Software

The advancement of technology has revolutionised the agricultural industry, transitioning it from labour-intensive farming practices to automated, AI-powered management systems. In recent years, more intelligent livestock monitoring solutions have been proposed to enhance farming efficiency and productivity. This work presents a novel approach to animal activity recognition and movement tracking, leveraging tiny machine learning (TinyML) techniques, wireless communication framework, and microcontroller platforms to develop an efficient, cost-effective livestock sensing system. It collects and fuses accelerometer data and vision inputs to build a multi-modal network for three tasks: image classification, object detection, and behaviour recognition. The system is deployed and evaluated on commercial microcontrollers for real-time inference using embedded applications, demonstrating up to 270$\times$ model size reduction, less than 80ms response latency, and on-par performance comparable to existing methods. The incorporation of the TinyML technique allows for seamless data transmission between devices, benefiting use cases in remote locations with poor Internet connectivity. This work delivers a robust, scalable IoT-edge livestock monitoring solution adaptable to diverse farming needs, offering flexibility for future extensions.

Country of Origin
🇬🇧 United Kingdom

Page Count
11 pages

Category
Computer Science:
CV and Pattern Recognition