Deploying TinyML for Energy-Efficient Object Detection and Communication in Low-Power EdgeAI Systems

Read the full article See related articles

Listed in

This article is not in any list yet, why not save it to one of your lists.
Log in to save this article

Abstract

The integration of neural networks into low-power controller units is revolutionizing EdgeAI, reducing cloud dependency, latency, and energy consumption while enhancing privacy. This paper presents a compact, energy-efficient system for real-time object detection with TCP/UDP-based image transmission, optimized for low-resource environments. It features an energy-efficient controller, a low-cost camera, and a Wi-Fi module for localized processing and communication. The neural network, trained with deep learning and quantized into TensorFlow Lite, enables high-accuracy object detection on the controller. Real-time images are processed using TinyML, with results transmitted via TCP for reliability or UDP for low-latency tasks. Model compression techniques like quantization, pruning, and hardware-aware deployment optimize performance, while TensorFlow Lite for controllers is integrated. Challenges related to memory, computation, and energy efficiency in constrained environments are addressed. A case study in IoT applications demonstrates the system’s effectiveness in real-time image processing, low-latency transmission, and energy efficiency. The results validate its suitability for smart IoT devices, industrial monitoring, and environmental sensing. This work offers a scalable, cost-effective solution for deploying intelligent systems in remote, resource-limited settings, advancing EdgeAI and IoT technologies.

Article activity feed