Energy-Efficient Fast Object Detection on Edge Devices for IoT Systems
Mas Nurul Achmadiah, Afaroj Ahamad, Chi-Chia Sun, Wen-Kai Kuo

TL;DR
This paper introduces a lightweight, energy-efficient object detection method optimized for IoT edge devices, demonstrating significant improvements in accuracy, latency, and efficiency over traditional end-to-end approaches.
Contribution
The paper proposes a novel frame difference-based detection algorithm tailored for IoT edge devices, enhancing speed and energy efficiency in fast-object detection tasks.
Findings
MobileNet achieves high accuracy and low latency with the proposed method.
The algorithm improves average accuracy by 28.314%.
Efficiency increases by 3.6 times, with latency reduced by 39.305%.
Abstract
This paper presents an Internet of Things (IoT) application that utilizes an AI classifier for fast-object detection using the frame difference method. This method, with its shorter duration, is the most efficient and suitable for fast-object detection in IoT systems, which require energy-efficient applications compared to end-to-end methods. We have implemented this technique on three edge devices: AMD AlveoT M U50, Jetson Orin Nano, and Hailo-8T M AI Accelerator, and four models with artificial neural networks and transformer models. We examined various classes, including birds, cars, trains, and airplanes. Using the frame difference method, the MobileNet model consistently has high accuracy, low latency, and is highly energy-efficient. YOLOX consistently shows the lowest accuracy, lowest latency, and lowest efficiency. The experimental results show that the proposed algorithm has…
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Taxonomy
TopicsAdvanced Neural Network Applications · IoT and Edge/Fog Computing · Big Data and Digital Economy
