Real-Time Pedestrian Detection on IoT Edge Devices: A Lightweight Deep Learning Approach
Artificial intelligence (AI) has become integral to our everyday lives. Computer vision has advanced to the point where it can play the safety critical role of detecting pedestrians at road intersections in intelligent transportation systems and alert vehicular traffic as to potential collisions. Ce...
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Zusammenfassung: | Artificial intelligence (AI) has become integral to our everyday lives.
Computer vision has advanced to the point where it can play the safety critical
role of detecting pedestrians at road intersections in intelligent
transportation systems and alert vehicular traffic as to potential collisions.
Centralized computing analyzes camera feeds and generates alerts for nearby
vehicles. However, real-time applications face challenges such as latency,
limited data transfer speeds, and the risk of life loss. Edge servers offer a
potential solution for real-time applications, providing localized computing
and storage resources and lower response times. Unfortunately, edge servers
have limited processing power. Lightweight deep learning (DL) techniques enable
edge servers to utilize compressed deep neural network (DNN) models.
The research explores implementing a lightweight DL model on Artificial
Intelligence of Things (AIoT) edge devices. An optimized You Only Look Once
(YOLO) based DL model is deployed for real-time pedestrian detection, with
detection events transmitted to the edge server using the Message Queuing
Telemetry Transport (MQTT) protocol. The simulation results demonstrate that
the optimized YOLO model can achieve real-time pedestrian detection, with a
fast inference speed of 147 milliseconds, a frame rate of 2.3 frames per
second, and an accuracy of 78%, representing significant improvements over
baseline models. |
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DOI: | 10.48550/arxiv.2409.15740 |