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R-TOD: Real-Time Object Detector with Minimized End-to-End Delay for Autonomous Driving

Authors
Jang, WonseokJeong, HansaemKang, KyungtaeDutt, NikilKim, Jong chan
Issue Date
Dec-2020
Publisher
Institute of Electrical and Electronics Engineers Inc.
Keywords
Autonomous Driving; Darknet; End to End Delay; R TOD; Real Time Object Detection; YOLO
Citation
Proceedings - Real-Time Systems Symposium, pp.191 - 204
Indexed
SCOPUS
Journal Title
Proceedings - Real-Time Systems Symposium
Start Page
191
End Page
204
URI
https://scholarworks.bwise.kr/erica/handle/2021.sw.erica/105819
DOI
10.1109/RTSS49844.2020.00027
ISSN
1052-8725
Abstract
For realizing safe autonomous driving, the end-to-end delays of real-time object detection systems should be thoroughly analyzed and minimized. However, despite recent development of neural networks with minimized inference delays, surprisingly little attention has been paid to their end-to-end delays from an object's appearance until its detection is reported. With this motivation, this paper aims to provide more comprehensive understanding of the end-to-end delay, through which precise best-and worst-case delay predictions are formulated, and three optimization methods are implemented: (i) on-demand capture, (ii) zero-slack pipeline, and (iii) contention-free pipeline. Our experimental results show a 76% reduction in the end-to-end delay of Darknet YOLO (You Only Look Once) v3 (from 1070 ms to 261 ms), thereby demonstrating the great potential of exploiting the end-to-end delay analysis for autonomous driving. Furthermore, as we only modify the system architecture and do not change the neural network architecture itself, our approach incurs no penalty on the detection accuracy. © 2020 IEEE.
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