作者
Seonyeong Heo, Sungjun Cho, Youngsok Kim, Hanjun Kim
发表日期
2020/4/21
研讨会论文
2020 IEEE Real-Time and Embedded Technology and Applications Symposium (RTAS)
页码范围
174-187
出版商
IEEE
简介
Thanks to the recent advances in Deep Neural Networks (DNNs), DNN-based object detection systems become highly accurate and widely used in real-time environments such as autonomous vehicles, drones and security robots. Although the systems should detect objects within a certain time limit that can vary depending on their execution environments such as vehicle speeds, existing systems blindly execute the entire long-latency DNNs without reflecting the time-varying time limits, and thus they cannot guarantee real-time constraints. This work proposes a novel real-time object detection system that employs multipath neural networks based on a new worst-case execution time (WCET) model for DNNs on a GPU. This work designs the WCET model for a single DNN layer analyzing processor and memory contention on GPUs, and extends the WCET model to the end-to-end networks. This work also designs …
引用总数
2020202120222023202441415144
学术搜索中的文章
S Heo, S Cho, Y Kim, H Kim - 2020 IEEE Real-Time and Embedded Technology and …, 2020