Detail View

DNN-SAM: Split-and-Merge DNN Execution for Real-Time Object Detection
Citations

WEB OF SCIENCE

Citations

SCOPUS

Metadata Downloads

Title
DNN-SAM: Split-and-Merge DNN Execution for Real-Time Object Detection
Issued Date
2022-05-05
Citation
Kang, Woosung. (2022-05-05). DNN-SAM: Split-and-Merge DNN Execution for Real-Time Object Detection. IEEE Real-Time and Embedded Technology and Applications Symposium, 160–172. doi: 10.1109/RTAS54340.2022.00021
Type
Conference Paper
ISBN
9781665499989
ISSN
1545-3421
Abstract
As real-time object detection systems, such as autonomous cars, need to process input images acquired from multiple cameras, they face significant challenges in delivering accurate and timely inferences often based on machine learning (ML). To meet these challenges, we want to provide different levels of object detection accuracy and timeliness to different portions within each input image with different criticality levels. Specifically, we develop DNN-SAM, a dynamic Split-And-Merge Deep Neural Network (DNN) execution and scheduling framework, that enables seamless split-and-merge DNN execution for unmodified DNN models. Instead of processing an entire input image once in a full DNN model, DNN-SAM first splits a DNN inference task into two smaller sub-tasks-a mandatory sub-task dedicated for a safety-critical (cropped) portion of each image and an optional sub-task for processing a down-scaled image-then executes them independently, and finally merges their results into a complete inference. To achieve DNN-SAM's timely and accurate detection of objects in each image, we also develop two scheduling algorithms that prioritize sub-tasks according to their criticality levels and adaptively adjust the scale of the input image to meet the timing constraints while minimizing the response time of mandatory sub-tasks or maximizing the accuracy of optional sub-tasks. We have implemented and evaluated DNN-SAM on a representative ML framework. Our evaluation shows DNN-SAM to improve detection accuracy in the safety-critical region by 2.0-3.7× and lower average inference latency by 4.8-9.7× over existing approaches without violating any timing constraints. © 2022 IEEE.
URI
http://hdl.handle.net/20.500.11750/46853
DOI
10.1109/RTAS54340.2022.00021
Publisher
Institute of Electrical and Electronics Engineers Inc.
Show Full Item Record

File Downloads

  • There are no files associated with this item.

공유

qrcode
공유하기

Related Researcher

좌훈승
Chwa, Hoonsung좌훈승

Department of Electrical Engineering and Computer Science

read more

Total Views & Downloads