ESOD:Edge-based Task Scheduling for Object Detection
- URL: http://arxiv.org/abs/2110.11342v1
- Date: Wed, 20 Oct 2021 13:43:51 GMT
- Title: ESOD:Edge-based Task Scheduling for Object Detection
- Authors: Yihao Wang, Ling Gao, Jie Ren, Rui Cao, Hai Wang, Jie Zheng, Quanli
Gao
- Abstract summary: We present a novel edge-based task scheduling framework for object detection (termed as ESOD)
The results show that ESOD can reduce latency and energy consumption by an average of 22.13% and 29.60%.
- Score: 8.347247774167109
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Object Detection on the mobile system is a challenge in terms of everything.
Nowadays, many object detection models have been designed, and most of them
concentrate on precision. However, the computation burden of those models on
mobile systems is unacceptable. Researchers have designed some lightweight
networks for mobiles by sacrificing precision. We present a novel edge-based
task scheduling framework for object detection (termed as ESOD). In detail, we
train a DNN model (termed as pre-model) to predict which object detection model
to use for the coming task and offloads to which edge servers by physical
characteristics of the image task (e.g., brightness, saturation). The results
show that ESOD can reduce latency and energy consumption by an average of
22.13% and 29.60% and improve the mAP to 45.8(with 0.9 mAP better),
respectively, compared with the SOTA DETR model.
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