Domain-Specific On-Device Object Detection Method

被引:0
作者
Kang, Seongju [1 ]
Hwang, Jaegi [1 ]
Chung, Kwangsue [1 ]
机构
[1] Kwangwoon Univ, Dept Elect & Commun Engn, Seoul 01897, South Korea
关键词
object detection; domain-specific; on-device; lightweight network;
D O I
10.3390/e24010077
中图分类号
O4 [物理学];
学科分类号
0702 ;
摘要
Object detection is a significant activity in computer vision, and various approaches have been proposed to detect varied objects using deep neural networks (DNNs). However, because DNNs are computation-intensive, it is difficult to apply them to resource-constrained devices. Here, we propose an on-device object detection method using domain-specific models. In the proposed method, we define object of interest (OOI) groups that contain objects with a high frequency of appearance in specific domains. Compared with the existing DNN model, the layers of the domain-specific models are shallower and narrower, reducing the number of trainable parameters; thus, speeding up the object detection. To ensure a lightweight network design, we combine various network structures to obtain the best-performing lightweight detection model. The experimental results reveal that the size of the proposed lightweight model is 21.7 MB, which is 91.35% and 36.98% smaller than those of YOLOv3-SPP and Tiny-YOLO, respectively. The f-measure achieved on the MS COCO 2017 dataset were 18.3%, 11.9% and 20.3% higher than those of YOLOv3-SPP, Tiny-YOLO and YOLO-Nano, respectively. The results demonstrated that the lightweight model achieved higher efficiency and better performance on non-GPU devices, such as mobile devices and embedded boards, than conventional models.
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页数:16
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