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Automatic Detection of Injection and Press Mold Parts on 2D Drawing Using Deep Neural Network

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Abstract
This paper proposes a method to automatically detect the key feature parts in a CAD of commercial TV and
monitor using a deep neural network. We developed a deep learning pipeline that can detect the injection parts such as
hook, boss, undercut and press parts such as DPS, Embo-Screwless, Embo-Burring, and EMBO in the 2D CAD drawing
images. We first cropped the drawing to a specific size for the training efficiency of a deep neural network. Then, we use
Cascade R-CNN to find the position of injection and press parts and use Resnet-50 to predict the orientation of the parts.
Finally, we convert the position of the parts found through the cropped image to the position of the original image. As a
result, we obtained detection accuracy of injection and press parts with 84.1% in AP (Average Precision), 91.2% in
AR(Average Recall), 72.0% in AP, 87.0% in AR, and orientation accuracy of injection and press parts with 94.4% and
92.0%, which can facilitate the faster design in industrial product design
Author(s)
Lee, JunseokKim, JongwonPark, JumiBack, SeunghyeokBak, SeonghoLee, Kyoobin
Issued Date
2021-10-12
Type
Conference Paper
DOI
10.23919/iccas52745.2021.9649875
URI
https://scholar.gist.ac.kr/handle/local/22029
Publisher
IEEE
Citation
2021 21st International Conference on Control, Automation and Systems (ICCAS)
Conference Place
KO
Jeju, Korea, Republic of
Appears in Collections:
Department of AI Convergence > 2. Conference Papers
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