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선화 자동채색모델 서빙을 위한 서비스 플랫폼Service Platform for Serving Line-art Automatic Colorization Model

Other Titles
Service Platform for Serving Line-art Automatic Colorization Model
Authors
이성진이영섭
Issue Date
2022
Publisher
대한전기학회
Keywords
Machine Learning; Generative Adversarial Network; Line Arts Colorization; Image Generation
Citation
전기학회 논문지 P권, v.71, no.1, pp.41 - 47
Indexed
KCI
Journal Title
전기학회 논문지 P권
Volume
71
Number
1
Start Page
41
End Page
47
URI
https://scholarworks.bwise.kr/gnu/handle/sw.gnu/1856
ISSN
1229-800x
Abstract
In this paper, we propose a service platform that can test and serve automatic colorization neural network models for labor-intensive colorization tasks using Generative Adversarial Networks (GANs). This service platform uses a model using a generator using two generators, a line loss function to increase the line data generalization ability of the model in the learning process, and data augmentation techniques to solve the line overfitting problem. This service efficiently supports inference on the CPU using ONNX (Open Neural Network Exchange) and serves as an inference server with a higher-order function-based pre-processor to support input/output of many sizes and a service front end for user and hint input. To test the inference performance of ONNX and torchscript. inference times were compared. Inference using the proposed ONNX averaged 0.4040, which was more than 5 times faster than 2.2683 using torchscript, enabling efficient inference. To test the inference performance of ONNX and torchscript, we checked inference times were compared. Inference using the proposed ONNX averaged 0.4040sec, which was more than 5 times faster than 2.2683sec using torchscript, enabling efficient inference.
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공과대학 > Department of Aerospace and Software Engineering > Journal Articles

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Lee, Seong Jin
공과대학 (항공우주및소프트웨어공학부)
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