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NTIS 바로가기韓國軍事科學技術學會誌 = Journal of the KIMST, v.26 no.5, 2023년, pp.392 - 399
This research paper investigates the effectiveness of using computer graphics(CG) based synthetic data for deep learning in military vehicle detection. In particular, we explore the use of synthetic image generation techniques to train deep neural networks for object detection tasks. Our approach in...
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