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NTIS 바로가기韓國軍事科學技術學會誌 = Journal of the KIMST, v.24 no.6, 2021년, pp.591 - 601
김호성 (국방과학연구소 미사일연구원) , 현재국 (국방과학연구소 미사일연구원) , 유현정 (국방과학연구소 미사일연구원) , 김춘호 (국방과학연구소 미사일연구원) , 전현호 (한국항공우주연구원 위성우주탐사체계설계부)
Recently, infrared object detection(IOD) has been extensively studied due to the rapid growth of deep neural networks(DNN). Adversarial attacks using imperceptible perturbation can dramatically deteriorate the performance of DNN. However, most adversarial attack works are focused on visible image re...
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