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NTIS 바로가기한국융합학회논문지 = Journal of the Korea Convergence Society, v.12 no.10, 2021년, pp.55 - 61
신석용 (광운대학교 플라즈마바이오디스플레이학과) , 이상훈 (광운대학교 인제니움학부) , 한현호 (울산대학교 교양대학)
In this paper, we proposed a DeepLabv3+ based encoder-decoder model utilizing an attention mechanism for precise semantic segmentation. The DeepLabv3+ is a semantic segmentation method based on deep learning and is mainly used in applications such as autonomous vehicles, and infrared image analysis....
S. Y. Shin, S. H. Lee & J. S. Kim (2021) Modified DeepLabV3+ for Semantic Segmentation based on Deep Learning. The 11th International Conference on Convergence Technology. (pp.266-367). Jeju : KCS.
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