Electro-Optic Technology Application, Volume. 35, Issue 6, 55(2020)
Horizon Detection Based on Semantic Segmentation of Infrared Images
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SUN Yu-xin, LI Yu-hai, WANG Kai. Horizon Detection Based on Semantic Segmentation of Infrared Images[J]. Electro-Optic Technology Application, 2020, 35(6): 55