Optical Instruments, Volume. 45, Issue 2, 46(2023)
An image semantic segmentation algorithm with a two-branch structure
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Bing WANG, Qi HU, Yalin BIAN. An image semantic segmentation algorithm with a two-branch structure[J]. Optical Instruments, 2023, 45(2): 46
Category: DESIGN AND RESEARCH
Received: Apr. 18, 2022
Accepted: --
Published Online: Jun. 12, 2023
The Author Email: HU Qi (hq_0519@163.com)