Journal of Qufu Normal University, Volume. 51, Issue 3, 81(2025)
BGGNet:A dual-guided colorectal polyp segmentation algorithm for boundary map and global map
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ZHANG Zhongzheng, HOU Jiachuan, LIU Jianlei. BGGNet:A dual-guided colorectal polyp segmentation algorithm for boundary map and global map[J]. Journal of Qufu Normal University, 2025, 51(3): 81
Received: Sep. 15, 2023
Accepted: Aug. 25, 2025
Published Online: Aug. 25, 2025
The Author Email: LIU Jianlei (jianleiliu@qfnu.edu.cn)