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Comput Intell Neurosci


Title:Semisupervised Semantic Segmentation with Mutual Correction Learning
Author(s):Xiao Y; Dong J; Zhou D; Yi P; Liu R; Wei X;
Address:"Key Laboratory of Advanced Design and Intelligent Computing, Ministry of Education, Dalian University, Dalian 116622, China. School of Computer Science and Technology, Dalian University of Technology, Dalian 116024, China"
Journal Title:Comput Intell Neurosci
Year:2022
Volume:20221003
Issue:
Page Number:8653692 -
DOI: 10.1155/2022/8653692
ISSN/ISBN:1687-5273 (Electronic) 1687-5265 (Print)
Abstract:"The semisupervised semantic segmentation method uses unlabeled data to effectively reduce the required labeled data, and the pseudo supervision performance is greatly influenced by pseudo labels. Therefore, we propose a semisupervised semantic segmentation method based on mutual correction learning, which effectively corrects the wrong convergence direction of pseudo supervision. The well-calibrated segmentation confidence maps are generated through the multiscale feature fusion attention mechanism module. More importantly, using internal knowledge, a mutual correction mechanism based on consistency regularization is proposed to correct the convergence direction of pseudo labels during cross pseudo supervision. The multiscale feature fusion attention mechanism module and mutual correction learning improve the accuracy of the entire learning process. Experiments show that the MIoU (mean intersection over union) reaches 75.32%, 77.80%, 78.95%, and 79.16% using 1/16, 1/8, 1/4, and 1/2 labeled data on PASCAL VOC 2012. The results show that the new approach achieves an advanced level"
Keywords:"Algorithms Neural Networks, Computer *Pattern Recognition, Automated/methods Semantics *Volatile Organic Compounds;"
Notes:"MedlineXiao, Yifan Dong, Jing Zhou, Dongsheng Yi, Pengfei Liu, Rui Wei, Xiaopeng eng 2022/10/14 Comput Intell Neurosci. 2022 Oct 3; 2022:8653692. doi: 10.1155/2022/8653692. eCollection 2022"

 
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