An image-level weakly supervised segmentation method for No-service rail surface defect with size prior

2022 ◽  
Vol 165 ◽  
pp. 108334
Author(s):  
Defu Zhang ◽  
Kechen Song ◽  
Jing Xu ◽  
Hongwen Dong ◽  
Yunhui Yan
Author(s):  
Zaid Al-Huda ◽  
Donghai Zhai ◽  
Yan Yang ◽  
Riyadh Nazar Ali Algburi

Deep convolutional neural networks (DCNNs) trained on the pixel-level annotated images have achieved improvements in semantic segmentation. Due to the high cost of labeling training data, their applications may have great limitation. However, weakly supervised segmentation approaches can significantly reduce human labeling efforts. In this paper, we introduce a new framework to generate high-quality initial pixel-level annotations. By using a hierarchical image segmentation algorithm to predict the boundary map, we select the optimal scale of high-quality hierarchies. In the initialization step, scribble annotations and the saliency map are combined to construct a graphic model over the optimal scale segmentation. By solving the minimal cut problem, it can spread information from scribbles to unmarked regions. In the training process, the segmentation network is trained by using the initial pixel-level annotations. To iteratively optimize the segmentation, we use a graphical model to refine segmentation masks and retrain the segmentation network to get more precise pixel-level annotations. The experimental results on Pascal VOC 2012 dataset demonstrate that the proposed framework outperforms most of weakly supervised semantic segmentation methods and achieves the state-of-the-art performance, which is [Formula: see text] mIoU.


Author(s):  
Aliasghar Mortazi ◽  
Naji Khosravan ◽  
Drew A. Torigian ◽  
Sila Kurugol ◽  
Ulas Bagci

2020 ◽  
Vol 32 (15) ◽  
pp. 11229-11244
Author(s):  
Haiyong Chen ◽  
Qidi Hu ◽  
Baoshuo Zhai ◽  
He Chen ◽  
Kun Liu

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