Abstract
AbstractThe semantic information can ensure better pixel classification, and the spatial information of the low-level feature map can ensure the detailed location of the pixels. However, this part of spatial information is often ignored in capturing semantic information, it is a huge loss for the spatial location of the image semantic category itself. To better alleviate this problem, we propose a Long and Short-Range Relevance Context Network. Specifically, we first construct a Long-Range Relevance Context Module to capture the global semantic context of the high-level feature and the ignored local spatial context information. At the same time, we build a Short-Range Relevance Context Module to capture the piecewise spatial context information in each stage of the low-level features in the form of jump connections. The whole network adopts a coding and decoding structure to better improve the segmentation results. Finally, we conduct a large number of experiments on three semantic segmentation datasets (PASCAL VOC2012, Cityscapes and ADE20K datasets) to verify the effectiveness of the network.
Publisher
Springer Science and Business Media LLC
Subject
Computational Mathematics,Engineering (miscellaneous),Information Systems,Artificial Intelligence
Reference61 articles.
1. Liu Z, Tong L, Chen L, Jiang Z, Zhou F, Zhang Q, Zhang X, Jin Y, Zhou H (2022) Deep learning based brain tumor segmentation: a survey. Complex Intell Syst 9:1–26
2. Li P, Liu Y, Cui Z, Yang F, Zhao Y, Lian C, Gao C (2022) Semantic graph attention with explicit anatomical association modeling for tooth segmentation from cbct images. IEEE Trans Med Imaging 41:3116–3127
3. Chen Y, Sun Y, Lv J, Jia B (2021) Huang X End-to-end heart sound segmentation using deep convolutional recurrent network. Complex Intell Syst 7(4):2103–2117
4. You H, Yu L, Tian S (2022) Cai W Dr-net: dual-rotation network with feature map enhancement for medical image segmentation. Complex Intell Syst 8(1):611–623
5. Cai Y, Dai L, Wang H, Li Z (2021) Multi-target pan-class intrinsic relevance driven model for improving semantic segmentation in autonomous driving. IEEE Trans Image Process 30:9069–9084
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