Open Access
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volume 26 issue 10 pages 878

RTINet: A Lightweight and High-Performance Railway Turnout Identification Network Based on Semantic Segmentation

Publication typeJournal Article
Publication date2024-10-19
scimago Q2
wos Q2
SJR0.524
CiteScore5.2
Impact factor2.0
ISSN10994300
PubMed ID:  39451954
Abstract

To lighten the workload of train drivers and enhance railway transportation safety, a novel and intelligent method for railway turnout identification is investigated based on semantic segmentation. More specifically, a railway turnout scene perception (RTSP) dataset is constructed and annotated manually in this paper, wherein the innovative concept of side rails is introduced as part of the labeling process. After that, based on the work of Deeplabv3+, combined with a lightweight design and an attention mechanism, a railway turnout identification network (RTINet) is proposed. Firstly, in consideration of the need for rapid response in the deployment of the identification model on high-speed trains, this paper selects the MobileNetV2 network, renowned for its suitability for lightweight deployment, as the backbone of the RTINet model. Secondly, to reduce the computational load of the model while ensuring accuracy, depth-separable convolutions are employed to replace the standard convolutions within the network architecture. Thirdly, the bottleneck attention module (BAM) is integrated into the model to enhance position and feature information perception, bolster the robustness and quality of the segmentation masks generated, and ensure that the outcomes are characterized by precision and reliability. Finally, to address the issue of foreground and background imbalance in turnout recognition, the Dice loss function is incorporated into the network training procedure. Both the quantitative and qualitative experimental results demonstrate that the proposed method is feasible for railway turnout identification, and it outperformed the compared baseline models. In particular, the RTINet was able to achieve a remarkable mIoU of 85.94%, coupled with an inference speed of 78 fps on the customized dataset. Furthermore, the effectiveness of each optimized component of the proposed RTINet is verified by an additional ablation study.

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GOST |
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GOST Copy
WEI D. et al. RTINet: A Lightweight and High-Performance Railway Turnout Identification Network Based on Semantic Segmentation // Entropy. 2024. Vol. 26. No. 10. p. 878.
GOST all authors (up to 50) Copy
WEI D., Zhang W., LI H., Jiang Y., Xian Y., Deng J. RTINet: A Lightweight and High-Performance Railway Turnout Identification Network Based on Semantic Segmentation // Entropy. 2024. Vol. 26. No. 10. p. 878.
RIS |
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RIS Copy
TY - JOUR
DO - 10.3390/e26100878
UR - https://www.mdpi.com/1099-4300/26/10/878
TI - RTINet: A Lightweight and High-Performance Railway Turnout Identification Network Based on Semantic Segmentation
T2 - Entropy
AU - WEI, DEHUA
AU - Zhang, Wenjun
AU - LI, HAIJUN
AU - Jiang, Yuxing
AU - Xian, Yong
AU - Deng, Jiangli
PY - 2024
DA - 2024/10/19
PB - MDPI
SP - 878
IS - 10
VL - 26
PMID - 39451954
SN - 1099-4300
ER -
BibTex |
Cite this
BibTex (up to 50 authors) Copy
@article{2024_WEI,
author = {DEHUA WEI and Wenjun Zhang and HAIJUN LI and Yuxing Jiang and Yong Xian and Jiangli Deng},
title = {RTINet: A Lightweight and High-Performance Railway Turnout Identification Network Based on Semantic Segmentation},
journal = {Entropy},
year = {2024},
volume = {26},
publisher = {MDPI},
month = {oct},
url = {https://www.mdpi.com/1099-4300/26/10/878},
number = {10},
pages = {878},
doi = {10.3390/e26100878}
}
MLA
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MLA Copy
WEI, DEHUA, et al. “RTINet: A Lightweight and High-Performance Railway Turnout Identification Network Based on Semantic Segmentation.” Entropy, vol. 26, no. 10, Oct. 2024, p. 878. https://www.mdpi.com/1099-4300/26/10/878.