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黄心怡, 张勇. 基于RGBD融合图像及改进U-net的轨道区域分割方法研究[J]. 铁路计算机应用, 2023, 32(7): 1-6. DOI: 10.3969/j.issn.1005-8451.2023.07.01
引用本文: 黄心怡, 张勇. 基于RGBD融合图像及改进U-net的轨道区域分割方法研究[J]. 铁路计算机应用, 2023, 32(7): 1-6. DOI: 10.3969/j.issn.1005-8451.2023.07.01
HUANG Xinyi, ZHANG Yong. Track region segmentation method based on RGBD fusion image and improved U-net[J]. Railway Computer Application, 2023, 32(7): 1-6. DOI: 10.3969/j.issn.1005-8451.2023.07.01
Citation: HUANG Xinyi, ZHANG Yong. Track region segmentation method based on RGBD fusion image and improved U-net[J]. Railway Computer Application, 2023, 32(7): 1-6. DOI: 10.3969/j.issn.1005-8451.2023.07.01

基于RGBD融合图像及改进U-net的轨道区域分割方法研究

Track region segmentation method based on RGBD fusion image and improved U-net

  • 摘要: 传统的轨道分割方法无法满足列车运行时对轨道区域感知的实时性和准确性要求。文章研究基于RGBD融合图像及改进U-net的轨道区域分割方法,将RGB图像与深度图像进行融合,获得RGBD融合图像,将其输入到改进后的U-net中,建立轨道区域分割模型。经实验验证,与仅输入RGB图像的U-net模型相比,轨道区域分割模型的F1 值提升了约0.28,平均交并比提升了约0.1,像素准确率提升了0.0026,证明其对轨道区域分割的精确度更高,同时,验证了该模型的网络性能也得到了显著提升。

     

    Abstract: Traditional track segmentation methods cannot meet the real-time and accurate requirements for perception of track areas during train operation. This paper studied a track region segmentation method based on RGBD fusion images and improved U-net. The RGB images were fused with depth images to obtain RGBD fusion images, which were input into the improved U-net to establish a track region segmentation model. After experimental verification, compared with the U-net model that only inputs RGB images, the F1 value of the track region segmentation model has been improved by about 0.28, the Mean Intersection over Union (MIoU) has been improved by about 0.1, and the Pixel Accuracy (PA) has been improved by 0.0026, proving its higher accuracy in track region segmentation. At the same time, it has been verified that the network performance of the model has also been significantly improved.

     

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