EDA-TCNet: A dual-attention enhanced network for precise point cloud segmentation in tunnel construction
Xin Peng , Mingnian Wang , Bingxu Huang , Honglin Shen , Hao Zhong
Underground Space ›› 2025, Vol. 25 ›› Issue (6) : 350 -367.
To enhance the accuracy of point cloud semantic segmentation in tunnel face construction areas, this study proposes a novel model named enhanced dual attention-tunnel construction net (EDA-TCNet). EDA-TCNet introduces a 3D enhanced dual attention module (EDAM), which employs a parallel channel and spatial attention mechanism to strengthen the model’s focus on critical features. Additionally, a loss function named CELDAM is designed, combining cross-entropy loss and label-distribution-aware margin loss to effectively address data imbalance issues and improve the prediction capability for minority classes. Experiments conducted on three ongoing tunnel projects in Northwest China demonstrate that EDA-TCNet achieves a mean intersection over union (mIoU) of 0.8816 and an overall accuracy (OA) of 0.9406 on the test set. Compared to PointNet, PointNet++, DGCNN, and PointMLP, EDA-TCNet improves mIoU by 18.20%, 3.00%, 8.61%, and 32.23%, and OA by 15.98%, 1.74%, 5.48%, and 22.38%, respectively. Furthermore, the optimization of the balancing coefficient μ in CELDAM further enhances the model’s generalization capability. In conclusion, EDA-TCNet demonstrates exceptional performance in point cloud semantic segmentation tasks for tunnel construction areas and shows great potential for engineering applications.
Point cloud / Semantic segmentation / Deep learning / Enhanced dual attention / Tunnel construction
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| [4] |
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| [5] |
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| [6] |
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| [7] |
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| [8] |
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| [9] |
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| [10] |
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| [11] |
|
| [12] |
|
| [13] |
|
| [14] |
|
| [15] |
|
| [16] |
|
| [17] |
|
| [18] |
|
| [19] |
|
| [20] |
|
| [21] |
|
| [22] |
|
| [23] |
|
| [24] |
|
| [25] |
|
| [26] |
|
| [27] |
|
| [28] |
|
| [29] |
|
| [30] |
|
| [31] |
|
| [32] |
|
| [33] |
|
| [34] |
|
| [35] |
|
| [36] |
|
| [37] |
|
| [38] |
|
| [39] |
|
| [40] |
|
| [41] |
|
| [42] |
|
| [43] |
|
| [44] |
|
| [45] |
|
| [46] |
|
| [47] |
|
| [48] |
|
| [49] |
|
| [50] |
|
| [51] |
|
| [52] |
|
| [53] |
|
| [54] |
|
| [55] |
|
| [56] |
|
| [57] |
|
| [58] |
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