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现代矿业 ›› 2026, Vol. 42 ›› Issue (02): 1-7.

• 智能矿山 •    下一篇

基于多尺度特征增强的巷道围岩裂隙轻量化分割方法研究

李 进1,2 李志国3 杨 敏1 全中学1   

  1. 1. 湖北神农磷业科技股份有限公司;2. 湖北联投矿业有限公司; 3. 武汉工程大学资源与安全工程学院
  • 出版日期:2026-02-25 发布日期:2026-03-10

Research on Lightweight Segmentation Method for Roadway Surrounding Rock Fractures Based on Multi-scale Feature Enhancement

  1. 1. Hubei Shennong Phosphorus Industry Technology Co.,Ltd.; 2. Hubei United Investment Mining Co., Ltd.; 3. School of Resources & Safety Engineering,Wuhan Institute of Technology
  • Online:2026-02-25 Published:2026-03-10

摘要: 为解决传统 DeepLabv3+模型在巷道围岩裂隙检测中存在的计算冗余、小目标丢失及 背景干扰敏感问题,提出基于多尺度特征增强的轻量化协同语义分割方法及模型。以寨湾磷矿 9 处开采区域为研究对象,构建含 540 张样本的高分辨率裂隙数据集(裂隙像素占比 2.7%~4.1%)。 模型优化核心:以 MobileNetV2作为主干网络,实现 83% 参数量压缩;重构尺度特征提取模块,ASPP 模块膨胀率为[2,3,7](无公因数设计),增强小目标感受野;在 ASPP 后嵌入 CBAM 双维度注意力 机制强化特征定位;引入 Dice Loss-Focal Loss 组合损失函数(λ=0.4),解决极端样本不均衡问题。 设计 6 组对比实验,验证模型有效性,结果表明:最优模型(M5)mIoU 达 74.2%,较基线提升 4.73 个 百分点,参数量仅 3.4 M(约为 Xception 的 14.8%)。工程验证表明,模型提取的裂隙倾角、间距等参 数与现场人工调查结果偏差小于 8%,可精准支撑寨湾磷矿岩体质量分级,满足透明地质模型构建 相关裂隙参数需求。该模型实现了裂隙分割精度与轻量化的协同优化,可部署于嵌入式巡检设 备,为矿山工程地质调查、地质灾害预警提供可靠技术支撑,其设计思路可为同类极端样本分割任 务提供参考。

关键词: 巷道围岩裂隙, 轻量化语义分割, 多尺度特征增强, 注意力机制, 智能检测

Abstract: To address the problems of computational redundancy,small target loss,and sensitivity to background interference in the traditional DeepLabv3+ model for roadway surrounding rock fracture de⁃ tection,a lightweight collaborative semantic segmentation method based on multi-scale feature enhance⁃ ment is proposed. Taking 9 mining areas of Zhaiwan Phosphate Mine as the research object,a high-resolu⁃ tion fracture dataset containing 540 samples was constructed(the fracture pixel proportion ranges from 2.7% to 4.1%). The core of the model optimization includes four aspects: adopting MobileNetV2 as the backbone network to achieve 83% parameter compression; reconstructing the dilation rates of the atrous spatial pyramid pooling(ASPP)module(a scale feature extraction module)into[2,3,7](coprime de⁃ sign)to enhance the receptive field of small targets; embedding the convolutional block attention module (CBAM)dual-dimensional attention mechanism after ASPP to strengthen feature localization; and introduc⁃ ing the Dice Loss-Focal Loss combined loss function(λ=0.4)to solve the problem of extreme sample imbal⁃ance. Six groups of comparative experiments were designed to verify the effectiveness of the model. The re⁃
sults show that the optimal model(M5)achieves a mean Intersection over Union(mIoU)of 74.2%,which
is 4.73 percentage points higher than that of the baseline model,and its parameter count is only 3.4 M
(about 14.8% of that of Xception). Engineering experiment verification shows that the deviation between
the fracture parameters(such as dip angle and spacing)extracted by the model and the on-site manual
survey results is less than 8%,which can accurately support the construction of the transparent geological
model and rock mass quality classification of Zhaiwan Phosphorus Mine.This model realizes the coordinat⁃
ed optimization of fracture segmentation accuracy and lightweight performance,and can be deployed on
embedded inspection equipment. It provides reliable technical support for mine engineering geological sur⁃
veys and geological disaster early warning,and its design idea can serve as a reference for similar extreme
sample segmentation tasks.

Key words: roadway surrounding rock fractures, lightweight semantic segmentation, multi-scale fea? ture enhancement, attention mechanism, intelligent detection