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金属矿山 ›› 2026, Vol. 55 ›› Issue (1): 279-284.

• 地质与测量 • 上一篇    

融合生成对抗网络和循环神经网络的矿山遥感图像目标检测#br#

游绍彦1 万 强2 郭 琦1   

  1. 1. 长治职业技术学院能源与安全工程系,山西 长治 046000;2. 华南理工大学计算机科学与工程学院,广东 广州 510641
  • 出版日期:2026-01-15 发布日期:2026-02-24
  • 通讯作者: 万 强(1987—),男,副教授,硕士。
  • 作者简介:游绍彦(1971—),男,讲师,硕士。
  • 基金资助:
    广东省自然科学基金项目(编号:2022A1515140120)。

Mine Remote Sensing Image Object Detection Based on the Fusion of Generative Adversarial Network and Recurrent Neural Network#br#

YOU Shaoyan1 WAN Qiang2 GUO Qi1   

  1. 1. Department of Energy and Safety Engineering,Changzhi Vocational and Technical College,Changzhi 046000,China;
    2. School of Computer Science & Engineering,South China University of Technology,Guangzhou 510641,China
  • Online:2026-01-15 Published:2026-02-24

摘要: 针对传统矿山遥感图像目标检测中目标尺度变化大、特征提取不充分、检测精度不高等问题,提出了一
种融合生成对抗网络( Generative Adversarial Network,GAN)和循环神经网络(Recurrent Neural Network,RNN)的矿山
遥感图像目标检测方法。该方法首先利用改进的GAN 生成高质量的矿山目标样本,扩充训练数据集;再设计双向
RNN(Bi-RNN)网络提取时序特征,并与卷积神经网络提取的空间特征进行融合;最后采用Faster R-CNN 检测框架实
现目标检测。在包含露天采场、排土场、尾矿库等典型矿山目标的试验数据集上验证了该算法性能。结果表明:该法
平均检测精度达到92. 7%,比Faster R-CNN 提高了4. 3 个百分点;对小目标的检测召回率提升明显,由85. 6%提升至
91. 2%;检测速度达到115 帧/ s,为矿山安全监测和环境评估提供了新的技术手段。

关键词: 矿山遥感图像 目标检测 生成对抗网络 循环神经网络

Abstract: To address the problems of large target scale variations,insufficient feature extraction,and low detection accuracy
in traditional remote sensing image target detection for mines,a method for mine remote sensing image target detection that
integrates Generative Adversarial Network (GAN) and Recurrent Neural Network (RNN) is proposed. This method first uses
an improved GAN to generate high-quality mine target samples to expand the training dataset. Then,a bidirectional RNN (Bi-
RNN) network is designed to extract temporal features,which are fused with spatial features extracted by a convolutional neural
network. Finally,the Faster R-CNN detection framework is adopted to achieve target detection. The performance of the algorithm
was verified on a test dataset containing typical mine targets such as open-pit mining areas,waste dumps and tailings
ponds. The results show that the average detection accuracy of this method reaches 92. 7%,which is 4. 3 percentage points
higher than that of Faster R-CNN. The recall rate for small targets has significantly improved from 85. 6% to 91. 2%. The detection
speed reaches 115 frames per second,providing a new technical means for mine safety monitoring and environmental assessment.

Key words: mine remote sensing image,target detection,generative adversarial network,recurrent neural network

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