Sun Wei, Liu Xiaohu, Lei Zhiyong
School of Mechatronic Engineering, Xi'an Technological University, Xi'an 710021, China.
School of Mechanical Engineering, Shaanxi University of Technology, Hanzhong 723001, China.
Sensors (Basel). 2025 Apr 9;25(8):2381. doi: 10.3390/s25082381.
In order to improve the recognition ability of tunnel cracks in the UAV platform with a vision imaging system in the UAV platform with a vision imaging system, this paper proposes a tunnel crack segmentation algorithm using SPGD-and-generative adversarial network fusion. The SPGD algorithm can enhance the detail and edge information of a tunnel crack image, which improves the clarity of the tunnel crack image. The new generative adversarial network (GAN) is designed by using an improved U-Net generator and full convolutional network (FCN) discriminator to form a new network; the improved generative adversarial network can effectively segment tunnel crack images after stochastic parallel gradient descent (SPGD) algorithm processing, especially the texture feature extraction and segmentation of small tunnel cracks, which can improve the rate of recognition of tunnel cracks. Based on collected tunnel crack image data, we selected 12 typical tunnel crack images and verified the rationality and advanced nature of the proposed recognition algorithm by comparing it with other recognition methods. The results show that the recognition rate of the proposed tunnel crack recognition algorithm was significantly improved.
为了提高无人机平台中配备视觉成像系统对隧道裂缝的识别能力,本文提出了一种基于随机并行梯度下降(SPGD)与生成对抗网络融合的隧道裂缝分割算法。SPGD算法能够增强隧道裂缝图像的细节和边缘信息,提高隧道裂缝图像的清晰度。新的生成对抗网络(GAN)通过使用改进的U-Net生成器和全卷积网络(FCN)判别器设计而成,形成一个新的网络;改进后的生成对抗网络在经过随机并行梯度下降(SPGD)算法处理后,能够有效地分割隧道裂缝图像,尤其是对小尺寸隧道裂缝的纹理特征提取和分割,从而提高隧道裂缝的识别率。基于采集到的隧道裂缝图像数据,我们选取了12幅典型的隧道裂缝图像,并通过与其他识别方法对比,验证了所提识别算法的合理性和先进性。结果表明,所提隧道裂缝识别算法的识别率有显著提高。