中国安全科学学报 ›› 2023, Vol. 33 ›› Issue (S1): 81-84.doi: 10.16265/j.cnki.issn1003-3033.2023.S1.5006

• 安全工程技术 • 上一篇    下一篇

语义分割的传送带跑偏视频检测算法

赵光辉(), 赵鹏, 胡金良   

  1. 国能准能集团有限责任公司, 内蒙古 鄂尔多斯 010300
  • 收稿日期:2023-03-15 修回日期:2023-05-11 出版日期:2023-06-30
  • 作者简介:

    赵光辉 (1975—),男,内蒙古鄂尔多斯人,硕士,高级工程师,主要从事机电技术研究及管理工作。E-mail:

    赵鹏 高级工程师

    胡金良 高级工程师

  • 基金资助:
    国家自然科学基金资助(51208282)

Video detection algorithm based on semantic segmentation for conveyor belt deviation

ZHAO Guanghui(), ZHAO Peng, HU Jinliang   

  1. Guoneng Zhunneng Group Co., Ltd., Ordos Inner Mongolia 010300, China
  • Received:2023-03-15 Revised:2023-05-11 Published:2023-06-30

摘要:

为避免在选煤厂进行作业分类时,因矿道传送带跑偏而造成严重的生产事故问题,提出一种融合高斯边缘投影的语义分割视频检测算法,来作为实时监测传送带跑偏的解决方案。首先,通过高斯滤波预处理算法,减少视频图像噪点对神经网络的影响;然后,构建融合高斯投影的径向基神经网络结构,增强图像的边缘信息,并将高斯投影融合至网络中以实现语义分割;最后,在保证识别检测效果的同时尽可能降低网络的计算消耗。结果表明:通过验证分析选煤厂矿道工作视频的试验场景,该算法能够准确识别检测传送带位置,进而实现传送带跑偏警告;同时算法在实现有效功能的同时,较典型的语义分割深度学习模型计算资源消耗更少,计算效率更高。

关键词: 语义分割, 传送带跑偏, 高斯滤波, 视频检测, 深度学习

Abstract:

In order to avoid the problem of serious production accidents caused by the conveyor belt running off the mine road during the sorting operation in the coal processing plant, a video detection algorithm fusing Gaussian edge projection based on semantic segmentation was proposed, which monitored the conveyor belt deviation in real time. First, the algorithm was preprocessed by Gaussian filtering to reduce the influence of video image noise on the neural network. Then, a radial basis neural network structure with fused Gaussian projection was constructed to enhance the edge information of the image, and the Gaussian projection was fused into the network to realize semantic segmentation, which ensured the recognition and detection effect while reducing the computational consumption of the network as much as possible. The results show that the algorithm can accurately recognize and detect the conveyor belt and then realize the conveyor belt deviation warning through the experimental scene verification and analysis of the working video of the mine road in the coal processing plant. Meanwhile, the algorithm consumes fewer computational resources and has higher computational efficiency than the typical deep learning model of semantic segmentation while realizing the effective function.

Key words: semantic segmentation, conveyor belt deviation, Gaussian filter, video detection, deep learning