吉林大学学报(信息科学版) ›› 2026, Vol. 44 ›› Issue (3): 700-705.

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视觉图像增强下的物料传送带目标自动识别算法

王 霞,陈晓林,吴玲玲,李建军   

  1. 泰山科学技术研究院泰安市创新发展研究院,山东泰安271001
  • 收稿日期:2024-02-18 出版日期:2026-06-02 发布日期:2026-06-02
  • 通讯作者: 陈晓林(1987— ), 女, 山东肥城人,泰山科学技术研究院助理研究员, 主要从事食品科学与工程、 科技咨询与科技管理服务研究, (Tel)86- 13805382326(E-mail)chenxiainlanse@126. com。 E-mail:chenxiainlanse@126. com
  • 作者简介:王霞(1979— ), 女, 山东泰安人, 泰山科学技术研究院副研究员, 主要从事技术推广应用、 计算机与科学技术、 智能 信息化和科技情报信息技术研究,(Tel)86-13615480016(E-mail)58422619@ qq. com
  • 基金资助:
    泰安市科技创新发展基金资助项目(2022GX036); 科技查新对提高企业创新能力的作用研究基金资助项目(2024ZC033) 

Algorithm of Automatic Target Recognition for Material Conveyor Belt under Visual Image Enhancement

WANG Xia, CHEN Xiaolin, WU Lingling, LI Jianjun   

  1. Mount Taishan Science and Technology Research Institute, Tai’an Innovation and Development Research Institute, Tai’an 271001, China
  • Received:2024-02-18 Online:2026-06-02 Published:2026-06-02

摘要: 为准确分类物料, 提高工业产能, 提出一种视觉图像增强下的物料传送带目标自动识别算法。利用单尺度算法处理采集的视觉图像通过高斯环绕函数调整图像参数并基于色彩恒常理论恢复视觉图像最佳颜色, 保证原始色彩特性根据图像特征条件完成颜色通道索引实现物料传送带目标视觉图像增强。利用拉普拉斯算子改进图像的尺度空间确定特征像素极值点建立函数拟合识别目标的强烈边缘响应通过直方图描述像素关键点分布情况得到图像梯度特征和角度特征并通过滑动窗口确定传送物料轮廓响应值对特征进行训练完成目标自动识别。实验结果表明, 所提方法能有效识别传送带上的物料目标识别准确度高, 实用性较强。

关键词: 视觉图像, 图像增强, 物料传送带, 目标识别算法, 尺度空间, 特征提取

Abstract: To accurately classify materials and improve industrial production capacity, a visual image enhanced automatic target recognition algorithm for material conveyor belts is proposed. Using a single scale algorithm to process the collected visual images. Image parameters are adjusted through Gaussian wrapping function, and restoring the optimal color of the visual image based on color constancy theory, ensuring the original color characteristics, completing color channel indexing based on image feature conditions, and enhancing the target visual image of the material conveyor belt. The Laplace operator is used to improve the scale space of the image, determine the extreme value points of feature pixels, establish a function to fit and recognize the strong edge response of the target, describe the distribution of key points of the target pixel through a histogram, obtain image gradient features and angle features, and determine the contour response value of the transmitted material through a sliding window. The features are trained to complete automatic target recognition. The experimental results show that the proposed method can effectively identify material targets on the conveyor belt, with high recognition accuracy and strong practicality. 

Key words: visual images, image enhancement, material conveyor belt, target recognition algorithm, scale space, feature extraction

中图分类号: 

  • TP391