高级检索

    基于机器视觉的浮空器囊体材料表面缺陷检测系统

    Surface Defect Detection System of Aerostat Envelope Materials Based on Machine Vision

    • 摘要: 在复杂气象环境下,浮空器囊体作为整机系统的直接受压面,其表面必须平整光滑,无褶皱损伤,以将其与空气的摩擦力降至最小。文中基于机器视觉对浮空器囊体材料表面缺陷检测进行系统设计。首先为了降低背景灰度变化对缺陷检测的影响,研究了一种同时具有噪声滤除与图像增强功能的预处理算法;其次利用图像二值化和中值滤波技术实现特征图像的预处理,并结合纹理特征提取技术(基于灰度共生矩阵)对囊体材料表面不同缺陷图像的特征参数进行仿真提取,通过分析不同特征参数,判断囊体材料的表面缺陷类型。该系统对采集到的200个囊体材料表面缺陷样本的分析表明,所用方法能识别浮空器囊体材料93.6%的表面缺陷,识别内容包括缺陷的类型、位置、大小等,并根据缺陷的类型加盖不同的标记。该系统具有较高的识别率和准确率,可对浮空器囊体材料表面缺陷进行快速检测。

       

      Abstract: Under complex meteorological conditions, as the direct pressure layer on the aerostat surface, the surface of aerostat envelope is required to be smooth and have no scratch in order to minimize the friction with air. In this paper the surface defect detection system of aerostat envelope material is designed based on machine vision. Firstly, in order to reduce the effect of background gray changes on defect detection, a preprocessing algorithm with noise filtering and image enhancement functions is studied. Secondly, the image binarization and median filtering are used to realize the feature image preprocessing and then characteristic parameters of different defect type images of envelope material is extracted by simulation experiments, combined with the texture feature extraction technology (based on gray co-occurrence matrix). The envelope material surface defect types are judged by analysing different characteristic parameters. The analysis result of 200 envelope material defect samples shows that this method can accurately identify the size, location and type of the typical envelope material surface defects of 93.6%. This system has high recognition rate and accuracy and can realize rapid detection of surface defects of aerostat envelope material.

       

    /

    返回文章
    返回