Accurate Edge Localization of Complex Workpiece Based on Coarse-to-Fine Principle

Panjie Zhang, Hongyan Wang, W. Cheng, Jinping Li
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Abstract

The accurate measurement of the heterogeneous surfaces of the complex workpiece is very important. Therefore, it has become a hotspot issue to measure the dimensions of the complex workpiece with high efficiency and accuracy nowadays. Taking the piston as an example, we measure the dimensions of several surfaces by using the approaches of digital image processing. The key point of the measurement is to determine the precise edge of these surfaces. However, in general, it is not an easy job to obtain the accurate edge due to the reflected light of the surface. Otsu binarization is a popular method in computing the surface edge. However, the Otsu binarization does not function well in many cases. After carefully analyzing the advantages and disadvantages of the Otsu method, we put forward a novel technique to obtain the precise edge by employing the coarse-to-fine principle. Firstly, we preprocess the image; including converting the image to a grayscale image and stretching the image gray level. Secondly, we use the sub-pixel interpolation to magnify the processed image by 1.3 times. Thirdly, we employ the Otsu method to perform the binarization operation on the magnified image, perform horizontal histogram projection and vertical histogram projection, respectively. Fourthly, estimating the radius length and the circle central coordinates. Fifthly, we estimate peripheral points of the top circle according to the radius length and the circle central coordinates, and take this point as the center and get the appropriate proportion rectangle according to the radius length. Finally, we intercept the image in the rectangle and perform the local binarization operation. The method fully takes into account the situation that we cannot get the accurate edge through global binarization for severe reflection of the workpiece which causes the uneven gray-level distribution. Our method improves the detection accuracy of a single pixel by 0.036 millimeters when the image resolution is not high.
基于粗到精原理的复杂工件边缘精确定位
复杂工件非均匀表面的精确测量是非常重要的。因此,如何高效、准确地测量复杂工件的尺寸已成为当前研究的热点问题。以活塞为例,采用数字图像处理的方法测量了几种表面的尺寸。测量的关键是确定这些表面的精确边缘。然而,通常情况下,由于表面的反射光,获得精确的边缘并不容易。Otsu二值化是计算曲面边缘的一种常用方法。然而,在许多情况下,Otsu二值化并不能很好地发挥作用。在仔细分析了Otsu方法的优缺点后,我们提出了一种利用粗变细原理获得精确边缘的新方法。首先,对图像进行预处理;包括将图像转换为灰度图像和拉伸图像灰度级。其次,利用亚像素插值将处理后的图像放大1.3倍。第三,采用Otsu方法对放大后的图像进行二值化操作,分别进行水平直方图投影和垂直直方图投影。第四,估算半径长度和圆心坐标。第五,根据半径长度和圆心坐标估计出顶部圆的外围点,并以此点为圆心,根据半径长度得到合适的比例矩形。最后,我们在矩形中截取图像并进行局部二值化操作。该方法充分考虑了工件反射强烈,无法通过全局二值化得到精确边缘,从而导致灰度分布不均匀的情况。在图像分辨率不高的情况下,我们的方法将单个像素的检测精度提高了0.036毫米。
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