Studies on Image Stitching Algorithms in Machine Vision Inspection of Solar Panel

Yongjian Zhu, Guangwen Qi
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引用次数: 3

Abstract

Image stitching is an important technology in machine vision inspection whose algorithms focus on the detection and match of feature points. For the solar panel images achieved by machine vision, it’s found that the available image stitching algorithms failed to detect enough valid feature points, which led to a large number of incorrect matching points. Here, we improve an algorithm to locate feature points and find dense match points. The proposed algorithm is based on SIFT. The improved algorithm (I-SIFT) can locate the position of feature points in every solar panel images, reducing the effect of invalid feature points on the experiment. Euclidean distance is used to preliminarily ensure the matching points, and then the relative horizontal position of every matching points is used to eliminate the mismatching points caused by the space similarity of the feature points, so that the matching accuracy is improved. Then the improved algorithm is used in the traditional Harris, SIFT and SURF stitching algorithm. The experimental results show that the success rate of I-SIFT algorithm can exceed 95% and the computation time has decreased by nearly 95% than that of the traditional algorithm. In conclusion, the improved algorithm implements accurately and rapidly stitching for solar panel images.
太阳能电池板机器视觉检测中图像拼接算法研究
图像拼接是机器视觉检测中的一项重要技术,其算法关注的是特征点的检测和匹配。对于机器视觉获得的太阳能电池板图像,发现现有的图像拼接算法无法检测到足够多的有效特征点,从而导致大量不正确的匹配点。在这里,我们改进了一种定位特征点和寻找密集匹配点的算法。该算法是基于SIFT的。改进的I-SIFT算法可以对每张太阳能电池板图像中的特征点进行定位,减少了无效特征点对实验的影响。利用欧几里得距离对匹配点进行初步保证,然后利用每个匹配点的相对水平位置来消除特征点空间相似性造成的不匹配点,从而提高匹配精度。然后将改进算法应用于传统的Harris、SIFT和SURF拼接算法中。实验结果表明,I-SIFT算法的成功率可以超过95%,计算时间比传统算法减少了近95%。总之,改进算法实现了太阳能电池板图像的准确、快速拼接。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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