基于Gabor小波的四平无铅(QFN)器件故障检测

Tay Wai Lun, N. Yahya
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引用次数: 1

摘要

采用图像处理算法的计算机视觉检测系统是许多制造企业常用的一种质量控制方法。由于制造业由不同的产品组成,因此开发了各种图像处理算法以适应不同类型的产品。在传统的视觉检测系统中,需要手动配置检测算法。本文提出了一种基于Gabor小波的QFN故障检测方法。该方法利用Gabor小波将图像分解成不同的尺度和方向。通过卡方距离计算,通过计算测试图像与训练数据库的不相似度来区分QFN器件的物理质量。利用一台30万像素单色工业智能视觉相机获得的64张QFN图像样本对该算法进行了评估,准确率达到98.46%,平均每张图像处理时间为0.457秒。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Quad Flat No-Lead (QFN) device faulty detection using Gabor wavelets
Computer vision inspection system using image processing algorithms are commonly used by many manufacturing companies as a method of quality control. Since manufacturing industries comprise of different products, various image processing algorithms are developed to suit different type of products. In conventional vision inspection system, manual configuration of the inspection algorithms is required. In this paper, we proposed a QFN faulty detection using Gabor wavelets. The proposed technique uses Gabor wavelets to decompose the image into distinctive scales and orientations. Through chi-square distance computation, the physical quality of Quad Flat No-Lead (QFN) device can be distinguished by computing the dissimilarity of the test image with the trained database. The algorithm is evaluated using 64 samples of QFN images obtained from a 0.3 megapixel monochromatic industrial smart vision camera and it achieved 98.46% accuracy with the average processing time of 0.457 seconds per image.
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