干粮生产线用x射线成像实时检测异物

J. Kwon, Jong-Min Lee, Whoiyul Kim
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引用次数: 43

摘要

提出了一种基于一类分类方法的不规则纹理包装食品异物检测方法。为了使用x射线图像进行可靠的检测,通过降低食品基质的纹理强度来增强图像中异物的对比度。由于无法预先知道异物的类型和大小,我们采用一类分类方法从增强图像中区分异物。在方便面、通心面、意大利面等包装干燥食品中植入了各种类型和大小的异物。在实时处理中,利用掩模运算的最大最小差值对识别特征进行处理。结果表明,在2.4 GHz PC上,对玻璃、陶瓷、金属等异物的检出率在98%以上,无误报,处理时间在180 ms以下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-time detection of foreign objects using X-ray imaging for dry food manufacturing line
We propose a method of detecting foreign objects in packaged foods with irregular texture patterns using a one-class classification method. For reliable detection using X-ray images, the contrast of foreign objects in the image is enhanced by reducing the texture intensity of the food substrate. Since the type and size of the foreign objects cannot be known in advance, we employ a one-class classification method to discriminate foreign objects from enhanced images. Foreign objects of diverse types and sizes were implanted in some packaged dry foods such as instant ramen, macaroni, and spaghetti. For real-time processing the max-min difference of the mask operation is utilized for features of discrimination. The results showed that the detection rate for foreign objects such as glass, ceramic, and metal was above 98% without false positives and the processing time was under 180 ms on a 2.4 GHz PC.
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