In-Process Intelligent Inspection of the Specimen Using Machine Vision

Adarsh Mahor, R. Yadav
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Abstract

Quality control is a crucial component of every manufacturing process. Quality production can be done by removing the defective pieces before reaching the packaging line. Several innovative systems have proven the use of visual input and advanced computer processing to fulfill various production goals during the last several years. Product inspection technologies based on machine vision are extensively researched to increase the quality of the product and save expenses. Computer vision and Deep learning have recently evolved, resulting in powerful data analysis tools with excellent scanning quality and resilience. Authors have attempted in this direction using such a method to detect flaws present in the dimensions of the bottles, which are traveling continually on the conveyor belt. Using pictures collected from the camera, the Yolov5 object detection method is used to localize the bottle in the image. Then, the image is passed for pre-processing, such as image cropping, image gray scaling, and smoothening of the image. The next step of this algorithm uses canny edge detection to detect edges present in the image. The image with detected edges is in the form of a binary image. All the pixels are extracted from this binary image in the form of an array. After performing some mathematical calculations on the output array, the dimensions of the bottle can be determined. The bottles were inspected for any faults in the dimensions in the manufacturing. Any bottles with flaws in the dimensions are discarded and separated from the manufactured bottles. The first step of the algorithm is object detection; here, the model has achieved the mean average precision of nearly 99.5 percent for the confidence threshold set to 50 percent to 95 percent. The following entire algorithm runs in less than 847 milliseconds. Such a high-speed algorithm allows manufacturers to increase and decrease the manufacturing speed according to their needs. This algorithm can check any shape of bottle, and this algorithm is not limited to bottles, but it can also work for any shape of object. As this model is only trained on the images of the bottles, the model cannot instantly work on the other objects, but one can use transfer learning to use this model on different object. This algorithm can also detect defects in multiple objects in the production line containing the manufacturing of multiple objects in the same line. The model can classify the objects from the production line and can also be used to classify them wherever required.
基于机器视觉的试样过程智能检测
质量控制是每个制造过程的关键组成部分。通过在到达包装线之前去除次品,可以实现高质量生产。在过去的几年里,一些创新的系统已经证明了使用视觉输入和先进的计算机处理来实现各种生产目标。为了提高产品质量,节约成本,基于机器视觉的产品检测技术得到了广泛的研究。计算机视觉和深度学习最近得到了发展,产生了强大的数据分析工具,具有出色的扫描质量和弹性。作者已经尝试在这个方向上使用这种方法来检测存在于瓶子尺寸上的缺陷,这些瓶子在传送带上不断地移动。利用相机采集的图像,使用Yolov5目标检测方法对图像中的瓶子进行定位。然后,对图像进行预处理,如图像裁剪、图像灰度、图像平滑等。该算法的下一步使用精明的边缘检测来检测图像中存在的边缘。检测到边缘的图像以二值图像的形式存在。所有像素都以数组的形式从这个二值图像中提取出来。在对输出数组进行一些数学计算后,可以确定瓶子的尺寸。这些瓶子在制造过程中检查了尺寸是否有缺陷。任何尺寸上有缺陷的瓶子都将被丢弃,并与制造的瓶子分开。算法的第一步是目标检测;在这里,对于设置为50%到95%的置信阈值,该模型的平均精度接近99.5%。下面的整个算法运行时间不到847毫秒。这种高速算法允许制造商根据自己的需要增加或降低制造速度。该算法可以检测任何形状的瓶子,而且该算法不仅限于瓶子,还可以检测任何形状的物体。由于该模型只在瓶子的图像上进行训练,因此该模型不能立即在其他对象上工作,但可以使用迁移学习将该模型用于不同的对象。该算法还可以在同一条生产线中包含多个对象的制造的生产线中检测多个对象的缺陷。该模型可以对来自生产线的对象进行分类,也可以用于在需要时对它们进行分类。
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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