Building a High Accuracy Transfer Learning-Based Quality Inspection System at Low Costs

A. Najah, F. Mustafa, Wisam S. Hacham
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Abstract

Products’ quality inspection is an important stage in every production route, in which the quality of the produced goods is estimated and compared with the desired specifications. With traditional inspection, the process rely on manual methods that generates various costs and large time consumption. On the contrary, today’s inspection systems that use modern techniques like computer vision, are more accurate and efficient. However, the amount of work needed to build a computer vision system based on classic techniques is relatively large, due to the issue of manually selecting and extracting features from digital images, which also produces labor costs for the system engineers. In this research, we present an adopted approach based on convolutional neural networks to design a system for quality inspection with high level of accuracy and low cost. The system is designed using transfer learning to transfer layers from a previously trained model and a fully connected neural network to classify the product’s condition into healthy or damaged. Helical gears were used as the inspected object and three cameras with differing resolutions were used to evaluate the system with colored and grayscale images. Experimental results showed high accuracy levels with colored images and even higher accuracies with grayscale images at every resolution, emphasizing the ability to build an inspection system at low costs, ease of construction and automatic extraction of image features.
基于迁移学习的低成本高精度质量检测系统的构建
产品质量检验是每一条生产路线的重要环节,是对所生产产品的质量进行估计,并与期望的规格进行比较。传统的检测过程依赖于人工方法,产生各种成本和大量的时间消耗。相反,今天的检查系统使用现代技术,如计算机视觉,更准确和高效。然而,基于经典技术构建计算机视觉系统所需的工作量相对较大,因为需要手动从数字图像中选择和提取特征,这也给系统工程师带来了劳动力成本。在本研究中,我们提出了一种基于卷积神经网络的方法来设计一个高精度和低成本的质量检测系统。该系统的设计使用迁移学习来从先前训练过的模型和完全连接的神经网络中迁移层,以将产品的状况分为健康或损坏。以斜齿轮为检测对象,采用三种不同分辨率的相机对系统进行彩色和灰度图像评价。实验结果表明,彩色图像具有较高的精度水平,灰度图像具有更高的精度,强调了低成本构建检测系统的能力,易于构建和自动提取图像特征。
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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