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Automated Defect Detection in Physical Components using Machine Learning

机译:使用机器学习的物理组件中自动缺陷检测

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It is a crucial part of any manufacturing process, either using manual inspection or using today's modern approaches, to detect the defects at the earlier stages to minimise the risks of failure at later stages. In the early days, manual inspection was prone to many errors, leading to a loss of resources and was very time-consuming. Among the other research areas, it is also an active field of research to achieve the perfect balance between high performance and accuracy in defect detection. ResNet, AlexNet, GoogLeNet, and VGGNet has shown remarkable improvement over old traditional designs in this regard. Image processing and deep learning-based object detection model adopted by Google Cloud Machine Learning Engine were widely used for defect detection and had shown somewhat satisfactory results. In this paper, we proposed a model which is successfully trained on the Google Cloud ML Engine. The results have shown that MobileNet-SSD can automatically detect surface defects more frequently, accurately, and precisely compared to conventional deep learning methods. We have used the pre-trained model of MobileNet V2, which is already trained on lakhs of images and is resource-efficient because it needs small memory setup and lower processing power of the CPU.
机译:它是任何制造过程的重要组成部分,可以使用手动检查或使用今天的现代方法,以检测早期阶段的缺陷,以最大限度地减少稍后阶段的失败风险。在早期,手动检查容易出现许多错误,导致资源丧失,并且非常耗时。在其他研究领域中,它也是在缺陷检测中实现高性能和准确性之间的完美平衡,这也是一个积极的研究领域。 Reset,AlexNet,Googlenet和VGGNET在这方面的旧传统设计方面表现出显着的改进。 Google Cloud Machine学习引擎采用的图像处理和基于深度学习的对象检测模型被广泛用于缺陷检测,并显示出稍微令人满意的结果。在本文中,我们提出了一种在Google Cloud ML引擎上成功培训的模型。结果表明,与传统的深度学习方法相比,MobileNet-SSD可以更频繁地自动检测表面缺陷。我们已经使用了MobileNet V2的预先训练的模型,该模型已经在Lakh的Lakhs培训并资源有效,因为它需要小的内存设置和CPU的降低处理能力。

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