A Configuration Approach for Convolutional Neural Networks Used for Defect Detection on Surfaces

D. García, I. García, F. J. delaCalle, R. Usamentiaga
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引用次数: 5

Abstract

The manufacturing industries must guarantee that the products delivered to clients do not have defects, such as irregularities on the surface. To that end, complex systems inspect the products on completion of their manufacturing to detect possible defects. But the design and configuration of these systems is cumbersome, specific for each system, and requires a lot of experience. Currently, there is a trend to build all these systems using Convolutional Neural Networks (CNN), due to the theoretical simplicity of this approach: images of the surface of the products are processed by a trained CNN, which detects defects in the images. But the generation of a well-trained CNN is also a complex process, generally not always properly documented in the literature, and strongly dependent on the application domain. To facilitate the use of CNNs, this paper proposes a configuration approach for CNNs whose objective is the detection of defects on the surface of manufactured products. As an example, the approach is used to configure a CNN to detect surface defects on manufactured rails.
一种用于表面缺陷检测的卷积神经网络组态方法
制造业必须保证交付给客户的产品没有缺陷,如表面凹凸不平。为此,复杂的系统在产品制造完成后对其进行检查,以发现可能的缺陷。但是这些系统的设计和配置是繁琐的,每个系统都是特定的,并且需要大量的经验。目前,有一种趋势是使用卷积神经网络(CNN)构建所有这些系统,因为这种方法在理论上很简单:产品表面的图像由经过训练的CNN处理,该CNN检测图像中的缺陷。但是,训练有素的CNN的生成也是一个复杂的过程,通常并不总是在文献中得到适当的记录,并且强烈依赖于应用领域。为了方便cnn的使用,本文提出了一种cnn的配置方法,其目的是检测制成品表面的缺陷。作为一个例子,该方法被用于配置CNN来检测制造轨道的表面缺陷。
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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