基于深度神经网络的少样本缺陷检测

G. Pranav, T. Sonam, T. Sree Sharmila
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引用次数: 0

摘要

金属铸件是一种应用广泛的产品。它用于车辆,建筑物,建筑等。铸件基本上是由熔化的金属如铁形成的模塑形状。然而,制造铸件的过程很容易受到损害。这会在表面产生裂纹、流痕、孔隙和针孔等缺陷。一般来说,超声波检查或简单的目视检查是用来寻找缺陷的。但它们耗时、昂贵,而且需要更多的劳动力。在当今时代,计算机视觉被用来简化这一过程。实验了几种神经网络算法进行图像分类。实验表明,卷积神经网络模型具有良好的准确率。但在模型训练过程中所面临的困难是缺陷品的实际数据难以用于训练。由于训练样本通常较小,只有少数算法(如ResNet50和efficientnetb7)在分类铸造产品是否有缺陷方面具有更高的准确性。当训练样本集的大小比测试样本更小时,看看这些算法的表现如何变得更加重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Defect Detection with less training samples using Deep Neural Networks
Metal castings are products that are used everywhere. It is used in vehicles, in buildings, for construction and so on. Castings are basically molded shapes formed out of melted metal like iron. The process of making castings, however, can easily be compromised. This gives rise to defects like cracks, flow marks, porosity, and pinhole formation on the surface. Generally, ultra-sonic inspections or simple visual inspections are done to look for defects. But they are time-consuming, expensive and require more labor. In current times, computer vision is used to make the process simpler. Several neural network algorithms were experimented to do image classification. Many convolutional neural network models were experimented to receive good accuracy. But the difficulty faced during training the model is the less availability of actual data of defect goods to train. Since training samples are usually smaller, only a few algorithms like ResNet50 and EfficientNetB 7 gave better accuracy in classifying casting goods as defective or not. It became more important to see how well these algorithms do when the training sample set size becomes even less compared to the testing sample.
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