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Image-based roughness estimation of laser cut edges with a convolutional neural network

机译:卷积神经网络激光切割边缘的基于图像的粗糙度估计

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Laser cutting of metals is a complex process with many influencing factors. As some of them are subject to change, the cut quality needs to be checked regularly. This paper aims to estimate the roughness of cut edges based on RGB images instead of surface topography measurements. We trained a convolutional neural network (CNN) on a broad database of images and corresponding roughness values. The CNN estimates the roughness well with a mean error of 3.6 μm. Sometimes it is more reliable than the surface measuring device because the RGB images are less prone to reflectivity problems than the measurements.
机译:激光切割金属是一种复杂的过程,具有许多影响因素。 由于其中一些可能会发生变化,需要定期检查切割质量。 本文旨在估算基于RGB图像而不是表面形貌测量的切割边缘的粗糙度。 我们在广泛的图像和相应的粗糙度值数据库上培训了卷积神经网络(CNN)。 CNN估计粗糙度,其平均误差为3.6μm。 有时,它比表面测量装置更可靠,因为RGB图像不太容易发白反射率问题而不是测量值。

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