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A neural network-based method for coverage measurement of shot-peened panels

机译:一种基于神经网络的覆盖测量方法的射击板

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摘要

Shot peening is a cold metal working process to improve the material strength, reduce corrosion fatigue and prevent fracture. Measuring the coverage level is an essential parameter in shot peening, which is traditionally performed through manual visual inspection. Due to the tedious nature of the task, it is prone to imprecision caused by human error. Several image processing and computer vision techniques are proposed in the literature to automate this process. While most of the techniques are accurate in segmenting the shot-peened areas, they seem to fail in the presence of machining streaks, resulting in false segmentation. To overcome this challenge, an artificial neural network (ANN)-based implementation is employed in this paper to improve accuracy of the results. The neural network is trained with specific selected features from the acquired images. Results show ANN outperforms the previously implemented standard image segmentation methods.
机译:射击喷丸是一种冷金属工作过程,可提高材料强度,减少腐蚀疲劳并防止骨折。 测量覆盖率水平是喷丸喷丸中的基本参数,传统上通过手动视觉检查进行。 由于任务的繁琐性质,它易于由人类错误引起的不精确。 在文献中提出了几种图像处理和计算机视觉技术以自动化此过程。 虽然大多数技术在分割喷丸区域方面准确,但它们在加工条纹的存在下它们似乎失败,导致了错误的分割。 为了克服这一挑战,本文采用了基于人工神经网络(ANN)的实现,以提高结果的准确性。 神经网络培训,具有来自所获取的图像的特定选定特征。 结果显示ANN优于先前实现的标准图像分段方法。

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