飞机内饰表面缺陷检测方法的定性比较

N. Mosca, C. Patruno, V. Renó, M. Nitti, E. Stella
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引用次数: 0

摘要

在第二次和第三次工业革命期间,零件缺陷的自动识别已经成为生产工厂的关键方面之一,特别是在汽车等享受规模经济的行业。自动化甚至可以在连续的步骤中得到利用,例如大型制成品的最终组装,如飞机,其中自动化系统的使用可以提供判断一致性,这可能是传统方式难以获得的。本文对不同的视觉特征识别方法进行了比较。这些方法涵盖了传统的计算机视觉技术,如SURF描述符和基于机器学习的算法,即卷积神经网络,用于识别飞机内部的表面缺陷。比较是在定性层面上进行的,从而可以对每种方法的优缺点进行讨论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Qualitative comparison of methodologies for detecting surface defects in aircraft interiors
Automated identification of parts showing defects have established itself as one of the key aspects in production factories during the second and third industrial revolutions, especially in sectors, such as the automotive, enjoying economies of scale. Automation can be exploited even in successive steps too, such as the final assembly of large manufactured goods, like aircrafts, where the usage of automated systems can provide judgement consistencies that may be challenging to obtain in more traditional ways. In this paper, different methodologies for the identification of visual features are compared together. These approaches cover both traditional computer vision techniques, such as SURF descriptors and machine learning based algorithms, namely a convolutional neural network, for the identification of surface defects in aircraft interiors. The comparison is performed at a qualitative level, enabling a discussion between pros and cons of each approach.
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