罕见缺陷的自动视觉检测:基于GP-WGAN和增强更快R-CNN的框架

Masoud Jalayer, R. Jalayer, A. Kaboli, C. Orsenigo, C. Vercellis
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引用次数: 5

摘要

半导体和代工等行业目前的趋势是将视觉检测过程转向自动视觉检测(AVI)系统,以减少成本、错误和对人类专家的依赖。本文提出了一种面向AVI系统的两阶段故障诊断框架。首先设计生成模型,在真实样本的基础上合成新样本。提出的增强算法从真实样本中提取目标并随机混合,生成新的样本,提高图像处理器的性能。在第二阶段,提出了一种基于Faster R-CNN、特征金字塔网络(Feature Pyramid Network, FPN)和残差网络的改进深度学习架构,对增强的数据集进行目标检测。在两个多类数据集上对算法的性能进行了验证和评价。在一系列不平衡严重程度上进行的实验结果表明,与其他解决方案相比,所提出的框架具有优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Visual Inspection of Rare Defects: A Framework based on GP-WGAN and Enhanced Faster R-CNN
A current trend in industries such as semiconductors and foundry is to shift their visual inspection processes to Automatic Visual Inspection (AVI) systems, to reduce their costs, mistakes, and dependency on human experts. This paper proposes a two-staged fault diagnosis framework for AVI systems. In the first stage, a generation model is designed to synthesize new samples based on real samples. The proposed augmentation algorithm extracts objects from the real samples and blends them randomly, to generate new samples and enhance the performance of the image processor. In the second stage, an improved deep learning architecture based on Faster R-CNN, Feature Pyramid Network (FPN), and a Residual Network is proposed to perform object detection on the enhanced dataset. The performance of the algorithm is validated and evaluated on two multi-class datasets. The experimental results performed over a range of imbalance severities demonstrate the superiority of the proposed framework compared to other solutions.
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