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Anomaly Detection for Visual Quality Control of 3D-Printed Products

机译:3D印刷产品视觉质量控制的异常检测

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We present a method for detection of surface defects in images of 3D-printed products that enables automated visual quality control. The data characterising this problem is typically high-dimensional (high-resolution images), imbalanced (defects are relatively rare), and has few labelled examples. We approach these challenges by formulating the problem as probabilistic anomaly detection, where we use Variational Autoencoders (VAE) to estimate the probability density of non-faulty products. We train the VAE in an unsupervised manner on images of non-faulty products only. A successful model will then assign high likelihood to unseen images of non-faulty products, and lower likelihood to images displaying defects.We test this method on anomaly detection scenarios using the MNIST dataset, as well as on images of 3D-printed products. The demonstrated performance is related to the capability of the model to closely estimate the density distribution of the non-faulty (expected) data. For both datasets we present empirical results that the likelihood estimated with a convolutional VAE can separate the normal and anomalous data. Moreover we show how the reconstruction capabilities of VAEs are highly informative for human observers towards localising potential anomalies, which can aid the quality control process.
机译:我们介绍了一种检测3D印刷产品图像表面缺陷的方法,可实现自动视觉质量控制。表征此问题的数据通常是高维(高分辨率图像),不平衡(缺陷相对少见),并且具有很少标记的示例。我们通过将问题作为概率异常检测来实现这些挑战,在那里我们使用变分自动化器(VAE)来估计非故障产品的概率密度。我们以无人监督的方式训练VAE仅在非故障产品的图像上。然后,成功的模型将为未出现错误的产品的看不见的图像分配很高的可能性,以及对显示缺陷的图像较低的可能性。我们在使用MNIST DataSet的异常检测方案上测试此方法,以及3D打印产品的图像。所示的性能与模型的能力相关,以密切估计非故障(预期)数据的密度分布。对于两个数据集,我们提出了用卷积VAE估计的可能性可以分离正常和异常数据的实证结果。此外,我们展示了VAE的重建能力如何对人类观察者迈向定位潜在的异常的高度信息丰富,这可以帮助质量控制过程。

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