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首页> 外文期刊>Annals of the American Thoracic Society >Multiscale Feature-Clustering-Based Fully Convolutional Autoencoder for Fast Accurate Visual Inspection of Texture Surface Defects
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Multiscale Feature-Clustering-Based Fully Convolutional Autoencoder for Fast Accurate Visual Inspection of Texture Surface Defects

机译:基于MultiScale特征集群的全卷积AutoEncoder,用于快速准确地视检查纹理表面缺陷

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摘要

Visual inspection of texture surface defects is still a challenging task in the industrial automation field due to the tremendous changes in the appearance of various surface textures. Current visual inspection methods cannot simultaneously and efficiently inspect various types of texture defects due to either the low discriminative capabilities of handcrafted features or their time-consuming sliding-window strategy. In this paper, we present a novel unsupervised multiscale feature-clustering-based fully convolutional autoencoder (MS-FCAE) method that efficiently and accurately inspects various types of texture defects based on a small number of defect-free texture samples. The proposed MS-FCAE method utilizes multiple FCAE subnetworks at different scale levels to reconstruct several textured background images. The residual images are obtained by subtracting these texture backgrounds from the input image individually; then, they are fused into one defect image. To maximize the efficiency, each FCAE subnetwork utilizes fully convolutional neural networks to extract the original feature maps directly from the input images. Meanwhile, each FCAE subnetwork performs feature clustering to improve the discriminant power of the encoded feature maps. The proposed MS-FCAE method is evaluated on several texture surface inspection data sets both qualitatively and quantitatively. This method achieves a Precision of 92.0% while requiring only 82 ms for input images of 1920 x 1080 pixels. The extensive experimental results demonstrate that MS-FCAE achieves highly efficient and state-of-the-art inspection accuracy.
机译:由于各种表面纹理的外观的巨大变化,在工业自动化领域仍然是工业自动化领域的挑战任务。由于手工特征的低鉴别功能或其耗时的滑动窗策略,目前的视觉检查方法不能同时和有效地检查各种类型的纹理缺陷。在本文中,我们介绍了一种基于简单的无尺寸的多尺度特征聚类的全卷积AutoEncoder(MS-FCAE)方法,其有效地,并基于少量无缺陷纹理样本来检查各种类型的纹理缺陷。所提出的MS-FCAE方法利用不同刻度级别的多个FCAE子网来重建几个纹理的背景图像。通过单独从输入图像中减去这些纹理背景来获得残差图像;然后,它们被融合成一个缺陷图像。为了最大限度地提高效率,每个FCAE子网利用完全卷积神经网络,直接从输入图像中提取原始特征映射。同时,每个FCAE子网都执行特征群集以提高编码特征映射的判别电源。所提出的MS-FCAE方法在定性和定量上对几个纹理表面检查数据集进行评估。该方法实现了92.0%的精度,同时仅需要82毫秒,输入图像为1920 x 1080像素。广泛的实验结果表明,MS-FCAE实现了高效和最先进的检查精度。

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