基于网络剪枝和微调的少量工业图像异常检测

J. Zhang, M. Suganuma, Takayuki Okatani
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引用次数: 1

摘要

本文主要研究在少镜头设置下的工业图像异常检测与定位。由于获取足够的异常数据是困难的,因此通常使用仅使用正常数据的无监督学习,但即使获得足够的无异常训练样本也可能具有挑战性。此外,应用数据增强,这是一种常用的策略,以减轻数据的缺乏,是有限的用于一些工业产品的图像。为了解决上述问题,我们提出了一个网络修剪和微调(PF)框架,该框架利用深度预训练模型的知识。我们的方法将正常样本的知识提取到一个修剪过的学生网络中,然后进行微调以恢复其对正常数据的表示能力。在推理过程中,使用教师和学生提取的特征之间的差异来确定异常分数。该方法可以更好地利用深度模型的强表示能力,有利于网络剪枝对有限数据的学生进行训练。我们的框架在MVTec AD基准测试中实现了最先进的性能,并且不局限于特定的网络修剪方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Network Pruning and Fine-tuning for Few-shot Industrial Image Anomaly Detection
This paper focuses on industrial image anomaly detection and localization under few-shot settings. Since acquiring sufficient anomalous data is difficult, unsupervised learning that uses only normal data is commonly used, but even obtaining enough anomaly-free training samples can be challenging. Moreover, applying data augmentations, which is a common strategy for few-shot learning to alleviate the lack of data, is limited to use for some industrial product images. To address the above issues, we propose a network pruning and fine-tuning (PF) framework that leverages the knowledge of a deep pre-trained model. Our approach distills the knowledge of normal samples into a pruned student network, followed by fine-tuning to restore its representation ability for normal data. During inference, discrepancies between features extracted by the teacher and student are used to determine the anomaly score. The proposed method could better utilize the strong representation ability of deep models and benefit the student training with limited data by network pruning. Our framework achieves state-of-the-art performance on the MVTec AD benchmark and is not limited to specific network pruning methods.
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