高效织物异常检测:加快训练时间的迁移学习框架

IF 1.6 4区 工程技术 Q2 MATERIALS SCIENCE, TEXTILES Textile Research Journal Pub Date : 2024-09-07 DOI:10.1177/00405175241267767
Thomine Simon, Snoussi Hichem
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引用次数: 0

摘要

在工业质量控制中,异常检测对识别缺陷产品起着至关重要的作用。然而,由于缺陷收集的稀缺性和耗时性,训练模型通常只能依赖于无缺陷样本。这就需要使用完全基于无缺陷数据训练的无监督异常检测技术。或者,也可以合成缺陷数据,用缺陷样本来扩充数据集。在纺织行业,快速的模型训练对于确保生产流程的顺畅至关重要。遗憾的是,大多数无监督方法都需要大量的训练时间。本文提出了一种新颖的迁移学习方法,旨在实现以秒为单位的训练时间,同时使模型有效适应织物异常检测的目标领域。我们的方法的主要贡献包括:大大缩短了训练时间,比目前最先进的方法快 10 倍;异常检测性能相当,在基准数据集(MVTEC 异常检测、TILDA、AITEX 和 DAGM)上取得了与最先进方法相当的结果。此外,我们的方法还能缩短推理时间,确保在生产过程中快速高效地进行异常检测。所提出的方法为实时工业质量控制提供了实用高效的解决方案。
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Efficient fabric anomaly detection: A transfer learning framework with expedited training times
In industrial quality control, anomaly detection plays a critical role in identifying defective products. However, because of the rarity and time-consuming nature of defect collection, training models often rely solely on defect-free samples. This necessitates the use of unsupervised anomaly-detection techniques trained exclusively on defect-free data. Alternatively, defect data can be synthesized to augment the dataset with defective samples. In the textile industry, expeditious model training is crucial to ensure a smooth production flow. Unfortunately, most unsupervised methods require extensive training time. This paper proposes a novel transfer learning approach designed to achieve training times in seconds while effectively adapting the model to the target domain of fabric anomaly detection. The key contributions of our method include significantly reduced training times, up to 10 times faster than current state-of-the-art methods, and comparable performance in anomaly detection, achieving results on par with state-of-the-art approaches on benchmark datasets (MVTEC Anomaly Detection, TILDA, AITEX and DAGM). Additionally, our approach improves inference times, ensuring expedited and efficient anomaly detection during production. The proposed method offers a practical and efficient solution for real-time industrial quality control.
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来源期刊
Textile Research Journal
Textile Research Journal 工程技术-材料科学:纺织
CiteScore
4.00
自引率
21.70%
发文量
309
审稿时长
1.5 months
期刊介绍: The Textile Research Journal is the leading peer reviewed Journal for textile research. It is devoted to the dissemination of fundamental, theoretical and applied scientific knowledge in materials, chemistry, manufacture and system sciences related to fibers, fibrous assemblies and textiles. The Journal serves authors and subscribers worldwide, and it is selective in accepting contributions on the basis of merit, novelty and originality.
期刊最新文献
A review of deep learning and artificial intelligence in dyeing, printing and finishing A review of deep learning within the framework of artificial intelligence for enhanced fiber and yarn quality Reconstructing hyperspectral images of textiles from a single RGB image utilizing the multihead self-attention mechanism Study on the thermo-physiological comfort properties of cotton/polyester combination yarn-based double-layer knitted fabrics Study on the relationship between blending uniformity and yarn performance of blended yarn
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