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Detecting textile micro-defects: A novel and efficient method based on visual gain mechanism

机译:检测纺织微缺陷:一种基于视觉增益机制的新颖有效方法

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摘要

In modern textile industrial processes, fast and efficient detection of textile defects plays a crucial role in textile quality control. Recently, as a critical machine-learning method, faster region-based convolutional neural network (Faster RCNN) have arisen as a promising framework, providing competitive performance for object detection. However, detecting small-scale objects, such as micro-defects on textile, is still a challenging task for Faster RCNN. To address the challenge, this paper aims to develop a new detection model to improve the ability of detecting small-scale objects. First, by analyzing the relationship between the attention mechanism and the visual gain mechanism, we find that the attention-related visual gain mechanism can modify response amplitude without changing selectivity and improve the acuity of visual perception. Then, the relevant mechanisms are further incorporated into the Faster RCNN model to build a new model called Faster VG-RCNN. To evaluate the proposed detection model, a unique textile micro-defect database is built as the benchmark for micro-defect detection. Furthermore, we conduct extensive experimental validations for various design choices. The experimental results show that the proposed Faster VG-RCNN outperforms the existing detection methods. In particular, compared to Faster RCNN, Faster VG-RCNN improves the detection precision from 90.1% to 94.3%. (C) 2020 Elsevier Inc. All rights reserved.
机译:在现代纺织工业过程中,快速有效地检测纺织品缺陷在纺织质量控制中起着至关重要的作用。最近,作为一种关键的机器学习方法,将基于区域的卷积神经网络(更快的RCNN)作为一个有前途的框架,为目标检测提供竞争性能。然而,检测纺织品上的微缺陷等小规模对象仍然是一个具有挑战性的RCNN任务。为了解决挑战,本文旨在开发一种新的检测模型,以提高检测小规模物体的能力。首先,通过分析注意机制与视觉增益机制之间的关系,我们发现注意力相关的视觉增益机制可以修改响应幅度而不改变选择性并改善视觉感知的敏锐度。然后,相关机制进一步纳入更快的RCNN模型,以构建一个称为更快的VG-RCNN的新模型。为了评估所提出的检测模型,建立独特的纺织微缺陷数据库作为微缺陷检测的基准。此外,我们对各种设计选择进行了广泛的实验验证。实验结果表明,所提出的VG-RCNN优于现有的检测方法。特别是,与RCNN更快的RCNN相比,更快的VG-RCNN将检测精度从90.1%提高到94.3%。 (c)2020 Elsevier Inc.保留所有权利。

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