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Automatic zipper tape defect detection using two-stage multi-scale convolutional networks

机译:自动拉链胶带缺陷检测使用两级多尺度卷积网络

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摘要

Defects inevitably occur during the manufacturing process of the zipper, significantly affecting its value. Zipper inspection is of significant importance in ensuring the quality of the zipper products. Traditional zipper inspection requires skilled inspectors and is labor-intensive, inefficient, and inaccurate. Currently, automated zipper defects inspection with high precision and high efficiency is still very challenging. In this paper, we propose a novel zipper tape defect detection framework based on fully convolutional networks in a two-stage coarse-to-fine cascade manner. For our special application, the zipper tape defects have multi-scale characteristics. Most of the existing deep learning methods have great advantages in detecting the large-scale defects with prominent features, but are prone to fail in detecting the smallscale ones due to their less remarkable features as well as their general location in a large background area. Thus, we propose to detect first the large local context regions containing the small-scale defects using a multi-scale detection architecture with high efficiency, which integrates a new detection branch by fusing the features in the shallow layer into the high-level layer to boost the detection performance of the context regions. Then we finely detect the small-scale defects from the local context regions detected in the first stage, which can be regarded as large-scale objects that are more easily detected. Extensive comparative experiments demonstrate that the proposed method offers a high detection accuracy while still having high detection efficiency compared with the state-of-the-art methods, coupled with good robustness in some complex cases. (c) 2020 Elsevier B.V. All rights reserved.
机译:在拉链的制造过程中不可避免地发生的缺陷,显着影响其价值。拉链检查在确保拉链产品的质量方面具有重要意义。传统的拉链检查需要熟练的检查员,并且劳动密集型,低效和不准确。目前,具有高精度和高效率的自动拉链缺陷检查仍然非常具有挑战性。在本文中,我们提出了一种基于两级粗级级联方式的全卷积网络的新型拉链胶带缺陷检测框架。对于我们的特殊应用,拉链胶带缺陷具有多尺度特性。大多数现有的深层学习方法在检测到具有突出特征的大规模缺陷方面具有很大的优势,但由于其在大型背景区域中的较为显着的特征以及它们的通用位置,易于在检测到小型缺陷时。因此,我们建议使用具有高效率的多尺度检测架构来检测包含小型缺陷的大型本地上下文区域,这通过将浅层中的特征融入高级层来集成新的检测分支提高上下文区域的检测性能。然后,我们精细地检测了第一阶段中检测到的本地上下文区域的小规模缺陷,这可以被视为更容易检测到的大规模对象。广泛的比较实验表明,该方法提供了高检测精度,同时与最先进的方法相比,仍具有高的检测效率,在一些复杂的情况下与良好的鲁棒性相结合。 (c)2020 Elsevier B.v.保留所有权利。

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