For the sake of recognizing and classifying textile defects, deep learning-based methods have been proposed and achieved remarkable success in single-label textile images. However, detecting multi-label defects in a textile image remains challenging due to the coexistence of multiple defects and small-size defects. To address these challenges, a multi-level, multi-attentional deep learning network (MLMA-Net) is proposed and built to 1) increase the feature representation ability to detect small-size defects; 2) generate a discriminative representation that maximizes the capability of attending the defect status, which leverages higher-resolution feature maps for multiple defects. Moreover, a multi-label object detection dataset (DHU-ML1000) in textile defect images is built to verify the performance of the proposed model. The results demonstrate that the network extracts more distinctive features and has better performance than the state-of-the-art approaches on the real-world industrial dataset.
翻译:为了认识和分类纺织品缺陷,提出了深层次的学习方法,并在单一标签纺织品图像方面取得了显著成功;然而,由于多重缺陷和小尺寸缺陷并存,发现纺织品图像中多标签缺陷仍具有挑战性;为了应对这些挑战,提议并建立一个多层次、多目的深层学习网络(MLMA-Net),以提高发现小尺寸缺陷的特征表现能力;(2) 产生一种歧视代表性,最大限度地提高处理缺陷状态的能力,从而利用高分辨率特征图绘制多重缺陷图;此外,为核实拟议模型的性能,还建立了一个多标签物体探测数据集(DHU-ML1000),以核实拟议模型的性能;结果显示,网络具有比现实世界工业数据集中最先进的方法更突出的特征和性能更好。