论文标题
RUSTSEG-使用深度学习的自动腐蚀分割
RustSEG -- Automated segmentation of corrosion using deep learning
论文作者
论文摘要
对腐蚀基础设施的检查仍然是一项任务,通常由合格的工程师或检查员手动执行。这项检查的任务是费力,缓慢的,通常需要复杂的访问。最近,基于深度学习的算法揭示了自动检测腐蚀的希望和表现。然而,迄今为止,由于缺乏模型训练所需的每个像素标记的数据集的可用性,有关自动腐蚀检测图像分割的研究受到限制。在此,提出了一种新颖的深度学习方法(称为Rustseg),可以准确地分割自动腐蚀检测的图像,而无需每像素标记的数据集以进行训练。 Rustseg方法将首先使用深度学习技术首先确定图像中是否存在腐蚀(即分类任务),然后如果存在腐蚀,则该模型将检查原始图像中的像素在原始图像中有助于该分类决策。最后,该方法可以将其预测改进到像素级分割掩码中。在理想的情况下,该方法能够在图像中生成精确的腐蚀面罩,表明无需每像素训练数据的腐蚀的自动分割是可以解决自动化基础设施检查的重大障碍。
The inspection of infrastructure for corrosion remains a task that is typically performed manually by qualified engineers or inspectors. This task of inspection is laborious, slow, and often requires complex access. Recently, deep learning based algorithms have revealed promise and performance in the automatic detection of corrosion. However, to date, research regarding the segmentation of images for automated corrosion detection has been limited, due to the lack of availability of per-pixel labelled data sets which are required for model training. Herein, a novel deep learning approach (termed RustSEG) is presented, that can accurately segment images for automated corrosion detection, without the requirement of per-pixel labelled data sets for training. The RustSEG method will first, using deep learning techniques, determine if corrosion is present in an image (i.e. a classification task), and then if corrosion is present, the model will examine what pixels in the original image contributed to that classification decision. Finally, the method can refine its predictions into a pixel-level segmentation mask. In ideal cases, the method is able to generate precise masks of corrosion in images, demonstrating that the automated segmentation of corrosion without per-pixel training data is possible, addressing a significant hurdle in automated infrastructure inspection.