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首页> 外文期刊>IEEE transactions on automation science and engineering: a publication of the IEEE Robotics and Automation Society >UIR-Net: Object Detection in Infrared Imaging of Thermomechanical Processes in Automotive Manufacturing
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UIR-Net: Object Detection in Infrared Imaging of Thermomechanical Processes in Automotive Manufacturing

机译:UIR-Net:汽车制造热机械过程红外成像中的物体检测

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Thermomechanical processes (TMPs) such as resistance spot welding (RSW) and hot stamping are widely used in automotive manufacturing. Recent advancement in sensing technology has led to an increasing adoption of thermographic cameras to capture the infrared (IR) radiation of a metal part (or component of a part) during its thermomechanical processing or immediately after the process when the part is still hot. Detecting the object(s) of interest from raw IR images is an essential step in analyzing these data. Deep learning (DL) has been a recent success for object detection (OD), but the application of DL-based OD for industrial IR images in manufacturing is largely lagging behind. The major contribution of this work, which is also the distinction from previous OD studies, is the capability of building the OD model with unlabeled IR images, i.e., imaging data without accurate information indicating the object position. The architecture of Unsupervised IR Image Net (UIR-Net) is designed to accommodate the unique characteristics of IR images from TMPs in manufacturing. This study presents a novel method for OD in unlabeled IR images from TMPs. The proposed method, called UIR-Net, consists of two components: label generation and DL model construction. Two case studies from automotive manufacturing, RSW and hot stamping, are reported to demonstrate the feasibility and effectiveness of the proposed method. Note to Practitioners—This article was motivated by the problem of detecting objects such as weld nugget or metal piece in infrared (IR) imaging of thermomechanical processes (TMPs) in automotive manufacturing. The method is applicable to in situ IR images or videos that contain one or more objects to be detected. It only requires that the data are in image form and come from TMPs. Currently, there is no existing deep learning (DL)-based method for generic object detection (OD) in unlabeled IR images from TMPs. The proposed method takes advantages of the recent advancement in DL. This article suggests a systematic approach to build a DL-based OD model, named Unsupervised IR Image Net (UIR-Net), to extract objects from raw IR images collected for TMPs. A step-by-step procedure is given in this article to guide users through label generation, data quality evaluation, and model training to establish the proposed UIR-Net model. Results from resistance spot welding and hot stamping suggest that this approach is feasible and effective. It is one of the few generic OD works designed for manufacturing applications. Simple implementation, feasibility, and effectiveness make this method a suitable candidate for online data analytics and process monitoring in a wide range of manufacturing applications.
机译:电阻点焊 (RSW) 和热冲压等热机械工艺 (TMP) 广泛应用于汽车制造。传感技术的最新进步导致越来越多地采用热成像相机来捕获金属零件(或零件的组件)在热机械加工过程中或在加工后零件仍然很热时立即捕获红外 (IR) 辐射。从原始红外图像中检测感兴趣的物体是分析这些数据的重要步骤。深度学习 (DL) 最近在目标检测 (OD) 方面取得了成功,但基于 DL 的 OD 在制造业中用于工业红外图像的应用在很大程度上滞后。这项工作的主要贡献,也是与以前的OD研究的区别,是能够使用未标记的红外图像构建OD模型,即没有准确信息指示物体位置的成像数据。无监督红外图像网 (UIR-Net) 的架构旨在适应制造中 TMP 的红外图像的独特特性。本研究提出了一种新的 OD 方法,用于处理 TMP 未标记的 IR 图像。所提出的方法称为UIR-Net,由两个部分组成:标签生成和深度学习模型构建。报道了来自汽车制造的两个案例研究,RSW和热冲压,证明了所提方法的可行性和有效性。从业者须知 - 本文的动机是汽车制造中热机械过程 (TMP) 的红外 (IR) 成像中检测焊块或金属片等物体的问题。该方法适用于包含一个或多个待检测物体的原位红外图像或视频。它只要求数据是图像形式并来自 TMP。 目前,目前还没有基于深度学习 (DL) 的方法来检测来自 TMP 的未标记红外图像中的通用目标 (OD)。所提出的方法利用了DL的最新进展。本文提出了一种系统的方法,用于构建基于深度学习的 OD 模型,称为无监督红外图像网络 (UIR-Net),以从为 TMP 收集的原始红外图像中提取对象。本文给出了一个分步过程,指导用户通过标签生成、数据质量评估和模型训练来建立所提出的 UIR-Net 模型。电阻点焊和热冲压的结果表明,这种方法是可行和有效的。它是为数不多的为制造应用设计的通用OD作品之一。该方法的简单实施、可行性和有效性使该方法成为各种制造应用中在线数据分析和过程监控的合适候选者。

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