论文标题
在汽车组装线上进行视觉检查的深度学习模型
Deep Learning Models for Visual Inspection on Automotive Assembling Line
论文作者
论文摘要
汽车制造组装任务是建立在视觉检查的基础上的,例如在加工表面上的刮擦识别,零件识别和选择等,这可以保证产品和过程质量。这些任务可能与在同一制造线内生产的多种类型的车辆有关。视觉检查本质上是人为主导的,但最近已被计算机视觉系统(CVSS)提供的人工感知补充。尽管它们相关,但CVSS的准确性与环境环境(如照明,外壳和图像获取质量)相应差异。这些问题需要昂贵的解决方案,并覆盖了计算机视觉系统引入的部分好处,主要是在干扰工厂的运营周期时。从这个意义上讲,本文建议使用基于深度学习的方法来协助视觉检查任务,同时在制造环境中留下很少的足迹,并将其作为端到端的工具探索,以简化CVSS设置。根据对象检测,语义分割和异常检测的模型,在实际汽车装配线中的四个概念证明说明了所提出的方法。
Automotive manufacturing assembly tasks are built upon visual inspections such as scratch identification on machined surfaces, part identification and selection, etc, which guarantee product and process quality. These tasks can be related to more than one type of vehicle that is produced within the same manufacturing line. Visual inspection was essentially human-led but has recently been supplemented by the artificial perception provided by computer vision systems (CVSs). Despite their relevance, the accuracy of CVSs varies accordingly to environmental settings such as lighting, enclosure and quality of image acquisition. These issues entail costly solutions and override part of the benefits introduced by computer vision systems, mainly when it interferes with the operating cycle time of the factory. In this sense, this paper proposes the use of deep learning-based methodologies to assist in visual inspection tasks while leaving very little footprints in the manufacturing environment and exploring it as an end-to-end tool to ease CVSs setup. The proposed approach is illustrated by four proofs of concept in a real automotive assembly line based on models for object detection, semantic segmentation, and anomaly detection.