A novel method for object detection using deep learning and CAD models

Igor Garcia Ballhausen Sampaio, Luigy Machaca, J. V. Filho, Joris Guérin
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引用次数: 5

Abstract

Object Detection (OD) is an important computer vision problem for industry, which can be used for quality control in the production lines, among other applications. Recently, Deep Learning (DL) methods have enabled practitioners to train OD models performing well on complex real world images. However, the adoption of these models in industry is still limited by the difficulty and the significant cost of collecting high quality training datasets. On the other hand, when applying OD to the context of production lines, CAD models of the objects to be detected are often available. In this paper, we introduce a fully automated method that uses a CAD model of an object and returns a fully trained OD model for detecting this object. To do this, we created a Blender script that generates realistic labeled datasets of images containing the object, which are then used for training the OD model. The method is validated experimentally on two practical examples, showing that this approach can generate OD models performing well on real images, while being trained only on synthetic images. The proposed method has potential to facilitate the adoption of object detection models in industry as it is easy to adapt for new objects and highly flexible. Hence, it can result in significant costs reduction, gains in productivity and improved products quality.
一种基于深度学习和CAD模型的目标检测新方法
物体检测(OD)是一个重要的工业计算机视觉问题,它可以用于生产线的质量控制,以及其他应用。最近,深度学习(DL)方法使从业者能够训练在复杂的真实世界图像上表现良好的OD模型。然而,在工业中采用这些模型仍然受到收集高质量训练数据集的难度和巨大成本的限制。另一方面,当将OD应用于生产线时,通常可以使用要检测对象的CAD模型。在本文中,我们介绍了一种全自动方法,该方法使用对象的CAD模型并返回经过完全训练的OD模型来检测该对象。为此,我们创建了一个Blender脚本,生成包含对象的图像的真实标记数据集,然后用于训练OD模型。通过两个实例的实验验证了该方法的有效性,表明该方法可以生成在真实图像上表现良好的OD模型,而只能在合成图像上进行训练。由于该方法易于适应新对象且高度灵活,因此具有促进工业中对象检测模型采用的潜力。因此,它可以显著降低成本,提高生产率和提高产品质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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