Printed circuit boards (PCBs) are essential components of electronic devices, and ensuring their quality is crucial in their production. However, the vast variety of components and PCBs manufactured by different companies makes it challenging to adapt to production lines with speed demands. To address this challenge, we present a multi-view object detection framework that offers a fast and precise solution. We introduce a novel multi-view dataset with semi-automatic ground-truth data, which results in significant labeling resource savings. Labeling PCB boards for object detection is a challenging task due to the high density of components and the small size of the objects, which makes it difficult to identify and label them accurately. By training an object detector model with multi-view data, we achieve improved performance over single-view images. To further enhance the accuracy, we develop a multi-view inference method that aggregates results from different viewpoints. Our experiments demonstrate a 15% improvement in mAP for detecting components that range in size from 0.5 to 27.0 mm.
翻译:印刷电路板(PCB)是电子设备的关键组件,确保其质量在生产中至关重要。然而,不同公司生产的各种组件和PCB的巨大品种使得适应速度要求的生产线变得困难。为了解决这个挑战,我们提出了一个多视角物体检测框架,它提供了一个快速而精确的解决方案。我们介绍了一种新颖的多视角数据集,其中包含半自动的标注数据,这样可以显著节省标注工作量。由于PCB板的高密度和物体的小尺寸,使得对其进行物体检测标注成为一项具有挑战性的任务,难以准确识别和标注它们。通过使用多视角数据来训练物体探测器模型,我们在单视图图像上实现了更好的性能。为了进一步提高准确性,我们提出了一种多视角推理方法,聚合来自不同视角的结果。我们的实验证明,在检测0.5到27.0毫米大小的组件方面,mAP提高了15%。