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Data-Efficient Graph Embedding Learning for PCB Component Detection

机译:数据高效图嵌入了PCB组件检测的学习

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This paper presents a challenging computer vision task, namely the detection of generic components on a PCB, and a novel set of deep-learning methods that are able to jointly leverage the appearance of individual components and the propagation of information across the structure of the board to accurately detect and identify various types of components on a PCB. Due to the expense of manual data labeling, a highly unbalanced distribution of component types, and significant domain shift across boards, most earlier attempts based on traditional image processing techniques fail to generalize well to PCB images with various quality, lighting conditions, etc. Newer object detection pipelines such as Faster R-CNN, on the other hand, require a large amount of labeled data, do not deal with domain shift, and do not leverage structure. To address these issues, we propose a three stage pipeline in which a class-agnostic region proposal network is followed by a low-shot similarity prediction classifier. In order to exploit the data dependency within a PCB, we design a novel Graph Network block to refine the component features conditioned on each PCB. To the best of our knowledge, this is one of the earliest attempts to train a deep learning based model for such tasks, and we demonstrate improvements over recent graph networks for this task. We also provide in-depth analysis and discussion for this challenging task, pointing to future research.
机译:本文提出了一个具有挑战性的计算机视觉任务,即检测PCB上的通用组件,以及一种新颖的深度学习方法,能够共同利用各个组件的外观和跨电路板结构的信息传播准确地检测和识别PCB上的各种类型的组件。由于手动数据标签的费用,对组件类型的高度不平衡分布,以及跨电路板的重要域移位,基于传统图像处理技术的最早尝试无法概括为具有各种质量,照明条件等的PCB图像。更新另一方面,对象检测管道,例如更快的R-CNN,需要大量标记数据,不处理域移位,并且不利用结构。为了解决这些问题,我们提出了一个三阶段的管道,其中A类禁止区域提案网络之后是低镜头相似性预测分类器。为了利用PCB内的数据依赖性,我们设计一种新颖的图形网络块以优化每个PCB上的组件功能。据我们所知,这是最早尝试为此类任务培训基于深度学习的模型的尝试之一,我们向该任务的最近图形网络展示了改进。我们还为这项挑战性的任务提供了深入的分析和讨论,指出未来的研究。

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