基于二维特征的工业零件层次识别检测器和描述符选择系统

Ibon Merino, J. Azpiazu, Anthony Remazeilles, B. Sierra
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引用次数: 3

摘要

图像中关键点的检测和描述是计算机视觉中一个被广泛研究的问题。像SIFT、SURF或ORB这样的方法在计算上非常高效。针对工业零件的目标识别问题,提出了一种基于层次分类的解决方案。减少实例的数量会带来更好的性能,这正是层次分类的目的所在。我们证明了这种方法比只使用ORB、SIFT或FREAK这样的方法性能更好,尽管速度相当慢。
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2D Features-based Detector and Descriptor Selection System for Hierarchical Recognition of Industrial Parts
Detection and description of keypoints from an image is a well-studied problem in Computer Vision. Some methods like SIFT, SURF or ORB are computationally really efficient. This paper proposes a solution for a particular case study on object recognition of industrial parts based on hierarchical classification. Reducing the number of instances leads to better performance, indeed, that is what the use of the hierarchical classification is looking for. We demonstrate that this method performs better than using just one method like ORB, SIFT or FREAK, despite being fairly slower.
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