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Virtual ground truth, and pre-selection of 3D interest points for improved repeatability evaluation of 2D detectors

机译:虚拟地面真相和3D兴趣点的预选,可改善2D检测器的可重复性评估

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In Computer Vision, finding simple features is performed using classifiers called interest point (IP) detectors, which are often utilised to track features as the scene changes. For 2D based classifiers it has been intuitive to measure repeated point reliability using 2D metrics given the difficulty to establish ground truth beyond 2D. The aim is to bridge the gap between 2D classifiers and 3D environments, and improve performance analysis of 2D IP classification on 3D objects. This paper builds on existing work with 3D scanned and artificial models to test conventional 2D feature detectors with the assistance of virtualised 3D scenes. Virtual space depth is leveraged in tests to perform pre-selection of closest repeatable points in both 2D and 3D contexts before repeatability is measured. This more reliable ground truth is used to analyse testing configurations with a singular and 12 model dataset across affine transforms in x, y and z rotation, as well as x, y scaling with 9 well known IP detectors. The virtual scene's ground truth demonstrates that 3D preselection eliminates a large portion of false positives that are normally considered repeated in 2D configurations. The results indicate that 3D virtual environments can provide assistance in comparing the performance of conventional detectors when extending their applications to 3D environments, and can result in better classification of features when testing prospective classifiers' performance. A ROC based informedness measure also highlights tradeoffs in 2D/3D performance compared to conventional repeatability measures.
机译:在《计算机视觉》中,使用称为兴趣点(IP)检测器的分类器执行简单特征的查找,这些分类器通常用于跟踪场景变化时的特征。对于基于2D的分类器,鉴于难以建立超越2D的地面真相,使用2D度量标准来测量重复点的可靠性已经很直观了。目的是弥合2D分类器和3D环境之间的差距,并改善对3D对象的2D IP分类的性能分析。本文以现有的3D扫描模型和人工模型为基础,借助虚拟3D场景测试常规2D特征检测器。在测试可重复性之前,在测试中利用虚拟空间深度在2D和3D上下文中执行最接近的可重复点的预选择。这种更可靠的基本原理用于通过x和y和z旋转的仿射变换以及带有9个众所周知的IP检测器的x和y缩放比例的奇异和12个模型数据集来分析测试配置。虚拟场景的基本事实表明,3D预选择消除了通常在2D配置中重复出现的大部分误报。结果表明,当将常规检测器的应用扩展到3D环境时,3D虚拟环境可以提供帮助来比较常规检测器的性能,并且在测试预期分类器的性能时可以带来更好的特征分类。与传统的可重复性度量相比,基于ROC的信息度量还突出显示了2D / 3D性能的权衡。

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