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首页> 外文期刊>International Journal of Computer Vision >A Scale Independent Selection Process for 3D Object Recognition in Cluttered Scenes
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A Scale Independent Selection Process for 3D Object Recognition in Cluttered Scenes

机译:凌乱场景中3D对象识别的尺度独立选择过程

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摘要

During the last years a wide range of algorithms and devices have been made available to easily acquire range images. The increasing abundance of depth data boosts the need for reliable and unsupervised analysis techniques, spanning from part registration to automated segmentation. In this context, we focus on the recognition of known objects in cluttered and incomplete 3D scans. Locating and fitting a model to a scene are very important tasks in many scenarios such as industrial inspection, scene understanding, medical imaging and even gaming. For this reason, these problems have been addressed extensively in the literature. Several of the proposed methods adopt local descriptor-based approaches, while a number of hurdles still hinder the use of global techniques. In this paper we offer a different perspective on the topic: We adopt an evolutionary selection algorithm that seeks global agreement among surface points, while operating at a local level. The approach effectively extends the scope of local descriptors by actively selecting correspondences that satisfy global consistency constraints, allowing us to attack a more challenging scenario where model and scene have different, unknown scales. This leads to a novel and very effective pipeline for 3D object recognition, which is validated with an extensive set of experiments and comparisons with recent techniques at the state of the art.
机译:在过去的几年中,提供了广泛的算法和设备来轻松获取距离图像。从零件配准到自动分割,深度数据量的不断增加,增强了对可靠且不受监督的分析技术的需求。在这种情况下,我们专注于在杂乱和不完整的3D扫描中识别已知对象。在许多情况下(例如工业检查,场景理解,医学成像甚至游戏),为场景定位和拟合模型都是非常重要的任务。因此,这些问题已在文献中得到了广泛解决。几种建议的方法采用基于局部描述符的方法,而许多障碍仍然阻碍了全局技术的使用。在本文中,我们对该主题提供了不同的观点:我们采用一种进化选择算法,该算法在局部级别上运行时寻求表面点之间的全局一致性。该方法通过主动选择满足全局一致性约束的对应关系,有效地扩展了局部描述符的范围,从而使我们能够应对模型和场景具有不同未知比例的更具挑战性的场景。这导致了一种新颖且非常有效的3D对象识别流水线,该流水线已通过广泛的实验集以及与最新技术水平的比较得到了验证。

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