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Saliency-Guided Detection of Unknown Objects in RGB-D Indoor Scenes

机译:RGB-D室内场景中未知对象的显着性引导检测

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摘要

This paper studies the problem of detecting unknown objects within indoor environments in an active and natural manner. The visual saliency scheme utilizing both color and depth cues is proposed to arouse the interests of the machine system for detecting unknown objects at salient positions in a 3D scene. The 3D points at the salient positions are selected as seed points for generating object hypotheses using the 3D shape. We perform multi-class labeling on a Markov random field (MRF) over the voxels of the 3D scene, combining cues from object hypotheses and 3D shape. The results from MRF are further refined by merging the labeled objects, which are spatially connected and have high correlation between color histograms. Quantitative and qualitative evaluations on two benchmark RGB-D datasets illustrate the advantages of the proposed method. The experiments of object detection and manipulation performed on a mobile manipulator validate its effectiveness and practicability in robotic applications.
机译:本文研究了以主动自然的方式检测室内环境中未知物体的问题。提出了利用颜色和深度提示的视觉显着性方案,以引起机器系统的兴趣,该机器系统用于检测3D场景中显着位置处的未知对象。选择突出位置处的3D点作为种子点,以使用3D形状生成对象假设。我们结合对象假设和3D形状的提示,对3D场景的体素在Markov随机场(MRF)上执行多类标记。通过合并标记对象,可以进一步完善MRF的结果,这些对象在空间上相互连接并且在颜色直方图之间具有高度相关性。对两个基准RGB-D数据集的定量和定性评估说明了该方法的优势。在移动操纵器上执行的对象检测和操纵实验验证了其在机器人应用中的有效性和实用性。

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