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Coherent Object Detection with 3D Geometric Context from a Single Image

机译:从单个图像利用3D几何上下文进行相干对象检测

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Objects in a real world image cannot have arbitrary appearance, sizes and locations due to geometric constraints in 3D space. Such a 3D geometric context plays an important role in resolving visual ambiguities and achieving coherent object detection. In this paper, we develop a RANSAC-CRF framework to detect objects that are geometrically coherent in the 3D world. Different from existing methods, we propose a novel generalized RANSAC algorithm to generate global 3D geometry hypotheses from local entities such that outlier suppression and noise reduction is achieved simultaneously. In addition, we evaluate those hypotheses using a CRF which considers both the compatibility of individual objects under global 3D geometric context and the compatibility between adjacent objects under local 3D geometric context. Experiment results show that our approach compares favorably with the state of the art.
机译:由于3D空间中的几何约束,真实世界图像中的对象不能具有任意外观,大小和位置。这种3D几何上下文在解析视觉模糊和实现相干对象检测方面发挥着重要作用。在本文中,我们开发了RANSAC-CRF框架,以检测3D世界上几何上相干的物体。与现有方法不同,我们提出了一种新的广义RANSAC算法,以从局部实体生成全局3D几何假设,使得同时实现异常抑制和降噪。此外,我们使用CRF评估那些假设,该CRF考虑全局3D几何上下文下的各个对象的兼容性以及本地3D几何上下文下的相邻对象之间的兼容性。实验结果表明,我们的方法与现有技术有利地比较。

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