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Putting Objects in Perspective

机译:透视物体

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摘要

Image understanding requires not only individually estimating elements of the visual world but also capturing the interplay among them. In this paper, we provide a framework for placing local object detection in the context of the overall 3D scene by modeling the interdependence of objects, surface orientations, and camera viewpoint. Most object detection methods consider all scales and locations in the image as equally likely. We show that with probabilistic estimates of 3D geometry, both in terms of surfaces and world coordinates, we can put objects into perspective and model the scale and location variance in the image. Our approach reflects the cyclical nature of the problem by allowing probabilistic object hypotheses to refine geometry and vice-versa. Our framework allows painless substitution of almost any object detector and is easily extended to include other aspects of image understanding. Our results confirm the benefits of our integrated approach.
机译:图像理解不仅需要单独估计视觉世界的元素,还需要捕捉它们之间的相互作用。在本文中,我们提供了一个框架,可通过对对象,表面方向和相机视点之间的相互关系进行建模来在整个3D场景中放置局部对象检测。大多数对象检测方法都将图像中的所有比例和位置均视为可能性。我们表明,通过对表面和世界坐标方面的3D几何进行概率估计,我们可以将对象置于透视图中,并对图像中的比例和位置方差建模。我们的方法通过允许概率对象假设提炼几何,反之亦然,从而反映了问题的周期性。我们的框架允许几乎任何物体检测器的无痛替换,并且易于扩展以包括图像理解的其他方面。我们的结果证实了我们整合方法的好处。

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