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Estimating the aspect layout of object categories

机译:估计对象类别的外观布局

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摘要

In this work we seek to move away from the traditional paradigm for 2D object recognition whereby objects are identified in the image as 2D bounding boxes. We focus instead on: i) detecting objects; ii) identifying their 3D poses; iii) characterizing the geometrical and topological properties of the objects in terms of their aspect configurations in 3D. We call such characterization an object's aspect layout (see Fig. 1). We propose a new model for solving these problems in a joint fashion from a single image for object categories. Our model is constructed upon a novel framework based on conditional random fields with maximal margin parameter estimation. Extensive experiments are conducted to evaluate our model's performance in determining object pose and layout from images. We achieve superior viewpoint accuracy results on three public datasets and show extensive quantitative analysis to demonstrate the ability of accurately recovering the aspect layout of objects.
机译:在这项工作中,我们试图摆脱2D对象识别的传统范式,即将图像中的对象识别为2D边界框。相反,我们专注于:i)检测物体; ii)确定其3D姿势; iii)根据对象在3D中的外观配置来表征对象的几何和拓扑特性。我们称这种表征为对象的外观布局(见图1)。我们提出了一种新的模型,用于从单一图像中以对象类别联合解决这些问题。我们的模型是基于基于条件随机字段且具有最大余量参数估计的新颖框架构建的。进行了广泛的实验,以评估我们的模型在根据图像确定对象姿态和布局方面的性能。我们在三个公开的数据集上获得了卓越的视点准确性结果,并进行了广泛的定量分析,以证明准确恢复对象的外观布局的能力。

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