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ACCURATE 3D CAR POSE ESTIMATION

机译:准确的3D汽车姿势估计

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摘要

We propose a new approach for accurate car pose estimation in images using only a dataset of 3D untextured models. Our algorithm detects both a car and its 3D pose. It is based on the matching of 3D models with the car in the image. With a part detector based on Convolutional Neural Networks, interest points corresponding to predefined 3D parts are extracted from the image. Then, we use the car geometry to find which parts are relevant across viewpoints. Finally, a 2D/3D pose estimator is used to recover the 3D pose of the car. The main contribution is to learn appearance and geometry models from 3D models dataset only. Experiments show that the method is very competitive for car detection and coarse viewpoint classification and improves the 3D pose estimation over the state-of-the-art methods.
机译:我们提出了一种新方法,用于仅使用3D未致致细型模型的数据集进行了准确的汽车姿态估计。我们的算法检测到汽车及其3D姿势。它基于3D模型与图像中的汽车的匹配。利用基于卷积神经网络的零件检测器,从图像中提取对应于预定义的3D部分的兴趣点。然后,我们使用汽车几何形状来查找跨视点相关的部分。最后,使用2D / 3D姿势估计器来恢复汽车的3D姿势。主要贡献是从3D模型数据集中学习外观和几何模型。实验表明,该方法对汽车检测和粗视点分类非常有竞争力,并提高了最先进的方法的3D姿势估计。

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