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Featureless 2D–3D pose estimation by minimising an illumination-invariant loss

机译:通过最小化照明不变损失来进行无特征2D–3D姿势估计

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The problem of identifying the 3D pose of a known object from a given 2D image has important applications in Computer Vision ranging from robotic vision to image analysis. Our proposed method of registering a 3D model of a known object on a given 2D photo of the object has numerous advantages over existing methods: It does neither require prior training nor learning, nor knowledge of the camera parameters, nor explicit point correspondences or matching features between image and model. Unlike techniques that estimate a partial 3D pose (as in an overhead view of traffic or machine parts on a conveyor belt), our method estimates the complete 3D pose of the object, and works on a single static image from a given view, and under varying and unknown lighting conditions. For this purpose we derive a novel illumination-invariant distance measure between 2D photo and projected 3D model, which is then minimised to find the best pose parameters. Results for vehicle pose detection are presented.
机译:从给定的2D图像中识别已知对象的3D姿势的问题在计算机视觉中具有重要的应用,范围从机器人视觉到图像分析。我们提出的在已知对象的给定2D照片上注册已知对象的3D模型的方法比现有方法具有许多优点:它不需要事先培训或学习,也不需要了解相机参数,也不需要明确的点对应关系或匹配特征在图像和模型之间。与估算局部3D姿态的技术(如在运输带上的交通或机器零件的俯视图)不同,我们的方法估算对象的完整3D姿态,并从给定视图和下方对单个静态图像进行处理变化和未知的照明条件。为此,我们导出了2D照片与投影3D模型之间的新颖的照明不变距离度量,然后将其最小化以找到最佳姿势参数。给出了车辆姿态检测的结果。

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