首页> 外文会议>International conference on neural information processing;Annual conference of Asia-Pacific Neural Network Society >Direct Image to Point Cloud Descriptors Matching for 6-DOF Camera Localization in Dense 3D Point Clouds
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Direct Image to Point Cloud Descriptors Matching for 6-DOF Camera Localization in Dense 3D Point Clouds

机译:在密集3D点云中直接图像到点云描述符匹配以实现6自由度相机定位

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We propose a novel concept to directly match feature descriptors extracted from RGB images, with feature descriptors extracted from 3D point clouds. We use this concept to localize the position and orientation (pose) of the camera of a query image in dense point clouds. We generate a dataset of matching 2D and 3D descriptors, and use it to train a proposed Descriptor-Matcher algorithm. To localize a query image in a point cloud, we extract 2D key-points and descriptors from the query image. Then the Descriptor-Matcher is used to find the corresponding pairs 2D and 3D key-points by matching the 2D descriptors with the pre-extracted 3D descriptors of the point cloud. This information is used in a robust pose estimation algorithm to localize the query image in the 3D point cloud. Experiments demonstrate that directly matching 2D and 3D descriptors is not only a viable idea but can also be used for camera pose localization in dense 3D point clouds with high accuracy.
机译:我们提出了一种新颖的概念,可以直接匹配从RGB图像中提取的特征描述符和从3D点云中提取的特征描述符。我们使用此概念在密集点云中定位查询图像的摄像头的位置和方向(姿势)。我们生成了一个匹配2D和3D描述符的数据集,并使用它来训练提出的Descriptor-Matcher算法。为了在点云中定位查询图像,我们从查询图像中提取2D关键点和描述符。然后,通过将2D描述符与点云的预提取3D描述符进行匹配,使用描述符匹配器来找到对应的2D和3D关键点对。该信息用于鲁棒的姿态估计算法中,以将查询图像定位在3D点云中。实验表明,直接匹配2D和3D描述符不仅是一个可行的想法,而且还可以用于高精度3D点云中的相机姿势定位。

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