In orthogonal world coordinates, a Manhattan world lying along cuboid buildings is widely useful for various computer vision tasks. However, the Manhattan world has much room for improvement because the origin of pan angles from an image is arbitrary, that is, four-fold rotational symmetric ambiguity of pan angles. To address this problem, we propose a definition for the pan-angle origin based on the directions of the roads with respect to a camera and the direction of travel. We propose a learning-based calibration method that uses heatmap regression to remove the ambiguity by each direction of labeled image coordinates, similar to pose estimation keypoints. Simultaneously, our two-branched network recovers the rotation and removes fisheye distortion from a general scene image. To alleviate the lack of vanishing points in images, we introduce auxiliary diagonal points that have the optimal 3D arrangement of spatial uniformity. Extensive experiments demonstrated that our method outperforms conventional methods on large-scale datasets and with off-the-shelf cameras.
翻译:在正交世界坐标系中,曼哈顿世界围绕长方体建筑物是各种计算机视觉任务的普遍选项。然而,曼哈顿世界有很大的改进空间,因为来自图像的平角起点是任意的,即平角四重旋转对称歧义。为解决这个问题,我们提出了一个新的平角起点定义,它基于路的方向和旅行方向相对于相机的方向。我们提出了一种基于热度图回归的学习标定方法,通过每个方向的标记图像坐标类似于姿态估计关键点来消除歧义。同时,我们的双分支网络从一般场景图像中恢复旋转并消除鱼眼畸变。为了缓解图像中缺乏消失点的问题,我们引入了辅助对角点,其具有空间均匀性的最佳三维排列。广泛的实验表明,我们的方法在大规模数据集和外置相机上都优于传统方法。