In the existing methods, LiDAR odometry shows superior performance, but visual odometry is still widely used for its price advantage. Conventionally, the task of visual odometry mainly rely on the input of continuous images. However, it is very complicated for the odometry network to learn the epipolar geometry information provided by the images. In this paper, the concept of pseudo-LiDAR is introduced into the odometry to solve this problem. The pseudo-LiDAR point cloud back-projects the depth map generated by the image into the 3D point cloud, which changes the way of image representation. Compared with the stereo images, the pseudo-LiDAR point cloud generated by the stereo matching network can get the explicit 3D coordinates. Since the 6 Degrees of Freedom (DoF) pose transformation occurs in 3D space, the 3D structure information provided by the pseudo-LiDAR point cloud is more direct than the image. Compared with sparse LiDAR, the pseudo-LiDAR has a denser point cloud. In order to make full use of the rich point cloud information provided by the pseudo-LiDAR, a projection-aware dense odometry pipeline is adopted. Most previous LiDAR-based algorithms sampled 8192 points from the point cloud as input to the odometry network. The projection-aware dense odometry pipeline takes all the pseudo-LiDAR point clouds generated from the images except for the error points as the input to the network. While making full use of the 3D geometric information in the images, the semantic information in the images is also used in the odometry task. The fusion of 2D-3D is achieved in an image-only based odometry. Experiments on the KITTI dataset prove the effectiveness of our method. To the best of our knowledge, this is the first visual odometry method using pseudo-LiDAR.
翻译:在现有方法中, LiDAR odorat 显示优异性能, 但视觉odorization 仍然被广泛用于其价格优势。 常规上, 视觉odorization的任务主要依靠连续图像的输入。 但是, 观察测定网络非常复杂, 以学习图像提供的上皮极几何信息 。 在本文中, 伪LiDAR 点的概念被引入到观察测量中以解决这个问题。 伪LiDAR 点云后, 将图像生成的深度映入 3D 点云中, 从而改变图像的表达方式。 与立体图像图像的显示方式相比, K- LiDAR 点所生成的伪LiD 点云层云可以得到清晰的 3D 。 由于自由的6 度在 3D 空间中进行变换, 伪LiD 点所提供的3D 结构信息比图像更直接。 与 稀薄的LDAR 点相比, 伪LiDAR 的直径 的直径直径, 在3D 的直径线图中, 也有一个云点 。 。 为了充分利用Odald- daldaldordordord 数据 数据 数据, 数据在 的 Odrodrodaldaldaldaldaldo 数据 上 数据 。