Due to the sparsity of point clouds obtained by LIDAR, the depth information is usually not complete and dense. The depth completion task is to recover dense depth information from sparse depth information. However, most of the current deep completion networks use RGB images as guidance, which are more like a processing method of information fusion. They are not valid when there is only sparse depth data and no other color information. Therefore, this paper proposes an information-reinforced completion network for a single sparse depth input. We use a multi-resolution dense progressive fusion structure to maximize the multi-scale information and optimize the global situation by point folding. At the same time, we re-aggregate the confidence...
Depth images generated by direct projection of LiDAR point clouds on the image plane suffer from a g...
In this paper, we propose enhancing monocular depth estimation by adding 3D points as depth guidance...
In this paper, we propose enhancing monocular depth estimation by adding 3D points as depth guidance...
Dense depth perception is critical for many applications. However, LiDAR sensors can only provide sp...
Abstract Sparse LiDAR depth completion is a beneficial task for many robotic applications. It common...
© 2019 IEEE. Depth completion, the technique of estimating a dense depth image from sparse depth mea...
International audienceConvolutional neural networks are designed for dense data, but vision data is ...
International audienceConvolutional neural networks are designed for dense data, but vision data is ...
Unsupervised depth completion aims to recover dense depth from the sparse one without using the grou...
© 2018 IEEE. We consider the problem of dense depth prediction from a sparse set of depth measuremen...
We propose a non-learning depth completion method for a sparse depth map captured using a light dete...
Exploiting internal spatial geometric constraints of sparse LiDARs is beneficial to depth completion...
Complete depth information and efficient estimators have become vital ingredients in scene understan...
Stereo-LiDAR fusion is a promising task in that we can utilize two different types of 3D perceptions...
Depth images generated by direct projection of LiDAR point clouds on the image plane suffer from a g...
Depth images generated by direct projection of LiDAR point clouds on the image plane suffer from a g...
In this paper, we propose enhancing monocular depth estimation by adding 3D points as depth guidance...
In this paper, we propose enhancing monocular depth estimation by adding 3D points as depth guidance...
Dense depth perception is critical for many applications. However, LiDAR sensors can only provide sp...
Abstract Sparse LiDAR depth completion is a beneficial task for many robotic applications. It common...
© 2019 IEEE. Depth completion, the technique of estimating a dense depth image from sparse depth mea...
International audienceConvolutional neural networks are designed for dense data, but vision data is ...
International audienceConvolutional neural networks are designed for dense data, but vision data is ...
Unsupervised depth completion aims to recover dense depth from the sparse one without using the grou...
© 2018 IEEE. We consider the problem of dense depth prediction from a sparse set of depth measuremen...
We propose a non-learning depth completion method for a sparse depth map captured using a light dete...
Exploiting internal spatial geometric constraints of sparse LiDARs is beneficial to depth completion...
Complete depth information and efficient estimators have become vital ingredients in scene understan...
Stereo-LiDAR fusion is a promising task in that we can utilize two different types of 3D perceptions...
Depth images generated by direct projection of LiDAR point clouds on the image plane suffer from a g...
Depth images generated by direct projection of LiDAR point clouds on the image plane suffer from a g...
In this paper, we propose enhancing monocular depth estimation by adding 3D points as depth guidance...
In this paper, we propose enhancing monocular depth estimation by adding 3D points as depth guidance...