File Exchange

image thumbnail


version 1.0.0 (3.57 MB) by muhammet balcilar
Create Dense Depth Map Image for Known Poisitioned Camera from Lidar Point Cloud


Updated 21 Aug 2018

GitHub view license on GitHub

Full Dense Depth Map Image for Known Positioned Camera from Lidar Point Cloud
Lidar sensors can supply us great information about circumferences and that information are very crucial for many automatic robotic application such as self-driving car. Although, Lidar sensor gives us 360 degree of view point cloud and it is quite dense, if we want to match any camera images within those point cloud, the depth map for certain camera become pretty sparse and it is far behind to use that matched depth information for any purpose.

In this project, we are focusing on reading point cloud, camera image and calibration parameters from sample Kitti dataset [1] and create dense depth image for certain camera whose translation and rotations are known.

Cite As

muhammet balcilar (2019). DenseDepthMap (, GitHub. Retrieved .

Comments and Ratings (0)

MATLAB Release Compatibility
Created with R2016a
Compatible with any release
Platform Compatibility
Windows macOS Linux