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KITTI Tutorial

Introduction

This is personal result for studying Self-Driving Techs. In this tutorial, I'll upload various codes from basic methods(e.g. lidar point projection) to state-of-the-art techs(e.g. deeplearning-based vehicle detection). Mainly, 'velodyne, camera' data-based approach will be discussed but when the time allows, I'll treat stereo vision, too. Also, Kitti-dataset-related simple codes(e.g. load tracklet or velodyne points) are in kitti_foundation.py coded by myself.

Before start,

Dataset

KITTI 2011_09_26_drive_0005 dataset

tutorials

Velodyne -> Panoramic Image : Convert Velodyne data(model : HDL-64E) to panoramic image.

panorama_image

Velodyne -> Top-View Image : Convert Velodyne data(model : HDL-64E) to Top-view image.

topview_image

Velodyne to Image Projection : Project Velodyne points(model : HDL-64E) to camera Image.

projection_image

Display 3D Tracklet : Display 3D Tracklet on image

tracklet_image

Contributions / Comments

always welcome any kind of comments and pull-requests

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Tutorial for using Kitti dataset easily

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  • Jupyter Notebook 99.6%
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