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Obstacle Detection, using PCL library fuctions, to detect objects in a point cloud data from a LIDAR mounted on a Self-Driving Car.

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rvnandwani/LIDAR-Obstacle-Detection-Sensor-Fusion-Udacity-Program

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LIDAR Obstacle Detection

This is a project of Udacity Sensor Fusion Nanodegree. The starter code of this project was downloaded from Udacity's official github repositry.

If you are facing trouble in running the code, I suggest you to refer this first for installation of all the dependencies.


Step by step implementation of the project

  1. Created an enviornment to visualize the LIDAR working principle. image

  2. Visualized point cloud data generated image1

  3. Planer Segmentation using RANSAC image2

  4. Voxel Filtering and implemented Clustering and bounding box on the obstacles image3

  5. Streaming the point cloud files and then applying to all the frames as detected. video

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Obstacle Detection, using PCL library fuctions, to detect objects in a point cloud data from a LIDAR mounted on a Self-Driving Car.

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