08. Lidar Obstacle Detection Project

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Lidar Obstacle Detection Project

ND313 C1 L4 A30 Lidar Obstacle Detection Project [LB]

Project Details

In this project you will take everything that you have learned for processing point clouds, and use it to detect car and trucks on a narrow street using lidar. The detection pipeline should follow the covered methods, filtering, segmentation, clustering, and bounding boxes. Also the segmentation, and clustering methods should be created from scratch using the previous lesson’s guidelines for reference. The finished result will look like the image below, placing bounding boxes around all obstacles on the road.

Project Results

Lidar Obstacle Detection.

Lidar Obstacle Detection.

Workspace

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Workspace Information:

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  • Workspace type: react
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