#220 Added AI 3D Object Reconstruction Python Script #222
+109
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This commit adds the Python script implementing the AI 3D Construction solution as described in issue
Related Issue
[#216 ]
Closes #216
Description
This pull request adds a Python script for the AI 3D Construction project. The script includes functionality to 3D object reconstruction using stereo vision, the black and white colors in a disparity map . It aims to solve the issue raised in #220 by implementing a robust AI solution.
White (or lighter areas):
Represents objects that are closer to the camera.
The brighter the area, the closer the object or surface in that part of the scene.
Black (or darker areas):
Represents objects that are farther away from the camera.
The darker the area, the farther the object or surface is.
Type of PR
Screenshots / videos
Checklist:
Additional context:
This AI 3D Construction script uses advanced algorithms to simulate and predict :-
Depth Information: The disparity map provides information about the relative depth of objects in the scene. Brighter areas are close, while darker areas are far.
3D Scene Understanding: You can interpret the structure of the scene from this map, as it shows how different objects are positioned in relation to the camera.