TQTQliu/ET-MVSNet
[ICCV 2023] When Epipolar Constraint Meets Non-local Operators in Multi-View Stereo
This project helps generate highly accurate 3D models from multiple 2D images. By analyzing how points in different photos relate to each other along specific lines, it reconstructs detailed 3D scenes or objects. This tool is ideal for researchers or engineers working on 3D reconstruction tasks who need precise geometric outputs from image sets.
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Use this if you need to create highly accurate 3D models of objects or environments using a collection of 2D photographs and want state-of-the-art precision and efficiency.
Not ideal if you only have a single image, require real-time 3D reconstruction, or are looking for a simple drag-and-drop consumer application.
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77
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1
Language
Python
License
MIT
Category
Last pushed
Mar 14, 2024
Commits (30d)
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