zhanghang1989/Torch-Encoding-Layer
Deep Texture Encoding Network
This project helps researchers and engineers analyze and categorize materials and patterns in images. It takes raw image data and outputs precise classifications of textures, patterns, and materials. Computer vision scientists, materials scientists, and quality control engineers who need to accurately identify and differentiate visual surface properties would find this useful.
No commits in the last 6 months.
Use this if you need to build or evaluate advanced computer vision models for highly accurate texture and material recognition.
Not ideal if you are a non-developer seeking a ready-to-use application for everyday image classification.
Stars
92
Forks
28
Language
Lua
License
—
Last pushed
Dec 21, 2020
Commits (30d)
0
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