•2 min read•from Machine Learning
[D] Solving the "Liquid-Solid Interface" Problem: 116 High-Fidelity Datasets of Coastal Physics (Waves, Saturated Sand, Light Transport)
![[D] Solving the "Liquid-Solid Interface" Problem: 116 High-Fidelity Datasets of Coastal Physics (Waves, Saturated Sand, Light Transport)](/_next/image?url=https%3A%2F%2Fpreview.redd.it%2Fkopt7z5mhjqg1.jpeg%3Fwidth%3D640%26crop%3Dsmart%26auto%3Dwebp%26s%3Dd6957c64b6fef2eb2adf9a6146d1a86d48531ad9&w=3840&q=75)
| Modern generative models (Sora, Runway, Kling) still struggle with the complex physics of the shoreline. I’ve spent months capturing 116 datasets from the Arabian Sea to document phenomena that are currently poorly understood by AI:
Technical Integrity:
Full Metadata & Labeling: Each set includes precise technical specs (ISO, Shutter, GPS) and comprehensive labeling. I’m looking for professional feedback from the ML/CV community: How "clean" and "complete" are these datasets for your current training pipelines? Access for Evaluation:
I am interested in whether this level of physical "ground truth" can significantly reduce flickering and geometric artifacts in fluid-surface generation. [link] [comments] |
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