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CLONE: A 3DGS-Based Closed-Loop Differentiable Optimization Framework for Single-Image Normal Estimation

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arXiv CS 1d ago

Towards Estimating Normal and Shear Interface Pressures in Prosthetic Sockets via Least Squares and Mechanics Modeling

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Spectral density estimation for normal matrices

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Conditional Normalizing Flows for Forward and Backward Joint State and Parameter Estimation

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Passive heart-rate monitoring during smartphone use in everyday life

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Towards Consistent Video Geometry Estimation

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Flow-Based Density Ratio Estimation for Intractable Distributions with Applications in Genomics

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arXiv CS 7d ago