Multi-modal Human Mesh Recovery (SMPL) using image and LiDAR data
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Updated
Sep 16, 2024 - Python
Multi-modal Human Mesh Recovery (SMPL) using image and LiDAR data
Human 3D model partiality representation via Mean Curvature Flow
"Linear Regression vs. Deep Learning". The source code for a simple but effective baseline method for human body measurement estimation using only height and weight information about the person.
Code used in the GRADE framework to convert SMPL animation data to the USD file format to be used in the IsaacSim/Omniverse simulators.
➿A rerun plugin and tools for 3D animation
A real time virtual try-on application using SMPL models and OpenCV
The Fast Way From Vertices to Parametric 3D Humans
Measure the SMPL body model
Official implementation of CVPR2020 paper "Learning to Dress 3D People in Generative Clothing" https://arxiv.org/abs/1907.13615
CVPR 2022 - Official code repository for the paper: Accurate 3D Body Shape Regression using Metric and Semantic Attributes.
API to support AIST++ Dataset: https://google.github.io/aistplusplus_dataset
[CVPR 2023] Official implementation of the paper "One-Stage 3D Whole-Body Mesh Recovery with Component Aware Transformer"
[CVPR'22] ICON: Implicit Clothed humans Obtained from Normals
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