Given the feature volume of a person and it's skeleton
10
SMPL: A Skinned Multi-Person Linear Model
11
Deep Autoencoder
12
Analysis of learning
13
Quantitative Results
14
CMU Panoptic dataset
15
Qualitative Results
Description:
Explore a deep network approach for integrated 3D sensing of multiple people in natural images in this 22-minute video lecture from the University of Central Florida. Delve into the problem of human localization and grouping, learning about the objective to find skeletal joints and the use of Panoptic Studio for ground truth. Examine the computational pipeline, including deep volume encoding, limb scoring, and 3D pose decoding with shape estimation. Discover the SMPL (Skinned Multi-Person Linear Model) and its application in deep autoencoders. Analyze the learning process and review both quantitative and qualitative results using the CMU Panoptic dataset, gaining insights into advanced computer vision techniques for multi-person 3D sensing in natural environments.
Deep Network for Integrated 3D Sensing of Multiple People in Natural Images