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Project Goals
We hope that the creation of this database, which we call
HumanEva-I (The ``I'' is an acknowledgment that the current
database has limitations and what we learn from this first
database will most likely lead to improved database in the
future), will advance the human motion and pose estimation
community by providing a structured comprehensive development
dataset with support code and quantitative evaluation metrics.
The motivation behind design of the HumanEva-I dataset is that,
as a research community, we need to answer the following
questions:
- What is the state-of-the art in human pose estimation?
- What is the state-of-the art in human motion tracking?
- What algorithm design decisions effect the human pose
estimation and tracking performance and to what extent?
- What are the strengths and weaknesses of different pose
estimation and tracking algorithms?
- What are the main unsolved problems in human pose
estimation and tracking?
In answering these questions, comparisons must be made across
a variety of different methods and models to find which choices
are most important for a practical and robust solution.
Data description
The HumanEva-I dataset contains 7 calibrated video sequences
(4 grayscale and 3 color) that are synchronized with 3D body
poses obtained from a motion capture system. The database
contains 4 subjects performing a 6 common actions (e.g. walking,
jogging, gesturing, etc.). The error metrics for computing error
in 2D and 3D pose are provided to participants. The dataset
contains training, validation and testing (with withheld ground
truth) sets.
Example subjects


Example GUI

Acknowledgements
This project was supported in part by gifts from Honda
Research Institute and Intel Corporation. We would like to thank
Ming-Hsuan Yang, Rui Li, Alexandru Balan and Payman Yadollahpour
for help in data collection and post-processing. We also would
like to thank Stan Sclaroff for making the color video capture
equipment available for this effort. |