HARPER

Exploring 3D Human Pose Estimation and Forecasting from the Robot’s Perspective: The HARPER Dataset

Dataset Information
Modalities
Images, Videos, 3D, RGB-D
Introduced
2024
License
Unknown
Homepage

Overview

We introduce HARPER, a novel dataset for 3D body pose estimation and forecast in dyadic interactions between users and \spot, the quadruped robot manufactured by Boston Dynamics. The key-novelty is the focus on the robot's perspective, i.e., on the data captured by the robot's sensors. These make 3D body pose analysis challenging because being close to the ground captures humans only partially. The scenario underlying HARPER includes 15 actions, of which 10 involve physical contact between the robot and users. The Corpus contains not only the recordings of the built-in stereo cameras of Spot, but also those of a 6-camera OptiTrack system (all recordings are synchronized). This leads to ground-truth skeletal representations with a precision lower than a millimeter. In addition, the Corpus includes reproducible benchmarks on 3D Human Pose Estimation, Human Pose Forecasting, and Collision Prediction, all based on publicly available baseline approaches. This enables future HARPER users to rigorously compare their results with those we provide in this work.

Source: [Download dataset] (https://github.com/intelligolabs/HARPER)

Variants: HARPER

Associated Benchmarks

This dataset is used in 2 benchmarks:

Recent Benchmark Submissions

Task Model Paper Date
2D Pose Estimation HRNet Deep High-Resolution Representation Learning for … 2019-02-25
3D Pose Estimation HRNet + Depth Deep High-Resolution Representation Learning for … 2019-02-25

Research Papers

Recent papers with results on this dataset: