PedX: Benchmark Dataset for Metric 3D Pose Estimation of Pedestrians in Complex Urban Intersections - Robotics Institute Carnegie Mellon University

PedX: Benchmark Dataset for Metric 3D Pose Estimation of Pedestrians in Complex Urban Intersections

Wonhui Kim, Manikandasriram Srinivasan Ramanagopal, Charles Barto, Ming-Yuan Yu, Karl Rosaen, Nick Goumas, Ram Vasudevan, and Matthew Johnson-Roberson
Journal Article, IEEE Robotics and Automation Letters, Vol. 4, No. 2, pp. 1940 - 1947, April, 2019

Abstract

This paper presents a novel dataset titled PedX, a large-scale multimodal collection of pedestrians at complex urban intersections. PedX consists of more than 5,000 pairs of high-resolution (12MP) stereo images and LiDAR data along with providing 2D and 3D labels of pedestrians. We also present a novel 3D model fitting algorithm for automatic 3D labeling harnessing constraints across different modalities and novel shape and temporal priors. All annotated 3D pedestrians are localized into the real-world metric space, and the generated 3D models are validated using a mocap system configured in a controlled outdoor environment to simulate pedestrians in urban intersections. We also show that the manual 2D labels can be replaced by state-of-the-art automated labeling approaches, thereby facilitating automatic generation of large scale datasets.

BibTeX

@article{-2019-130152,
author = {Wonhui Kim and Manikandasriram Srinivasan Ramanagopal and Charles Barto and Ming-Yuan Yu and Karl Rosaen and Nick Goumas and Ram Vasudevan and Matthew Johnson-Roberson},
title = {PedX: Benchmark Dataset for Metric 3D Pose Estimation of Pedestrians in Complex Urban Intersections},
journal = {IEEE Robotics and Automation Letters},
year = {2019},
month = {April},
volume = {4},
number = {2},
pages = {1940 - 1947},
}