Unsupervised Cross-Modal Alignment for Multi-person 3D Pose Estimation - Robotics Institute Carnegie Mellon University

Unsupervised Cross-Modal Alignment for Multi-person 3D Pose Estimation

Jogendra Nath Kundu, Ambareesh Revanur, Govind Vitthal Waghmare, Rahul Mysore Venkatesh, and R. Venkatesh Babu
Conference Paper, Proceedings of (ECCV) European Conference on Computer Vision, pp. 35 - 52, August, 2020

Abstract

We present a deployment friendly, fast bottom-up framework for multi-person 3D human pose estimation. We adopt a novel neural representation of multi-person 3D pose which unifies the position of person instances with their corresponding 3D pose representation. This is realized by learning a generative pose embedding which not only ensures plausible 3D pose predictions, but also eliminates the usual keypoint grouping operation as employed in prior bottom-up approaches. Further, we propose a practical deployment paradigm where paired 2D or 3D pose annotations are unavailable. In the absence of any paired supervision, we leverage a frozen network, as a teacher model, which is trained on an auxiliary task of multi-person 2D pose estimation. We cast the learning as a cross-modal alignment problem and propose training objectives to realize a shared latent space between two diverse modalities. We aim to enhance the model’s ability to perform beyond the limiting teacher network by enriching the latent-to-3D pose mapping using artificially synthesized multi-person 3D scene samples. Our approach not only generalizes to in-the-wild images, but also yields a superior trade-off between speed and performance, compared to prior top-down approaches. Our approach also yields state-of-the-art multi-person 3D pose estimation performance among the bottom-up approaches under consistent supervision levels.

BibTeX

@conference{Kundu-2020-126881,
author = {Jogendra Nath Kundu and Ambareesh Revanur and Govind Vitthal Waghmare and Rahul Mysore Venkatesh and R. Venkatesh Babu},
title = {Unsupervised Cross-Modal Alignment for Multi-person 3D Pose Estimation},
booktitle = {Proceedings of (ECCV) European Conference on Computer Vision},
year = {2020},
month = {August},
pages = {35 - 52},
}