CVAIDec 10, 2022

Progressive Multi-view Human Mesh Recovery with Self-Supervision

arXiv:2212.05223v118 citationsh-index: 64
Originality Incremental advance
AI Analysis

This addresses robustness issues in applications like motion capture and sport analysis, but is incremental as it builds on existing multi-view methods.

The paper tackles the problem of poor generalization in multi-view 3D human mesh estimation by proposing a simulation-based training pipeline that uses intermediate 2D representations, learnable calibration, and progressive aggregation, demonstrating superiority in unseen in-the-wild scenarios.

To date, little attention has been given to multi-view 3D human mesh estimation, despite real-life applicability (e.g., motion capture, sport analysis) and robustness to single-view ambiguities. Existing solutions typically suffer from poor generalization performance to new settings, largely due to the limited diversity of image-mesh pairs in multi-view training data. To address this shortcoming, people have explored the use of synthetic images. But besides the usual impact of visual gap between rendered and target data, synthetic-data-driven multi-view estimators also suffer from overfitting to the camera viewpoint distribution sampled during training which usually differs from real-world distributions. Tackling both challenges, we propose a novel simulation-based training pipeline for multi-view human mesh recovery, which (a) relies on intermediate 2D representations which are more robust to synthetic-to-real domain gap; (b) leverages learnable calibration and triangulation to adapt to more diversified camera setups; and (c) progressively aggregates multi-view information in a canonical 3D space to remove ambiguities in 2D representations. Through extensive benchmarking, we demonstrate the superiority of the proposed solution especially for unseen in-the-wild scenarios.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes