CondiMen: Conditional Multi-Person Mesh Recovery
Br\'egier Romain, Baradel Fabien, Lucas Thomas, Galaaoui Salma, Armando Matthieu, Weinzaepfel Philippe, Rogez Gr\'egory

TL;DR
CondiMen introduces a Bayesian approach to multi-person mesh recovery that models uncertainties and correlations, improving prediction accuracy and enabling real-time multi-view applications.
Contribution
It presents a novel Bayesian network framework for multi-person mesh recovery that captures uncertainties and allows integration of additional information.
Findings
Achieves state-of-the-art or better performance.
Captures uncertainties and correlations in pose estimation.
Effectively exploits multi-view and prior information.
Abstract
Multi-person human mesh recovery (HMR) consists in detecting all individuals in a given input image, and predicting the body shape, pose, and 3D location for each detected person. The dominant approaches to this task rely on neural networks trained to output a single prediction for each detected individual. In contrast, we propose CondiMen, a method that outputs a joint parametric distribution over likely poses, body shapes, intrinsics and distances to the camera, using a Bayesian network. This approach offers several advantages. First, a probability distribution can handle some inherent ambiguities of this task -- such as the uncertainty between a person's size and their distance to the camera, or simply the loss of information when projecting 3D data onto the 2D image plane. Second, the output distribution can be combined with additional information to produce better predictions, by…
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Taxonomy
TopicsHuman Pose and Action Recognition
