3D Human pose estimation from egocentric inputs

Egocentric pose estimation is essential for developing embodied AI systems capable of interacting naturally with humans and their environments. This thesis addresses the challenges of first-person pose estimation through a series of interconnected studies. The first study, BoDiffusion, presents a ge...

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Autores:
Escobar Palomeque, María Camila
Tipo de recurso:
Doctoral thesis
Fecha de publicación:
2024
Institución:
Universidad de los Andes
Repositorio:
Séneca: repositorio Uniandes
Idioma:
eng
OAI Identifier:
oai:repositorio.uniandes.edu.co:1992/75400
Acceso en línea:
https://hdl.handle.net/1992/75400
Palabra clave:
Egocentric vision
Pose estimation
Pose forecasting
Ingeniería
Rights
openAccess
License
Attribution-NonCommercial-NoDerivatives 4.0 International
Description
Summary:Egocentric pose estimation is essential for developing embodied AI systems capable of interacting naturally with humans and their environments. This thesis addresses the challenges of first-person pose estimation through a series of interconnected studies. The first study, BoDiffusion, presents a generative model that synthesizes full-body motion from sparse inputs. The second study, Ego-Exo4D, establishes a benchmark for pose estimation in real-life settings with diverse activities. The final study, EgoCast, focuses on current pose estimation and forecasting in the wild, integrating visual and proprioceptive inputs to handle dynamic and unscripted environments. Together, these contributions provide robust, temporally consistent methods for real-world 3D pose estimation.