Publication:
3D human pose estimation from depth maps using a deep combination of poses

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Date

2018-07-17

Authors

Marin-Jimenez, Manuel J.
Romero-Ramirez, Francisco J.
Munoz-Salinas, Rafael
Medina-Carnicer, Rafael

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Academic Press
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Abstract

Many real-world applications require the estimation of human body joints for higher-level tasks as, for example, human behaviour understanding. In recent years, depth sensors have become a popular approach to obtain three-dimensional information. The depth maps generated by these sensors provide information that can be employed to disambiguate the poses observed in two-dimensional images. This work addresses the problem of 3D human pose estimation from depth maps employing a Deep Learning approach. We propose a model, named Deep Depth Pose (DDP), which receives a depth map containing a person and a set of predefined 3D prototype poses and returns the 3D position of the body joints of the person. In particular, DDP is defined as a ConvNet that computes the specific weights needed to linearly combine the prototypes for the given input. We have thoroughly evaluated DDP on the challenging 'ITOP' and 'UBC3V' datasets, which respectively depict realistic and synthetic samples, defining a new state-of-the-art on them.

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MeSH Terms

Deep learning
Human body
Neural networks, computer
Image processing, computer-assisted

DeCS Terms

Aprendizaje profundo
Cuerpo humano
Procesamiento de imagen asistido por computador
Redes neurales de la computación

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Keywords

3D human pose, Body limbs, Depth maps, ConvNets

Citation

Marín-Jiménez MJ, Romero-Ramirez FJ, Muñoz-Salinas R, Medina-Carnicer R. 3D human pose estimation from depth maps using a deep combination of poses. Journal Of Visual Communication And Image Representation [Internet]. 1 de agosto de 2018;55:627-39.