Data di Pubblicazione:
2022
Citazione:
Semi-Perspective Decoupled Heatmaps for 3D Robot Pose Estimation from Depth Maps / Simoni, Alessandro; Pini, Stefano; Borghi, Guido; Vezzani, Roberto. - In: IEEE ROBOTICS AND AUTOMATION LETTERS. - ISSN 2377-3766. - 7:4(2022), pp. 11569-11576. [10.1109/LRA.2022.3193225]
Abstract:
Knowing the exact 3D location of workers and
robots in a collaborative environment enables several real applications,
such as the detection of unsafe situations or the study
of mutual interactions for statistical and social purposes. In this
paper, we propose a non-invasive and light-invariant framework
based on depth devices and deep neural networks to estimate
the 3D pose of robots from an external camera. The method
can be applied to any robot without requiring hardware access
to the internal states. We introduce a novel representation of
the predicted pose, namely Semi-Perspective Decoupled Heatmaps
(SPDH), to accurately compute 3D joint locations in world
coordinates adapting efficient deep networks designed for the 2D
Human Pose Estimation. The proposed approach, which takes as
input a depth representation based on XYZ coordinates, can be
trained on synthetic depth data and applied to real-world settings
without the need for domain adaptation techniques. To this end,
we present the SimBa dataset, based on both synthetic and real
depth images, and use it for the experimental evaluation. Results
show that the proposed approach, made of a specific depth map
representation and the SPDH, overcomes the current state of the
art.
Tipologia CRIS:
Articolo su rivista
Keywords:
Deep learning methods; RGB-D perception; robot pose estimation; synthetic/real dataset;
Elenco autori:
Simoni, Alessandro; Pini, Stefano; Borghi, Guido; Vezzani, Roberto
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