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arxiv: 1710.06235 · v1 · pith:F3LJEX4Jnew · submitted 2017-10-17 · 💻 cs.CV · cs.RO

Real-time marker-less multi-person 3D pose estimation in RGB-Depth camera networks

classification 💻 cs.CV cs.RO
keywords posecamerasystemapplicationscomputedestimationmarker-lessmulti-person
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This paper proposes a novel system to estimate and track the 3D poses of multiple persons in calibrated RGB-Depth camera networks. The multi-view 3D pose of each person is computed by a central node which receives the single-view outcomes from each camera of the network. Each single-view outcome is computed by using a CNN for 2D pose estimation and extending the resulting skeletons to 3D by means of the sensor depth. The proposed system is marker-less, multi-person, independent of background and does not make any assumption on people appearance and initial pose. The system provides real-time outcomes, thus being perfectly suited for applications requiring user interaction. Experimental results show the effectiveness of this work with respect to a baseline multi-view approach in different scenarios. To foster research and applications based on this work, we released the source code in OpenPTrack, an open source project for RGB-D people tracking.

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