arXiv Open Access 2022

Pose Forecasting in Industrial Human-Robot Collaboration

Alessio Sampieri Guido D'Amely Andrea Avogaro Federico Cunico Geri Skenderi +3 lainnya
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Abstrak

Pushing back the frontiers of collaborative robots in industrial environments, we propose a new Separable-Sparse Graph Convolutional Network (SeS-GCN) for pose forecasting. For the first time, SeS-GCN bottlenecks the interaction of the spatial, temporal and channel-wise dimensions in GCNs, and it learns sparse adjacency matrices by a teacher-student framework. Compared to the state-of-the-art, it only uses 1.72% of the parameters and it is ~4 times faster, while still performing comparably in forecasting accuracy on Human3.6M at 1 second in the future, which enables cobots to be aware of human operators. As a second contribution, we present a new benchmark of Cobots and Humans in Industrial COllaboration (CHICO). CHICO includes multi-view videos, 3D poses and trajectories of 20 human operators and cobots, engaging in 7 realistic industrial actions. Additionally, it reports 226 genuine collisions, taking place during the human-cobot interaction. We test SeS-GCN on CHICO for two important perception tasks in robotics: human pose forecasting, where it reaches an average error of 85.3 mm (MPJPE) at 1 sec in the future with a run time of 2.3 msec, and collision detection, by comparing the forecasted human motion with the known cobot motion, obtaining an F1-score of 0.64.

Topik & Kata Kunci

Penulis (8)

A

Alessio Sampieri

G

Guido D'Amely

A

Andrea Avogaro

F

Federico Cunico

G

Geri Skenderi

F

Francesco Setti

M

Marco Cristani

F

Fabio Galasso

Format Sitasi

Sampieri, A., D'Amely, G., Avogaro, A., Cunico, F., Skenderi, G., Setti, F. et al. (2022). Pose Forecasting in Industrial Human-Robot Collaboration. https://arxiv.org/abs/2208.07308

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2022
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arXiv
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