Intuitive and Efficient Human-robot Collaboration via Real-time Approximate Bayesian Inference
Javier Felip Leon, David Gonzalez-Aguirre, Lama Nachman

TL;DR
This paper introduces a real-time approximate Bayesian inference method for predicting human reaching intent, enhancing safety and efficiency in human-robot collaborative tasks.
Contribution
It formulates human intent prediction as an ABC problem and develops two innovations to enable interactive computation rates.
Findings
Improved human-robot collaboration safety and efficiency.
Real-world experiments demonstrate viability and benefits.
Quantitative metrics confirm enhanced task fluency.
Abstract
The combination of collaborative robots and end-to-end AI, promises flexible automation of human tasks in factories and warehouses. However, such promise seems a few breakthroughs away. In the meantime, humans and cobots will collaborate helping each other. For these collaborations to be effective and safe, robots need to model, predict and exploit human's intents for responsive decision making processes. Approximate Bayesian Computation (ABC) is an analysis-by-synthesis approach to perform probabilistic predictions upon uncertain quantities. ABC includes priors conveniently, leverages sampling algorithms for inference and is flexible to benefit from complex models, e.g. via simulators. However, ABC is known to be computationally too intensive to run at interactive frame rates required for effective human-robot collaboration tasks. In this paper, we formulate human reaching intent…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning · Gaussian Processes and Bayesian Inference · Reinforcement Learning in Robotics
MethodsApproximate Bayesian Computation
