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📄 Abstract
Abstract: Black-box simulators are widely used in robotics, but optimizing their
parameters remains challenging due to inaccessible likelihoods.
Simulation-Based Inference (SBI) tackles this issue using simulation-driven
approaches, estimating the posterior from offline real observations and forward
simulations. However, in black-box scenarios, preparing observations that
contain sufficient information for parameter estimation is difficult due to the
unknown relationship between parameters and observations. In this work, we
present Active Simulation-Based Inference (ASBI), a parameter estimation
framework that uses robots to actively collect real-world online data to
achieve accurate black-box simulator tuning. Our framework optimizes robot
actions to collect informative observations by maximizing information gain,
which is defined as the expected reduction in Shannon entropy between the
posterior and the prior. While calculating information gain requires the
likelihood, which is inaccessible in black-box simulators, our method solves
this problem by leveraging Neural Posterior Estimation (NPE), which leverages a
neural network to learn the posterior estimator. Three simulation experiments
quantitatively verify that our method achieves accurate parameter estimation,
with posteriors sharply concentrated around the true parameters. Moreover, we
show a practical application using a real robot to estimate the simulation
parameters of cubic particles corresponding to two real objects, beads and
gravel, with a bucket pouring action.
Authors (2)
Gahee Kim
Takamitsu Matsubara
Submitted
October 17, 2025
Appl.Intell. 55, 1028 (2025)
Key Contributions
ASBI is a novel framework for active parameter estimation in black-box simulators, using robots to actively collect informative real-world data. It optimizes robot actions to maximize information gain (expected reduction in posterior entropy), enabling accurate simulator tuning with fewer samples.
Business Value
Reduces the time and cost associated with calibrating robot simulators, leading to more accurate sim-to-real transfer and faster development cycles for robotic systems. This is crucial for deploying robots in complex, real-world environments.