87 research outputs found
Automated Testing of Spatially-Dependent Environmental Hypotheses through Active Transfer Learning
The efficient collection of samples is an important factor in outdoor
information gathering applications on account of high sampling costs such as
time, energy, and potential destruction to the environment. Utilization of
available a-priori data can be a powerful tool for increasing efficiency.
However, the relationships of this data with the quantity of interest are often
not known ahead of time, limiting the ability to leverage this knowledge for
improved planning efficiency. To this end, this work combines transfer learning
and active learning through a Multi-Task Gaussian Process and an
information-based objective function. Through this combination it can explore
the space of hypothetical inter-quantity relationships and evaluate these
hypotheses in real-time, allowing this new knowledge to be immediately
exploited for future plans. The performance of the proposed method is evaluated
against synthetic data and is shown to evaluate multiple hypotheses correctly.
Its effectiveness is also demonstrated on real datasets. The technique is able
to identify and leverage hypotheses which show a medium or strong correlation
to reduce prediction error by a factor of 1.4--3.4 within the first 7 samples,
and poor hypotheses are quickly identified and rejected eventually having no
adverse effect.Comment: Accepted for publication and presentation at ICRA 202
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