Uncertainty-Aware Self-Supervised Target-Mass Grasping of Granular Foods
Food packing industry workers typically pick a target amount of food by hand from a food tray and place them in containers. Since menus are diverse and change frequently, robots must adapt and learn to handle new foods in a short time-span. Learning to grasp a specific amount of granular food requir...
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Zusammenfassung: | Food packing industry workers typically pick a target amount of food by hand
from a food tray and place them in containers. Since menus are diverse and
change frequently, robots must adapt and learn to handle new foods in a short
time-span. Learning to grasp a specific amount of granular food requires a
large training dataset, which is challenging to collect reasonably quickly. In
this study, we propose ways to reduce the necessary amount of training data by
augmenting a deep neural network with models that estimate its uncertainty
through self-supervised learning. To further reduce human effort, we devise a
data collection system that automatically generates labels. We build on the
idea that we can grasp sufficiently well if there is at least one
low-uncertainty (high-confidence) grasp point among the various grasp point
candidates. We evaluate the methods we propose in this work on a variety of
granular foods -- coffee beans, rice, oatmeal and peanuts -- each of which has
a different size, shape and material properties such as volumetric mass density
or friction. For these foods, we show significantly improved grasp accuracy of
user-specified target masses using smaller datasets by incorporating
uncertainty. |
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DOI: | 10.48550/arxiv.2105.12946 |