LEARN: A Unified Framework for Multi-Task Domain Adapt Few-Shot Learning
Both few-shot learning and domain adaptation sub-fields in Computer Vision have seen significant recent progress in terms of the availability of state-of-the-art algorithms and datasets. Frameworks have been developed for each sub-field; however, building a common system or framework that combines b...
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Zusammenfassung: | Both few-shot learning and domain adaptation sub-fields in Computer Vision
have seen significant recent progress in terms of the availability of
state-of-the-art algorithms and datasets. Frameworks have been developed for
each sub-field; however, building a common system or framework that combines
both is something that has not been explored. As part of our research, we
present the first unified framework that combines domain adaptation for the
few-shot learning setting across 3 different tasks - image classification,
object detection and video classification. Our framework is highly modular with
the capability to support few-shot learning with/without the inclusion of
domain adaptation depending on the algorithm. Furthermore, the most important
configurable feature of our framework is the on-the-fly setup for incremental
$n$-shot tasks with the optional capability to configure the system to scale to
a traditional many-shot task. With more focus on Self-Supervised Learning (SSL)
for current few-shot learning approaches, our system also supports multiple SSL
pre-training configurations. To test our framework's capabilities, we provide
benchmarks on a wide range of algorithms and datasets across different task and
problem settings. The code is open source has been made publicly available
here: https://gitlab.kitware.com/darpa_learn/learn |
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DOI: | 10.48550/arxiv.2412.16275 |