Bridge Data: Boosting Generalization of Robotic Skills with Cross-Domain Datasets
Frederik Ebert, Yanlai Yang, Karl Schmeckpeper, Bernadette Bucher,, Georgios Georgakis, Kostas Daniilidis, Chelsea Finn, Sergey Levine

TL;DR
This paper introduces a large multi-task, multi-domain dataset for robotic skill learning, demonstrating that cross-domain data reuse significantly improves generalization and success rates in new tasks and environments.
Contribution
The authors collected and analyzed a diverse dataset enabling cross-task and cross-domain generalization, reducing the need for new data collection in robotic learning.
Findings
Joint training with the dataset and few target demonstrations doubles success rates.
Few task data in a new domain can bridge the domain gap.
Reusing diverse datasets enhances robot generalization across tasks and domains.
Abstract
Robot learning holds the promise of learning policies that generalize broadly. However, such generalization requires sufficiently diverse datasets of the task of interest, which can be prohibitively expensive to collect. In other fields, such as computer vision, it is common to utilize shared, reusable datasets, such as ImageNet, to overcome this challenge, but this has proven difficult in robotics. In this paper, we ask: what would it take to enable practical data reuse in robotics for end-to-end skill learning? We hypothesize that the key is to use datasets with multiple tasks and multiple domains, such that a new user that wants to train their robot to perform a new task in a new domain can include this dataset in their training process and benefit from cross-task and cross-domain generalization. To evaluate this hypothesis, we collect a large multi-domain and multi-task dataset,…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning · COVID-19 diagnosis using AI · Machine Learning and Algorithms
