← Back to Benchmarks
simmediumimitationmetric · varies
SCIZOR: A Self-Supervised Approach to Data Curation for Large-Scale Imitation Learning
Description
Imitation learning advances robot capabilities by enabling the acquisition of diverse behaviors from human demonstrations. However, large-scale datasets used for policy training often introduce substantial variability in quality, which can negatively impact performance. As a result, automatically curating datasets by filtering low-quality samples to improve quality becomes essential. Existing robotic curation approaches rely on costly manual annotations and perform curation at a coarse granulari