AFUN predicts task-conditional functional masks and 3D post-contact motion curves from RGB-D and language, trained via a standardized multi-source data pipeline, and reports large gains over baselines on segmentation, contact prediction, and motion tasks.
Worldafford: Affordance grounding based on natural language instructions
2 Pith papers cite this work. Polarity classification is still indexing.
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Interpretable machine learning is used to extract a universal shortest analytic quantum algorithm for arbitrary diagonal matrices of any size.
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AFUN: Towards an Affordance Foundation Model for Functionality Understanding
AFUN predicts task-conditional functional masks and 3D post-contact motion curves from RGB-D and language, trained via a standardized multi-source data pipeline, and reports large gains over baselines on segmentation, contact prediction, and motion tasks.
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Machine Learning Approaches to Building Quantum Circuits for Sets of Matrices
Interpretable machine learning is used to extract a universal shortest analytic quantum algorithm for arbitrary diagonal matrices of any size.