Identifiable Object-Centric Representation Learning via Probabilistic Slot Attention
Kori, Avinash, Locatello, Francesco, Santhirasekaram, Ainkaran, Toni, Francesca, Glocker, Ben, Ribeiro, Fabio De Sousa
–arXiv.org Artificial Intelligence
Learning modular object-centric representations is crucial for systematic generalization. Existing methods show promising object-binding capabilities empirically, but theoretical identifiability guarantees remain relatively underdeveloped. Understanding when object-centric representations can theoretically be identified is crucial for scaling slot-based methods to high-dimensional images with correctness guarantees. To that end, we propose a probabilistic slot-attention algorithm that imposes an aggregate mixture prior over object-centric slot representations, thereby providing slot identifiability guarantees without supervision, up to an equivalence relation. We provide empirical verification of our theoretical identifiability result using both simple 2-dimensional data and high-resolution imaging datasets.
arXiv.org Artificial Intelligence
Jun-11-2024