OC-MOT is a framework designed to perform multiple object tracking on object-centric representations without object ID labels. It consists of an index-merge module that adapts the object-centric slots into detection outputs and an unsupervised memory module that builds complete object prototypes to handle occlusions. Benefited from object-centric learning, we only requires sparse detection labels for object localization and feature binding. Our experiments significantly narrow the gap between the existing object-centric model and the fully supervised state-of-the-art and outperform several unsupervised trackers.
Object-centric multiple object tracking (OC-MOT)
2023
Last updated March 29, 2024
Research areas