LOOC: LOCALIZE OVERLAPPING OBJECTS WITH COUNT SUPERVISION
Issam Laradji, Rafael Pardinas, Pau Rodriguez, David Vazquez
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Acquiring count annotations generally require less human effort than point-level and bounding box annotations. Thus, we propose the novel problem setup of localizing objects in dense scenes under weaker supervision. We propose LOOC, a method to Localize Overlapping Objects with Count supervision. We train LOOC by alternating between two stages. In the first stage, LOOC learns to generate pseudo point-level annotations in a semi-supervised learning manner. In the second stage, LOOC uses a fully-supervised localization method that trains on these pseudo labels. The localization method is used to progressively improve the quality of the pseudo labels. We conducted experiments on popular counting datasets. For localization, LOOC achieves a strong new baseline in the novel problem setup where only count supervision is available. For counting, LOOC outperforms current state-of-the-art methods that only use count as their supervision.