On Advantages of Mask-level Recognition for Outlier-aware Segmentation
About
Most dense recognition approaches bring a separate decision in each particular pixel. These approaches deliver competitive performance in usual closed-set setups. However, important applications in the wild typically require strong performance in presence of outliers. We show that this demanding setup greatly benefit from mask-level predictions, even in the case of non-finetuned baseline models. Moreover, we propose an alternative formulation of dense recognition uncertainty that effectively reduces false positive responses at semantic borders. The proposed formulation produces a further improvement over a very strong baseline and sets the new state of the art in outlier-aware semantic segmentation with and without training on negative data. Our contributions also lead to performance improvement in a recent panoptic setup. In-depth experiments confirm that our approach succeeds due to implicit aggregation of pixel-level cues into mask-level predictions.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Anomaly Segmentation | Fishyscapes Lost & Found (test) | FPR@9541.3 | 61 | |
| Anomaly Segmentation | SMIYC-RA21 v1 (test) | AP93.75 | 14 | |
| Anomaly Segmentation | SMIYC-RO21 v1 (test) | AP92.87 | 14 | |
| Anomaly Detection | Road Anomaly | AP66.7 | 12 | |
| Anomaly Segmentation | RoadAnomaly v1 (test) | AP0.694 | 12 | |
| Anomaly Segmentation | SMIYC-Anomaly (test) | AP76.3 | 8 |