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{Hongsheng Li Shuai Yi Haiyu Zhao Chongsong Chen Mingyuan Zhang Zhongang Cai Cunjun Yu Jiawei Ren}
Abstract
Panoptic segmentation aims at generating pixel-wise class and instance predictions for each pixel in the input image, which is a challenging task and far more complicated than naively fusing the semantic and instance segmentation results. Prediction fusion is therefore important to achieve accurate panoptic segmentation. In this paper, we present REFINE, pREdiction FusIon NEtwork for panoptic segmentation, to achieve high-quality panoptic segmentation by improving cross-task prediction fusion, and within-task prediction fusion. Our single-model ResNeXt-101 with DCN achieves PQ=51.5 on the COCO dataset, surpassing state-of-the-art performance by a convincing margin and is comparable with ensembled models. Our smaller model with a ResNet-50 backbone achieves PQ=44.9, which is comparable with state-of-the-art methods with larger backbones.
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| panoptic-segmentation-on-coco-test-dev | REFINE (ResNet-101-DCN) | PQ: 49.6 PQst: 37.7 PQth: 57.5 |
| panoptic-segmentation-on-coco-test-dev | REFINE (ResNeXt-101-DCN) | PQ: 51.5 PQst: 39.2 PQth: 59.6 |
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