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Papers/Panoptic-DeepLab: A Simple, Strong, and Fast Baseline for ...

Panoptic-DeepLab: A Simple, Strong, and Fast Baseline for Bottom-Up Panoptic Segmentation

Bowen Cheng, Maxwell D. Collins, Yukun Zhu, Ting Liu, Thomas S. Huang, Hartwig Adam, Liang-Chieh Chen

2019-11-22CVPR 2020 6Panoptic SegmentationSegmentationSemantic SegmentationInstance Segmentation
PaperPDFCodeCodeCodeCodeCodeCodeCodeCodeCode(official)

Abstract

In this work, we introduce Panoptic-DeepLab, a simple, strong, and fast system for panoptic segmentation, aiming to establish a solid baseline for bottom-up methods that can achieve comparable performance of two-stage methods while yielding fast inference speed. In particular, Panoptic-DeepLab adopts the dual-ASPP and dual-decoder structures specific to semantic, and instance segmentation, respectively. The semantic segmentation branch is the same as the typical design of any semantic segmentation model (e.g., DeepLab), while the instance segmentation branch is class-agnostic, involving a simple instance center regression. As a result, our single Panoptic-DeepLab simultaneously ranks first at all three Cityscapes benchmarks, setting the new state-of-art of 84.2% mIoU, 39.0% AP, and 65.5% PQ on test set. Additionally, equipped with MobileNetV3, Panoptic-DeepLab runs nearly in real-time with a single 1025x2049 image (15.8 frames per second), while achieving a competitive performance on Cityscapes (54.1 PQ% on test set). On Mapillary Vistas test set, our ensemble of six models attains 42.7% PQ, outperforming the challenge winner in 2018 by a healthy margin of 1.5%. Finally, our Panoptic-DeepLab also performs on par with several top-down approaches on the challenging COCO dataset. For the first time, we demonstrate a bottom-up approach could deliver state-of-the-art results on panoptic segmentation.

Results

TaskDatasetMetricValueModel
Semantic SegmentationCityscapes testPQ65.5Panoptic-Deeplab
Semantic SegmentationCityscapes valAP38.5Panoptic-DeepLab (X71)
Semantic SegmentationCityscapes valPQ64.1Panoptic-DeepLab (X71)
Semantic SegmentationCityscapes valmIoU81.5Panoptic-DeepLab (X71)
Semantic SegmentationMapillary valPQ40.5Panoptic-DeepLab (X71)
Semantic SegmentationCOCO test-devPQ41.4Panoptic-DeepLab (Xception-71)
Semantic SegmentationCOCO test-devPQst35.9Panoptic-DeepLab (Xception-71)
Semantic SegmentationCOCO test-devPQth45.1Panoptic-DeepLab (Xception-71)
10-shot image generationCityscapes testPQ65.5Panoptic-Deeplab
10-shot image generationCityscapes valAP38.5Panoptic-DeepLab (X71)
10-shot image generationCityscapes valPQ64.1Panoptic-DeepLab (X71)
10-shot image generationCityscapes valmIoU81.5Panoptic-DeepLab (X71)
10-shot image generationMapillary valPQ40.5Panoptic-DeepLab (X71)
10-shot image generationCOCO test-devPQ41.4Panoptic-DeepLab (Xception-71)
10-shot image generationCOCO test-devPQst35.9Panoptic-DeepLab (Xception-71)
10-shot image generationCOCO test-devPQth45.1Panoptic-DeepLab (Xception-71)
Panoptic SegmentationCityscapes testPQ65.5Panoptic-Deeplab
Panoptic SegmentationCityscapes valAP38.5Panoptic-DeepLab (X71)
Panoptic SegmentationCityscapes valPQ64.1Panoptic-DeepLab (X71)
Panoptic SegmentationCityscapes valmIoU81.5Panoptic-DeepLab (X71)
Panoptic SegmentationMapillary valPQ40.5Panoptic-DeepLab (X71)
Panoptic SegmentationCOCO test-devPQ41.4Panoptic-DeepLab (Xception-71)
Panoptic SegmentationCOCO test-devPQst35.9Panoptic-DeepLab (Xception-71)
Panoptic SegmentationCOCO test-devPQth45.1Panoptic-DeepLab (Xception-71)

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