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Papers/Scaling Wide Residual Networks for Panoptic Segmentation

Scaling Wide Residual Networks for Panoptic Segmentation

Liang-Chieh Chen, Huiyu Wang, Siyuan Qiao

2020-11-23Panoptic SegmentationSegmentationSemantic SegmentationInstance Segmentation
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Abstract

The Wide Residual Networks (Wide-ResNets), a shallow but wide model variant of the Residual Networks (ResNets) by stacking a small number of residual blocks with large channel sizes, have demonstrated outstanding performance on multiple dense prediction tasks. However, since proposed, the Wide-ResNet architecture has barely evolved over the years. In this work, we revisit its architecture design for the recent challenging panoptic segmentation task, which aims to unify semantic segmentation and instance segmentation. A baseline model is obtained by incorporating the simple and effective Squeeze-and-Excitation and Switchable Atrous Convolution to the Wide-ResNets. Its network capacity is further scaled up or down by adjusting the width (i.e., channel size) and depth (i.e., number of layers), resulting in a family of SWideRNets (short for Scaling Wide Residual Networks). We demonstrate that such a simple scaling scheme, coupled with grid search, identifies several SWideRNets that significantly advance state-of-the-art performance on panoptic segmentation datasets in both the fast model regime and strong model regime.

Results

TaskDatasetMetricValueModel
Semantic SegmentationCityscapes testPQ67.8Panoptic-DeepLab (SWideRNet [1, 1, 4.5], Mapillary, multi-scale)
Semantic SegmentationCityscapes valAP46.8Panoptic-DeepLab (SWideRNet [1, 1, 4.5], Mapillary Vistas, multi-scale)
Semantic SegmentationCityscapes valPQ69.6Panoptic-DeepLab (SWideRNet [1, 1, 4.5], Mapillary Vistas, multi-scale)
Semantic SegmentationCityscapes valmIoU85.3Panoptic-DeepLab (SWideRNet [1, 1, 4.5], Mapillary Vistas, multi-scale)
Semantic SegmentationCityscapes valAP42.8Panoptic-DeepLab (SWideRNet [1, 1, 4.5], Mapillary Vistas, single-scale)
Semantic SegmentationCityscapes valPQ68.5Panoptic-DeepLab (SWideRNet [1, 1, 4.5], Mapillary Vistas, single-scale)
Semantic SegmentationCityscapes valmIoU84.6Panoptic-DeepLab (SWideRNet [1, 1, 4.5], Mapillary Vistas, single-scale)
Semantic SegmentationMapillary valPQ44.8Panoptic-DeepLab (SWideRNet-(1, 1, 4.5), multi-scale)
Semantic SegmentationMapillary valPQst51.9Panoptic-DeepLab (SWideRNet-(1, 1, 4.5), multi-scale)
Semantic SegmentationMapillary valPQth39.3Panoptic-DeepLab (SWideRNet-(1, 1, 4.5), multi-scale)
Semantic SegmentationMapillary valmIoU60Panoptic-DeepLab (SWideRNet-(1, 1, 4.5), multi-scale)
Semantic SegmentationCOCO test-devPQ46.5Panoptic-DeepLab (SWideRNet-[1, 1, 4], multi-scale)
Semantic SegmentationCOCO test-devPQst38.2Panoptic-DeepLab (SWideRNet-[1, 1, 4], multi-scale)
Semantic SegmentationCOCO test-devPQth52Panoptic-DeepLab (SWideRNet-[1, 1, 4], multi-scale)
10-shot image generationCityscapes testPQ67.8Panoptic-DeepLab (SWideRNet [1, 1, 4.5], Mapillary, multi-scale)
10-shot image generationCityscapes valAP46.8Panoptic-DeepLab (SWideRNet [1, 1, 4.5], Mapillary Vistas, multi-scale)
10-shot image generationCityscapes valPQ69.6Panoptic-DeepLab (SWideRNet [1, 1, 4.5], Mapillary Vistas, multi-scale)
10-shot image generationCityscapes valmIoU85.3Panoptic-DeepLab (SWideRNet [1, 1, 4.5], Mapillary Vistas, multi-scale)
10-shot image generationCityscapes valAP42.8Panoptic-DeepLab (SWideRNet [1, 1, 4.5], Mapillary Vistas, single-scale)
10-shot image generationCityscapes valPQ68.5Panoptic-DeepLab (SWideRNet [1, 1, 4.5], Mapillary Vistas, single-scale)
10-shot image generationCityscapes valmIoU84.6Panoptic-DeepLab (SWideRNet [1, 1, 4.5], Mapillary Vistas, single-scale)
10-shot image generationMapillary valPQ44.8Panoptic-DeepLab (SWideRNet-(1, 1, 4.5), multi-scale)
10-shot image generationMapillary valPQst51.9Panoptic-DeepLab (SWideRNet-(1, 1, 4.5), multi-scale)
10-shot image generationMapillary valPQth39.3Panoptic-DeepLab (SWideRNet-(1, 1, 4.5), multi-scale)
10-shot image generationMapillary valmIoU60Panoptic-DeepLab (SWideRNet-(1, 1, 4.5), multi-scale)
10-shot image generationCOCO test-devPQ46.5Panoptic-DeepLab (SWideRNet-[1, 1, 4], multi-scale)
10-shot image generationCOCO test-devPQst38.2Panoptic-DeepLab (SWideRNet-[1, 1, 4], multi-scale)
10-shot image generationCOCO test-devPQth52Panoptic-DeepLab (SWideRNet-[1, 1, 4], multi-scale)
Panoptic SegmentationCityscapes testPQ67.8Panoptic-DeepLab (SWideRNet [1, 1, 4.5], Mapillary, multi-scale)
Panoptic SegmentationCityscapes valAP46.8Panoptic-DeepLab (SWideRNet [1, 1, 4.5], Mapillary Vistas, multi-scale)
Panoptic SegmentationCityscapes valPQ69.6Panoptic-DeepLab (SWideRNet [1, 1, 4.5], Mapillary Vistas, multi-scale)
Panoptic SegmentationCityscapes valmIoU85.3Panoptic-DeepLab (SWideRNet [1, 1, 4.5], Mapillary Vistas, multi-scale)
Panoptic SegmentationCityscapes valAP42.8Panoptic-DeepLab (SWideRNet [1, 1, 4.5], Mapillary Vistas, single-scale)
Panoptic SegmentationCityscapes valPQ68.5Panoptic-DeepLab (SWideRNet [1, 1, 4.5], Mapillary Vistas, single-scale)
Panoptic SegmentationCityscapes valmIoU84.6Panoptic-DeepLab (SWideRNet [1, 1, 4.5], Mapillary Vistas, single-scale)
Panoptic SegmentationMapillary valPQ44.8Panoptic-DeepLab (SWideRNet-(1, 1, 4.5), multi-scale)
Panoptic SegmentationMapillary valPQst51.9Panoptic-DeepLab (SWideRNet-(1, 1, 4.5), multi-scale)
Panoptic SegmentationMapillary valPQth39.3Panoptic-DeepLab (SWideRNet-(1, 1, 4.5), multi-scale)
Panoptic SegmentationMapillary valmIoU60Panoptic-DeepLab (SWideRNet-(1, 1, 4.5), multi-scale)
Panoptic SegmentationCOCO test-devPQ46.5Panoptic-DeepLab (SWideRNet-[1, 1, 4], multi-scale)
Panoptic SegmentationCOCO test-devPQst38.2Panoptic-DeepLab (SWideRNet-[1, 1, 4], multi-scale)
Panoptic SegmentationCOCO test-devPQth52Panoptic-DeepLab (SWideRNet-[1, 1, 4], multi-scale)

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