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Papers/Ada-Segment: Automated Multi-loss Adaptation for Panoptic ...

Ada-Segment: Automated Multi-loss Adaptation for Panoptic Segmentation

Gengwei Zhang, Yiming Gao, Hang Xu, Hao Zhang, Zhenguo Li, Xiaodan Liang

2020-12-07Panoptic SegmentationSegmentationSemantic SegmentationInstance Segmentation
PaperPDF

Abstract

Panoptic segmentation that unifies instance segmentation and semantic segmentation has recently attracted increasing attention. While most existing methods focus on designing novel architectures, we steer toward a different perspective: performing automated multi-loss adaptation (named Ada-Segment) on the fly to flexibly adjust multiple training losses over the course of training using a controller trained to capture the learning dynamics. This offers a few advantages: it bypasses manual tuning of the sensitive loss combination, a decisive factor for panoptic segmentation; it allows to explicitly model the learning dynamics, and reconcile the learning of multiple objectives (up to ten in our experiments); with an end-to-end architecture, it generalizes to different datasets without the need of re-tuning hyperparameters or re-adjusting the training process laboriously. Our Ada-Segment brings 2.7% panoptic quality (PQ) improvement on COCO val split from the vanilla baseline, achieving the state-of-the-art 48.5% PQ on COCO test-dev split and 32.9% PQ on ADE20K dataset. The extensive ablation studies reveal the ever-changing dynamics throughout the training process, necessitating the incorporation of an automated and adaptive learning strategy as presented in this paper.

Results

TaskDatasetMetricValueModel
Semantic SegmentationCOCO test-devPQ48.5Ada-Segment (ResNet-101-DCN)
Semantic SegmentationCOCO test-devPQst37.6Ada-Segment (ResNet-101-DCN)
Semantic SegmentationCOCO test-devPQth55.7Ada-Segment (ResNet-101-DCN)
10-shot image generationCOCO test-devPQ48.5Ada-Segment (ResNet-101-DCN)
10-shot image generationCOCO test-devPQst37.6Ada-Segment (ResNet-101-DCN)
10-shot image generationCOCO test-devPQth55.7Ada-Segment (ResNet-101-DCN)
Panoptic SegmentationCOCO test-devPQ48.5Ada-Segment (ResNet-101-DCN)
Panoptic SegmentationCOCO test-devPQst37.6Ada-Segment (ResNet-101-DCN)
Panoptic SegmentationCOCO test-devPQth55.7Ada-Segment (ResNet-101-DCN)

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