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Papers/Tackling Catastrophic Forgetting and Background Shift in C...

Tackling Catastrophic Forgetting and Background Shift in Continual Semantic Segmentation

Arthur Douillard, Yifu Chen, Arnaud Dapogny, Matthieu Cord

2021-06-29Continual LearningContinual Semantic SegmentationClass Incremental LearningOverlapped 10-1SegmentationSemantic Segmentation
PaperPDFCodeCode(official)

Abstract

Deep learning approaches are nowadays ubiquitously used to tackle computer vision tasks such as semantic segmentation, requiring large datasets and substantial computational power. Continual learning for semantic segmentation (CSS) is an emerging trend that consists in updating an old model by sequentially adding new classes. However, continual learning methods are usually prone to catastrophic forgetting. This issue is further aggravated in CSS where, at each step, old classes from previous iterations are collapsed into the background. In this paper, we propose Local POD, a multi-scale pooling distillation scheme that preserves long- and short-range spatial relationships at feature level. Furthermore, we design an entropy-based pseudo-labelling of the background w.r.t. classes predicted by the old model to deal with background shift and avoid catastrophic forgetting of the old classes. Finally, we introduce a novel rehearsal method that is particularly suited for segmentation. Our approach, called PLOP, significantly outperforms state-of-the-art methods in existing CSS scenarios, as well as in newly proposed challenging benchmarks.

Results

TaskDatasetMetricValueModel
Semantic SegmentationPASCAL VOC 2012mIoU40.83PLOPLong
Semantic SegmentationPASCAL VOC 2012Mean IoU (val)69.37PLOPLong
Semantic SegmentationPASCAL VOC 2012mIoU61.21PLOPLong
Continual LearningPASCAL VOC 2012mIoU40.83PLOPLong
Continual LearningPASCAL VOC 2012Mean IoU (val)69.37PLOPLong
Continual LearningPASCAL VOC 2012mIoU61.21PLOPLong
2D Semantic SegmentationPASCAL VOC 2012mIoU61.21PLOPLong
Class Incremental LearningPASCAL VOC 2012mIoU40.83PLOPLong
Class Incremental LearningPASCAL VOC 2012Mean IoU (val)69.37PLOPLong
Class Incremental LearningPASCAL VOC 2012mIoU61.21PLOPLong
Class-Incremental Semantic SegmentationPASCAL VOC 2012mIoU40.83PLOPLong
Class-Incremental Semantic SegmentationPASCAL VOC 2012Mean IoU (val)69.37PLOPLong
Class-Incremental Semantic SegmentationPASCAL VOC 2012mIoU61.21PLOPLong
10-shot image generationPASCAL VOC 2012mIoU40.83PLOPLong
10-shot image generationPASCAL VOC 2012Mean IoU (val)69.37PLOPLong
10-shot image generationPASCAL VOC 2012mIoU61.21PLOPLong

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