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Papers/Mitigating Background Shift in Class-Incremental Semantic ...

Mitigating Background Shift in Class-Incremental Semantic Segmentation

Gilhan Park, WonJun Moon, SuBeen Lee, Tae-Young Kim, Jae-Pil Heo

2024-07-16Overlapped 50-50Continual LearningContinual Semantic SegmentationClass Incremental LearningOverlapped 10-1Overlapped 100-10SegmentationSemantic SegmentationOverlapped 100-50Knowledge DistillationOverlapped 100-5
PaperPDFCode(official)

Abstract

Class-Incremental Semantic Segmentation(CISS) aims to learn new classes without forgetting the old ones, using only the labels of the new classes. To achieve this, two popular strategies are employed: 1) pseudo-labeling and knowledge distillation to preserve prior knowledge; and 2) background weight transfer, which leverages the broad coverage of background in learning new classes by transferring background weight to the new class classifier. However, the first strategy heavily relies on the old model in detecting old classes while undetected pixels are regarded as the background, thereby leading to the background shift towards the old classes(i.e., misclassification of old class as background). Additionally, in the case of the second approach, initializing the new class classifier with background knowledge triggers a similar background shift issue, but towards the new classes. To address these issues, we propose a background-class separation framework for CISS. To begin with, selective pseudo-labeling and adaptive feature distillation are to distill only trustworthy past knowledge. On the other hand, we encourage the separation between the background and new classes with a novel orthogonal objective along with label-guided output distillation. Our state-of-the-art results validate the effectiveness of these proposed methods.

Results

TaskDatasetMetricValueModel
Semantic SegmentationPASCAL VOC 2012mIoU77.19MBS
Semantic SegmentationPASCAL VOC 2012Mean IoU (val)82.6MBS
Semantic SegmentationPASCAL VOC 2012mIoU80.6MBS
Semantic SegmentationPASCAL VOC 2012mIoU78.1MBS
Semantic SegmentationPASCAL VOC 2012Mean IoU79MBS
Semantic SegmentationADE20KmIoU42.8MBS
Semantic SegmentationADE20KmIoU45.7MBS
Semantic SegmentationADE20KmIoU45.4MBS
Semantic SegmentationADE20KMean IoU (test) 44.5MBS
Semantic SegmentationPASCAL VOC 2012Mean IoU (test)78.1MBS
Continual Semantic SegmentationPASCAL VOC 2012Mean IoU (test)78.1MBS
Continual LearningPASCAL VOC 2012mIoU77.19MBS
Continual LearningPASCAL VOC 2012Mean IoU (val)82.6MBS
Continual LearningPASCAL VOC 2012mIoU80.6MBS
Continual LearningPASCAL VOC 2012mIoU78.1MBS
Continual LearningPASCAL VOC 2012Mean IoU79MBS
Continual LearningADE20KmIoU42.8MBS
Continual LearningADE20KmIoU45.7MBS
Continual LearningADE20KmIoU45.4MBS
Continual LearningADE20KMean IoU (test) 44.5MBS
Continual LearningPASCAL VOC 2012Mean IoU (test)78.1MBS
2D Semantic SegmentationPASCAL VOC 2012Mean IoU (test)78.1MBS
2D Semantic SegmentationPASCAL VOC 2012mIoU80.6MBS
2D Semantic SegmentationPASCAL VOC 2012mIoU78.1MBS
2D Semantic SegmentationPASCAL VOC 2012Mean IoU79MBS
Class Incremental LearningPASCAL VOC 2012mIoU77.19MBS
Class Incremental LearningPASCAL VOC 2012Mean IoU (val)82.6MBS
Class Incremental LearningPASCAL VOC 2012mIoU80.6MBS
Class Incremental LearningPASCAL VOC 2012mIoU78.1MBS
Class Incremental LearningPASCAL VOC 2012Mean IoU79MBS
Class Incremental LearningADE20KmIoU42.8MBS
Class Incremental LearningADE20KmIoU45.7MBS
Class Incremental LearningADE20KmIoU45.4MBS
Class Incremental LearningADE20KMean IoU (test) 44.5MBS
Class Incremental LearningPASCAL VOC 2012Mean IoU (test)78.1MBS
Class-Incremental Semantic SegmentationPASCAL VOC 2012mIoU77.19MBS
Class-Incremental Semantic SegmentationPASCAL VOC 2012Mean IoU (val)82.6MBS
Class-Incremental Semantic SegmentationPASCAL VOC 2012mIoU80.6MBS
Class-Incremental Semantic SegmentationPASCAL VOC 2012mIoU78.1MBS
Class-Incremental Semantic SegmentationPASCAL VOC 2012Mean IoU79MBS
Class-Incremental Semantic SegmentationADE20KmIoU42.8MBS
Class-Incremental Semantic SegmentationADE20KmIoU45.7MBS
Class-Incremental Semantic SegmentationADE20KmIoU45.4MBS
Class-Incremental Semantic SegmentationADE20KMean IoU (test) 44.5MBS
Class-Incremental Semantic SegmentationPASCAL VOC 2012Mean IoU (test)78.1MBS
10-shot image generationPASCAL VOC 2012mIoU77.19MBS
10-shot image generationPASCAL VOC 2012Mean IoU (val)82.6MBS
10-shot image generationPASCAL VOC 2012mIoU80.6MBS
10-shot image generationPASCAL VOC 2012mIoU78.1MBS
10-shot image generationPASCAL VOC 2012Mean IoU79MBS
10-shot image generationADE20KmIoU42.8MBS
10-shot image generationADE20KmIoU45.7MBS
10-shot image generationADE20KmIoU45.4MBS
10-shot image generationADE20KMean IoU (test) 44.5MBS
10-shot image generationPASCAL VOC 2012Mean IoU (test)78.1MBS
Disjoint 19-1PASCAL VOC 2012mIoU82.8MBS

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