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Evolving Without Ending: Unifying Multimodal Incremental Learning for Continual Panoptic Perception

About

Continual learning (CL) is a great endeavour in developing intelligent perception AI systems. However, the pioneer research has predominantly focus on single-task CL, which restricts the potential in multi-task and multimodal scenarios. Beyond the well-known issue of catastrophic forgetting, the multi-task CL also brings semantic obfuscation across multimodal alignment, leading to severe model degradation during incremental training steps. In this paper, we extend CL to continual panoptic perception (CPP), integrating multimodal and multi-task CL to enhance comprehensive image perception through pixel-level, instance-level, and image-level joint interpretation. We formalize the CL task in multimodal scenarios and propose an end-to-end continual panoptic perception model. Concretely, CPP model features a collaborative cross-modal encoder (CCE) for multimodal embedding. We also propose a malleable knowledge inheritance module via contrastive feature distillation and instance distillation, addressing catastrophic forgetting from task-interactive boosting manner. Furthermore, we propose a cross-modal consistency constraint and develop CPP+, ensuring multimodal semantic alignment for model updating under multi-task incremental scenarios. Additionally, our proposed model incorporates an asymmetric pseudo-labeling manner, enabling model evolving without exemplar replay. Extensive experiments on multimodal datasets and diverse CL tasks demonstrate the superiority of the proposed model, particularly in fine-grained CL tasks.

Bo Yuan, Danpei Zhao, Wentao Li, Tian Li, Zhiguo Jiang• 2026

Related benchmarks

TaskDatasetResultRank
Continual Semantic SegmentationADE20k 100-10 (6 tasks) (val)
mIoU (101-150)0.2222
24
Class-Incremental Semantic SegmentationADE20K 100-50 (2 steps)
mIoU (1-100)44.26
17
Image CaptioningFineGrip 2 steps (20-5)
Bb (BLEU)39.31
7
Image CaptioningFineGrip 15-5 3 steps
Bb BLEU38.63
7
Image CaptioningFineGrip 6 steps (15-2)
Bb (BLEU)38.63
7
Image CaptioningFineGrip 10-5 4 steps
BLEU-b Score33.36
7
Panoptic SegmentationFineGrip 20-5 2 steps
PQ Co37.61
7
Panoptic SegmentationFineGrip 15-5 3 steps
PQ Coherence (Things)33.64
7
Panoptic SegmentationFineGrip 6 steps (15-2)
Co (PQ)25.7
7
Panoptic SegmentationFineGrip 10-5 4 steps
PQ Coherence (Co)2.76e+3
7
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