AAKR: Adversarial Attack-based Knowledge Retention for Continual Semantic Segmentation

0citations
PDFProject
0
citations
#2074
in AAAI 2025
of 3028 papers
5
Top Authors
2
Data Points

Abstract

In the context of Continual Semantic Segmentation (CSS), replay-based methods tend to achieve better performance than knowledge distillation-based ones, as the former utilizes additional data to transfer old knowledge. However, this advantage is at the cost of necessitating additional space for storing the generative model and extra time for continual training. To address this predicament, we propose a novel CSS framework, namely Adversarial Attack-based Knowledge Retention (AAKR). The AKKR framework generates specific adversarial samples by adding images, and uses them to retain old knowledge. Specifically, we leverage adversarial attacks to generate adversarial images for incremental samples. By imposing additional constraints within these attacks, we enhance the transfer of old knowledge, thereby reinforcing the understanding of previously learned information. Furthermore, we design an attack probability module that adjusts adversarial attack directions based on training feedback. This module effectively encourages the new model to learn old knowledge from poorly protected classes, significantly improving knowledge transfer effectiveness. Our comprehensive experiments demonstrate the efficacy of AAKR, and showcase that AAKR surpasses state-of-the-art competitors on benchmark datasets.

Citation History

Jan 27, 2026
0
Feb 4, 2026
0