The Class Incremental Semantic Segmentation (CISS) extends the traditional segmentation task by incrementally learning newly added classes. Previous work has introduced generative replay, which involves replaying old class samples generated from a pre-trained GAN, to address the issues of catastrophic forgetting and privacy concerns. However, the generated images lack semantic precision and exhibit out-of-distribution characteristics, resulting in inaccurate masks that further degrade the segmentation performance. To tackle these challenges, we propose DiffusePast, a novel framework featuring a diffusion-based generative replay module that generates semantically accurate images with more reliable masks guided by different instructions (e.g....
A fundamental and challenging problem in deep learning is catastrophic forgetting, i.e., the tendenc...
This paper introduces a generalized few-shot segmentation framework with a straightforward training ...
With the advancement of computation capability, in particular the use of graphical processing units,...
Continual learning for Semantic Segmentation (CSS) is a rapidly emerging field, in which the capabil...
Preparing training data for deep vision models is a labor-intensive task. To address this, generativ...
Class-incremental learning for semantic segmentation (CiSS) is presently a highly researched field w...
Despite their effectiveness in a wide range of tasks, deep architectures suffer from some important...
Deep learning architectures have shown remarkable results in scene understanding problems, however t...
A fundamental and challenging problem in deep learning is catastrophic forgetting, i.e. the tendency...
Scarcity of data and incremental learning of new tasks pose two major bottlenecks for many modern co...
Semantic segmentation models based on deep learning technologies have achieved remarkable results in...
Class Incremental Learning (CIL) aims to sequentially learn new classes while avoiding catastrophic ...
Neural networks are prone to catastrophic forgetting when trained incrementally on different tasks. ...
Can a text-to-image diffusion model be used as a training objective for adapting a GAN generator to ...
Over the past years, semantic segmentation, as many other tasks in computer vision, benefited from t...
A fundamental and challenging problem in deep learning is catastrophic forgetting, i.e., the tendenc...
This paper introduces a generalized few-shot segmentation framework with a straightforward training ...
With the advancement of computation capability, in particular the use of graphical processing units,...
Continual learning for Semantic Segmentation (CSS) is a rapidly emerging field, in which the capabil...
Preparing training data for deep vision models is a labor-intensive task. To address this, generativ...
Class-incremental learning for semantic segmentation (CiSS) is presently a highly researched field w...
Despite their effectiveness in a wide range of tasks, deep architectures suffer from some important...
Deep learning architectures have shown remarkable results in scene understanding problems, however t...
A fundamental and challenging problem in deep learning is catastrophic forgetting, i.e. the tendency...
Scarcity of data and incremental learning of new tasks pose two major bottlenecks for many modern co...
Semantic segmentation models based on deep learning technologies have achieved remarkable results in...
Class Incremental Learning (CIL) aims to sequentially learn new classes while avoiding catastrophic ...
Neural networks are prone to catastrophic forgetting when trained incrementally on different tasks. ...
Can a text-to-image diffusion model be used as a training objective for adapting a GAN generator to ...
Over the past years, semantic segmentation, as many other tasks in computer vision, benefited from t...
A fundamental and challenging problem in deep learning is catastrophic forgetting, i.e., the tendenc...
This paper introduces a generalized few-shot segmentation framework with a straightforward training ...
With the advancement of computation capability, in particular the use of graphical processing units,...