Semantic image segmentation: Two decades of research
Semantic image segmentation (SiS) plays a fundamental role in a broad variety of computer
vision applications, providing key information for the global understanding of an image. This …
vision applications, providing key information for the global understanding of an image. This …
A survey on continual semantic segmentation: Theory, challenge, method and application
B Yuan, D Zhao - IEEE Transactions on Pattern Analysis and …, 2024 - ieeexplore.ieee.org
Continual learning, also known as incremental learning or life-long learning, stands at the
forefront of deep learning and AI systems. It breaks through the obstacle of one-way training …
forefront of deep learning and AI systems. It breaks through the obstacle of one-way training …
A unified approach to domain incremental learning with memory: Theory and algorithm
Abstract Domain incremental learning aims to adapt to a sequence of domains with access
to only a small subset of data (ie, memory) from previous domains. Various methods have …
to only a small subset of data (ie, memory) from previous domains. Various methods have …
[HTML][HTML] Domain-incremental learning for fire detection in space-air-ground integrated observation network
M Wang, D Yu, W He, P Yue, Z Liang - International Journal of Applied …, 2023 - Elsevier
Deep learning-based fire detection models are usually trained offline on static datasets. For
continuously increasing heterogeneous sensor data, incremental learning is a resolution to …
continuously increasing heterogeneous sensor data, incremental learning is a resolution to …
Principles of forgetting in domain-incremental semantic segmentation in adverse weather conditions
Deep neural networks for scene perception in automated vehicles achieve excellent results
for the domains they were trained on. However, in real-world conditions, the domain of …
for the domains they were trained on. However, in real-world conditions, the domain of …
Compositional Prompting for Anti-Forgetting in Domain Incremental Learning
Abstract Domain Incremental Learning (DIL) focuses on handling complex domain shifts of a
continuous data stream for visual tasks such as image classification and image …
continuous data stream for visual tasks such as image classification and image …
Online distillation with continual learning for cyclic domain shifts
In recent years, online distillation has emerged as a powerful technique for adapting real-
time deep neural networks on the fly using a slow, but accurate teacher model. However, a …
time deep neural networks on the fly using a slow, but accurate teacher model. However, a …
[HTML][HTML] Generative appearance replay for continual unsupervised domain adaptation
Deep learning models can achieve high accuracy when trained on large amounts of labeled
data. However, real-world scenarios often involve several challenges: Training data may …
data. However, real-world scenarios often involve several challenges: Training data may …
MDINet: Multi-Domain Incremental Network for Change Detection
Traditional change detectors are ill-equipped for incremental learning (IL). Existing IL
methods address the problem of catastrophic forgetting by artificially adding categories and …
methods address the problem of catastrophic forgetting by artificially adding categories and …
Towards continual adaptation in industrial anomaly detection
Anomaly detection (AD) has gained widespread attention due to its ability to identify defects
in industrial scenarios using only normal samples. Although traditional AD methods …
in industrial scenarios using only normal samples. Although traditional AD methods …