Multi-Label Continual Learning using Augmented Graph Convolutional Network

11/27/2022
by   Kaile Du, et al.
0

Multi-Label Continual Learning (MLCL) builds a class-incremental framework in a sequential multi-label image recognition data stream. The critical challenges of MLCL are the construction of label relationships on past-missing and future-missing partial labels of training data and the catastrophic forgetting on old classes, resulting in poor generalization. To solve the problems, the study proposes an Augmented Graph Convolutional Network (AGCN++) that can construct the cross-task label relationships in MLCL and sustain catastrophic forgetting. First, we build an Augmented Correlation Matrix (ACM) across all seen classes, where the intra-task relationships derive from the hard label statistics. In contrast, the inter-task relationships leverage hard and soft labels from data and a constructed expert network. Then, we propose a novel partial label encoder (PLE) for MLCL, which can extract dynamic class representation for each partial label image as graph nodes and help generate soft labels to create a more convincing ACM and suppress forgetting. Last, to suppress the forgetting of label dependencies across old tasks, we propose a relationship-preserving constrainter to construct label relationships. The inter-class topology can be augmented automatically, which also yields effective class representations. The proposed method is evaluated using two multi-label image benchmarks. The experimental results show that the proposed way is effective for MLCL image recognition and can build convincing correlations across tasks even if the labels of previous tasks are missing.

READ FULL TEXT

page 1

page 4

page 8

page 11

research
03/10/2022

AGCN: Augmented Graph Convolutional Network for Lifelong Multi-label Image Recognition

The Lifelong Multi-Label (LML) image recognition builds an online class-...
research
07/16/2022

Class-Incremental Lifelong Learning in Multi-Label Classification

Existing class-incremental lifelong learning studies only the data is wi...
research
08/08/2022

A Multi-label Continual Learning Framework to Scale Deep Learning Approaches for Packaging Equipment Monitoring

Continual Learning aims to learn from a stream of tasks, being able to r...
research
02/26/2023

Knowledge Restore and Transfer for Multi-label Class-Incremental Learning

Current class-incremental learning research mainly focuses on single-lab...
research
08/28/2023

GKGNet: Group K-Nearest Neighbor based Graph Convolutional Network for Multi-Label Image Recognition

Multi-Label Image Recognition (MLIR) is a challenging task that aims to ...
research
09/08/2020

Imbalanced Continual Learning with Partitioning Reservoir Sampling

Continual learning from a sequential stream of data is a crucial challen...
research
10/10/2021

Transformer-based Dual Relation Graph for Multi-label Image Recognition

The simultaneous recognition of multiple objects in one image remains a ...

Please sign up or login with your details

Forgot password? Click here to reset