AGCN: Augmented Graph Convolutional Network for Lifelong Multi-label
Image Recognition
- URL: http://arxiv.org/abs/2203.05534v2
- Date: Fri, 11 Mar 2022 01:44:54 GMT
- Title: AGCN: Augmented Graph Convolutional Network for Lifelong Multi-label
Image Recognition
- Authors: Kaile Du, Fan Lyu, Fuyuan Hu, Linyan Li, Wei Feng, Fenglei Xu, Qiming
Fu
- Abstract summary: The Lifelong Multi-Label (LML) image recognition builds an online class-incremental classifier in a sequential multi-label image recognition data stream.
The key challenges of LML image recognition are the construction of label relationships on Partial Labels of training data and the Catastrophic Forgetting on old classes.
We propose an Augmented Graph Convolutional Network (AGCN) model that can construct the label relationships across the sequential recognition tasks.
- Score: 8.06616666179388
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The Lifelong Multi-Label (LML) image recognition builds an online
class-incremental classifier in a sequential multi-label image recognition data
stream. The key challenges of LML image recognition are the construction of
label relationships on 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)
model that can construct the label relationships across the sequential
recognition tasks and sustain the 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 while the
inter-task relationships leverage both hard and soft labels from data and a
constructed expert network. Then, based on the ACM, the proposed AGCN captures
label dependencies with dynamic augmented structure and yields effective class
representations. Last, to suppress the forgetting of label dependencies across
old tasks, we propose a relationship-preserving loss as a constraint to the
construction of label relationships. The proposed method is evaluated using two
multi-label image benchmarks and the experimental results show that the
proposed method is effective for LML image recognition and can build convincing
correlation across tasks even if the labels of previous tasks are missing. Our
code is available at https://github.com/Kaile-Du/AGCN.
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