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Multi-Label Classification in Anime Illustrations Based on Hierarchical Attribute Relationships
by
Lan, Ziwen
, Ogawa, Takahiro
, Haseyama, Miki
, Maeda, Keisuke
in
Accuracy
/ Analysis
/ Animated films
/ Anime (Animation)
/ anime illustration
/ attribute classification
/ Classification
/ Clustering
/ Datasets
/ generative adversarial networks
/ graph convolutional networks
/ hierarchical classification
/ Illustrations
/ Medical imaging equipment
/ Recommender systems
/ Semantics
2023
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Multi-Label Classification in Anime Illustrations Based on Hierarchical Attribute Relationships
by
Lan, Ziwen
, Ogawa, Takahiro
, Haseyama, Miki
, Maeda, Keisuke
in
Accuracy
/ Analysis
/ Animated films
/ Anime (Animation)
/ anime illustration
/ attribute classification
/ Classification
/ Clustering
/ Datasets
/ generative adversarial networks
/ graph convolutional networks
/ hierarchical classification
/ Illustrations
/ Medical imaging equipment
/ Recommender systems
/ Semantics
2023
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Do you wish to request the book?
Multi-Label Classification in Anime Illustrations Based on Hierarchical Attribute Relationships
by
Lan, Ziwen
, Ogawa, Takahiro
, Haseyama, Miki
, Maeda, Keisuke
in
Accuracy
/ Analysis
/ Animated films
/ Anime (Animation)
/ anime illustration
/ attribute classification
/ Classification
/ Clustering
/ Datasets
/ generative adversarial networks
/ graph convolutional networks
/ hierarchical classification
/ Illustrations
/ Medical imaging equipment
/ Recommender systems
/ Semantics
2023
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Multi-Label Classification in Anime Illustrations Based on Hierarchical Attribute Relationships
Journal Article
Multi-Label Classification in Anime Illustrations Based on Hierarchical Attribute Relationships
2023
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Overview
In this paper, we propose a hierarchical multi-modal multi-label attribute classification model for anime illustrations using a graph convolutional network (GCN). Our focus is on the challenging task of multi-label attribute classification, which requires capturing subtle features intentionally highlighted by creators of anime illustrations. To address the hierarchical nature of these attributes, we leverage hierarchical clustering and hierarchical label assignments to organize the attribute information into a hierarchical feature. The proposed GCN-based model effectively utilizes this hierarchical feature to achieve high accuracy in multi-label attribute classification. The contributions of the proposed method are as follows. Firstly, we introduce GCN to the multi-label attribute classification task of anime illustrations, enabling the capturing of more comprehensive relationships between attributes from their co-occurrence. Secondly, we capture subordinate relationships among the attributes by adopting hierarchical clustering and hierarchical label assignment. Lastly, we construct a hierarchical structure of attributes that appear more frequently in anime illustrations based on certain rules derived from previous studies, which helps to reflect the relationships between different attributes. The experimental results on multiple datasets show that the proposed method is effective and extensible by comparing it with some existing methods, including the state-of-the-art method.
Publisher
MDPI AG,MDPI
Subject
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