TY - JOUR
T1 - Subgraph Clustering and Atom Learning for Improved Image Classification
AU - Singh, Aryan
AU - Van de Ven, Pepijn
AU - Eising, Ciarán
AU - Denny, Patrick
N1 - Publisher Copyright:
© This is an open access article published by the IET under the Creative Commons Attribution License (http://creativecommons.org/licenses/by/3.0/)
PY - 2024
Y1 - 2024
N2 - In this study, we present the Graph Sub-Graph Network (GSN), a novel hybrid image classification model merging the strengths of Convolutional Neural Networks (CNNs) for feature extraction and Graph Neural Networks (GNNs) for structural modeling. GSN employs k-means clustering to group graph nodes into clusters, facilitating the creation of subgraphs. These subgraphs are then utilized to learn representative ‘atoms‘for dictionary learning, enabling the identification of sparse, class-distinguishable features. This integrated approach is particularly relevant in domains like medical imaging, where discerning subtle feature differences is crucial for accurate classification. To evaluate the performance of our proposed GSN, we conducted experiments on benchmark datasets, including PascalVOC and HAM10000. Our results demonstrate the efficacy of our model in optimizing dictionary configurations across varied classes, which contributes to its effectiveness in medical classification tasks. This performance enhancement is primarily attributed to the integration of CNNs, GNNs, and graph learning techniques, which collectively improve the handling of datasets with limited labeled examples. Specifically, our experiments show that the model achieves a higher accuracy on benchmark datasets such as Pascal VOC and HAM10000 compared to conventional CNN approaches.
AB - In this study, we present the Graph Sub-Graph Network (GSN), a novel hybrid image classification model merging the strengths of Convolutional Neural Networks (CNNs) for feature extraction and Graph Neural Networks (GNNs) for structural modeling. GSN employs k-means clustering to group graph nodes into clusters, facilitating the creation of subgraphs. These subgraphs are then utilized to learn representative ‘atoms‘for dictionary learning, enabling the identification of sparse, class-distinguishable features. This integrated approach is particularly relevant in domains like medical imaging, where discerning subtle feature differences is crucial for accurate classification. To evaluate the performance of our proposed GSN, we conducted experiments on benchmark datasets, including PascalVOC and HAM10000. Our results demonstrate the efficacy of our model in optimizing dictionary configurations across varied classes, which contributes to its effectiveness in medical classification tasks. This performance enhancement is primarily attributed to the integration of CNNs, GNNs, and graph learning techniques, which collectively improve the handling of datasets with limited labeled examples. Specifically, our experiments show that the model achieves a higher accuracy on benchmark datasets such as Pascal VOC and HAM10000 compared to conventional CNN approaches.
KW - Dictionary Learning
KW - GNN
KW - Image Classification
KW - Sub Graph Clustering
UR - http://www.scopus.com/inward/record.url?scp=85216774153&partnerID=8YFLogxK
U2 - 10.1049/icp.2024.3277
DO - 10.1049/icp.2024.3277
M3 - Conference article
AN - SCOPUS:85216774153
SN - 2732-4494
VL - 2024
SP - 55
EP - 62
JO - IET Conference Proceedings
JF - IET Conference Proceedings
IS - 10
T2 - 26th Irish Machine Vision and Image Processing Conference, IMVIP 2024
Y2 - 21 August 2024 through 23 August 2024
ER -