Pseudo Skin Image Generator (PSIG-Net): Ambiguity-free sample generation and outlier control for skin lesion classification

Isack Farady, Elvin Nur Furqon, Chia Chen Kuo, Yih Kuen Jan, Chih Yang Lin

研究成果: 雜誌貢獻期刊論文同行評審

1 引文 斯高帕斯(Scopus)

摘要

Automated skin lesion classification in dermoscopic images is essential for improving diagnostic performance and reducing melanoma-related deaths. Although deep learning models for image classification have made breakthroughs in classifying skin lesions with intra-class and inter-class similarity issues, some ambiguous features of original samples in the training data still remain unresolved. The ambiguity of the samples remains a challenge for the model's performance on overlapping training data. To address these challenges, we introduce a novel framework called Pseudo Skin Image Generator network (PSIG-Net). The framework not only removes the ambiguous samples but also generates new pseudo samples to enrich the training data. Our approach targets the low-variation samples by generating new pseudo samples using a generative adversarial network (GAN) model that emulates the characteristics of the original respective classes. We regulate the pseudo samples through a series of processing stages to control their similarity and exclude outliers. We employ a Siamese-based network to control the distance between these pseudo samples and the original clusters. The assessment of density-based distance is utilized to select only the closest relationships with the original samples. Through a series of experiments, we observed the significant improvement of our proposed PSIG network, achieving competitive results when compared to similar methods on two challenging skin lesion datasets.

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文章編號106112
期刊Biomedical Signal Processing and Control
93
DOIs
出版狀態已出版 - 7月 2024

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