A Parameterized Generative Adversarial Network Using Cyclic Projection
for Explainable Medical Image Classification
- URL: http://arxiv.org/abs/2311.14388v3
- Date: Thu, 14 Dec 2023 10:40:18 GMT
- Title: A Parameterized Generative Adversarial Network Using Cyclic Projection
for Explainable Medical Image Classification
- Authors: Xiangyu Xiong, Yue Sun, Xiaohong Liu, Chan-Tong Lam, Tong Tong, Hao
Chen, Qinquan Gao, Wei Ke, Tao Tan
- Abstract summary: ParaGAN is a parameterized GAN that effectively controls the changes of synthetic samples among domains and highlights the attention regions for downstream classification.
Our experiments show that ParaGAN can consistently outperform the existing augmentation methods with explainable classification on two small-scale medical datasets.
- Score: 17.26012062961371
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Although current data augmentation methods are successful to alleviate the
data insufficiency, conventional augmentation are primarily intra-domain while
advanced generative adversarial networks (GANs) generate images remaining
uncertain, particularly in small-scale datasets. In this paper, we propose a
parameterized GAN (ParaGAN) that effectively controls the changes of synthetic
samples among domains and highlights the attention regions for downstream
classification. Specifically, ParaGAN incorporates projection distance
parameters in cyclic projection and projects the source images to the decision
boundary to obtain the class-difference maps. Our experiments show that ParaGAN
can consistently outperform the existing augmentation methods with explainable
classification on two small-scale medical datasets.
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