Evaluating Generatively Synthesized Diabetic Retinopathy Imagery

08/10/2022
by   Cristina-Madalina Dragan, et al.
0

Publicly available data for the training of diabetic retinopathy classifiers is unbalanced. Generative adversarial networks can successfully synthesize retinal fundus imagery. In order for synthetic imagery to be of benefit, images need to be of high quality and diverse. Presently, several evaluation metrics are used to evaluate the quality and diversity of imagery synthesized from generative adversarial networks. This work contributes, the first of its kind, empirical assessment for the suitability of evaluation metrics used in the literature for the evaluation of generative adversarial networks for generating retinal fundus images in the context of diabetic retinopathy. Frechet Inception Distance, Peak Signal-to-Noise Ratio and Cosine Distance's capacity to assess the quality and diversity of synthetic proliferative diabetic retionpathy imagery is investigated. A quantitative analysis is performed to enable an improved methodology for selecting the synthetic imagery to be used for augmenting a classifier's training dataset. Results indicate that Frechet Inception Distance is suitable for evaluating the diversity of synthetic imagery, and for identifying if the imagery has features corresponding to its class label. Peak Signal-to-Noise Ratio is suitable for indicating if the synthetic imagery has valid diabetic retinopathy lesions and if its features correspond to its class label. These results demonstrate the importance of performing such empirical evaluation, especially in the context of biomedical domains where utilisation in applied setting is intended.

READ FULL TEXT

page 1

page 5

research
06/22/2022

A Study on the Evaluation of Generative Models

Implicit generative models, which do not return likelihood values, such ...
research
09/21/2023

Adaptive Input-image Normalization for Solving Mode Collapse Problem in GAN-based X-ray Images

Biomedical image datasets can be imbalanced due to the rarity of targete...
research
01/25/2022

Addressing the Intra-class Mode Collapse Problem using Adaptive Input Image Normalization in GAN-based X-ray Images

Biomedical image datasets can be imbalanced due to the rarity of targete...
research
04/02/2021

Toward Generating Synthetic CT Volumes using a 3D-Conditional Generative Adversarial Network

We present a novel conditional Generative Adversarial Network (cGAN) arc...
research
11/16/2019

3D Conditional Generative Adversarial Networks to enable large-scale seismic image enhancement

We propose GAN-based image enhancement models for frequency enhancement ...
research
08/06/2017

Image Quality Assessment Techniques Show Improved Training and Evaluation of Autoencoder Generative Adversarial Networks

We propose a training and evaluation approach for autoencoder Generative...
research
05/06/2019

Source Generator Attribution via Inversion

With advances in Generative Adversarial Networks (GANs) leading to drama...

Please sign up or login with your details

Forgot password? Click here to reset