Generative networks as inverse problems with fractional wavelet scattering networks
Jiasong Wu, Jing Zhang, Fuzhi Wu, Youyong Kong, Guanyu Yang, Lotfi, Senhadji, Huazhong Shu

TL;DR
This paper introduces Generative Fractional Scattering Networks (GFRSNs), enhancing image generation quality by replacing wavelet scattering with fractional wavelet scattering and proposing a new feature fusion method, addressing limitations of previous GSN models.
Contribution
It proposes GFRSNs using fractional wavelet scattering networks and a novel feature-map fusion method to improve generative performance over existing GSN approaches.
Findings
GFRSNs outperform traditional GSNs in image quality.
The Feature-Map Fusion method effectively preserves information.
Fractional wavelet scattering enhances feature expressiveness.
Abstract
Deep learning is a hot research topic in the field of machine learning methods and applications. Generative Adversarial Networks (GANs) and Variational Auto-Encoders (VAEs) provide impressive image generations from Gaussian white noise, but both of them are difficult to train since they need to train the generator (or encoder) and the discriminator (or decoder) simultaneously, which is easy to cause unstable training. In order to solve or alleviate the synchronous training difficult problems of GANs and VAEs, recently, researchers propose Generative Scattering Networks (GSNs), which use wavelet scattering networks (ScatNets) as the encoder to obtain the features (or ScatNet embeddings) and convolutional neural networks (CNNs) as the decoder to generate the image. The advantage of GSNs is the parameters of ScatNets are not needed to learn, and the disadvantage of GSNs is that the…
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Taxonomy
TopicsImage and Signal Denoising Methods · Advanced Image Fusion Techniques · Generative Adversarial Networks and Image Synthesis
MethodsScattering Transform · Principal Components Analysis
