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$\epsilon$-VAE: Denoising as Visual Decoding

Authors :
Zhao, Long
Woo, Sanghyun
Wan, Ziyu
Li, Yandong
Zhang, Han
Gong, Boqing
Adam, Hartwig
Jia, Xuhui
Liu, Ting
Publication Year :
2024

Abstract

In generative modeling, tokenization simplifies complex data into compact, structured representations, creating a more efficient, learnable space. For high-dimensional visual data, it reduces redundancy and emphasizes key features for high-quality generation. Current visual tokenization methods rely on a traditional autoencoder framework, where the encoder compresses data into latent representations, and the decoder reconstructs the original input. In this work, we offer a new perspective by proposing denoising as decoding, shifting from single-step reconstruction to iterative refinement. Specifically, we replace the decoder with a diffusion process that iteratively refines noise to recover the original image, guided by the latents provided by the encoder. We evaluate our approach by assessing both reconstruction (rFID) and generation quality (FID), comparing it to state-of-the-art autoencoding approach. We hope this work offers new insights into integrating iterative generation and autoencoding for improved compression and generation.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2410.04081
Document Type :
Working Paper