CVOct 27, 2025

FARMER: Flow AutoRegressive Transformer over Pixels

arXiv:2510.23588v28 citationsh-index: 6
Originality Incremental advance
AI Analysis

This work addresses the problem of efficient and high-quality image synthesis for machine learning applications, though it appears incremental as it builds on existing pixel-based generative models.

The paper tackles the challenge of directly modeling the likelihood of raw pixel data for image synthesis by introducing FARMER, a framework that unifies Normalizing Flows and Autoregressive models, achieving competitive performance in image generation while providing exact likelihoods and scalable training.

Directly modeling the explicit likelihood of the raw data distribution is key topic in the machine learning area, which achieves the scaling successes in Large Language Models by autoregressive modeling. However, continuous AR modeling over visual pixel data suffer from extremely long sequences and high-dimensional spaces. In this paper, we present FARMER, a novel end-to-end generative framework that unifies Normalizing Flows (NF) and Autoregressive (AR) models for tractable likelihood estimation and high-quality image synthesis directly from raw pixels. FARMER employs an invertible autoregressive flow to transform images into latent sequences, whose distribution is modeled implicitly by an autoregressive model. To address the redundancy and complexity in pixel-level modeling, we propose a self-supervised dimension reduction scheme that partitions NF latent channels into informative and redundant groups, enabling more effective and efficient AR modeling. Furthermore, we design a one-step distillation scheme to significantly accelerate inference speed and introduce a resampling-based classifier-free guidance algorithm to boost image generation quality. Extensive experiments demonstrate that FARMER achieves competitive performance compared to existing pixel-based generative models while providing exact likelihoods and scalable training.

Foundations

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