Saved in:
Bibliographic Details
Main Authors: Wang, Yuyang, Ranjan, Anurag, Susskind, Josh, Bautista, Miguel Angel
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2412.03791
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866915310945173504
author Wang, Yuyang
Ranjan, Anurag
Susskind, Josh
Bautista, Miguel Angel
author_facet Wang, Yuyang
Ranjan, Anurag
Susskind, Josh
Bautista, Miguel Angel
contents Flow matching models have emerged as a powerful method for generative modeling on domains like images or videos, and even on irregular or unstructured data like 3D point clouds or even protein structures. These models are commonly trained in two stages: first, a data compressor is trained, and in a subsequent training stage a flow matching generative model is trained in the latent space of the data compressor. This two-stage paradigm sets obstacles for unifying models across data domains, as hand-crafted compressors architectures are used for different data modalities. To this end, we introduce INRFlow, a domain-agnostic approach to learn flow matching transformers directly in ambient space. Drawing inspiration from INRs, we introduce a conditionally independent point-wise training objective that enables INRFlow to make predictions continuously in coordinate space. Our empirical results demonstrate that INRFlow effectively handles different data modalities such as images, 3D point clouds and protein structure data, achieving strong performance in different domains and outperforming comparable approaches. INRFlow is a promising step towards domain-agnostic flow matching generative models that can be trivially adopted in different data domains.
format Preprint
id arxiv_https___arxiv_org_abs_2412_03791
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle INRFlow: Flow Matching for INRs in Ambient Space
Wang, Yuyang
Ranjan, Anurag
Susskind, Josh
Bautista, Miguel Angel
Machine Learning
Artificial Intelligence
Flow matching models have emerged as a powerful method for generative modeling on domains like images or videos, and even on irregular or unstructured data like 3D point clouds or even protein structures. These models are commonly trained in two stages: first, a data compressor is trained, and in a subsequent training stage a flow matching generative model is trained in the latent space of the data compressor. This two-stage paradigm sets obstacles for unifying models across data domains, as hand-crafted compressors architectures are used for different data modalities. To this end, we introduce INRFlow, a domain-agnostic approach to learn flow matching transformers directly in ambient space. Drawing inspiration from INRs, we introduce a conditionally independent point-wise training objective that enables INRFlow to make predictions continuously in coordinate space. Our empirical results demonstrate that INRFlow effectively handles different data modalities such as images, 3D point clouds and protein structure data, achieving strong performance in different domains and outperforming comparable approaches. INRFlow is a promising step towards domain-agnostic flow matching generative models that can be trivially adopted in different data domains.
title INRFlow: Flow Matching for INRs in Ambient Space
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2412.03791