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Learning Signal-Agnostic Manifolds of Neural Fields

Authors :
Du, Yilun
Collins, Katherine M.
Tenenbaum, Joshua B.
Sitzmann, Vincent
Publication Year :
2021

Abstract

Deep neural networks have been used widely to learn the latent structure of datasets, across modalities such as images, shapes, and audio signals. However, existing models are generally modality-dependent, requiring custom architectures and objectives to process different classes of signals. We leverage neural fields to capture the underlying structure in image, shape, audio and cross-modal audiovisual domains in a modality-independent manner. We cast our task as one of learning a manifold, where we aim to infer a low-dimensional, locally linear subspace in which our data resides. By enforcing coverage of the manifold, local linearity, and local isometry, our model -- dubbed GEM -- learns to capture the underlying structure of datasets across modalities. We can then travel along linear regions of our manifold to obtain perceptually consistent interpolations between samples, and can further use GEM to recover points on our manifold and glean not only diverse completions of input images, but cross-modal hallucinations of audio or image signals. Finally, we show that by walking across the underlying manifold of GEM, we may generate new samples in our signal domains. Code and additional results are available at https://yilundu.github.io/gem/.<br />Comment: NeurIPS 2021, additional results and code at https://yilundu.github.io/gem/

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2111.06387
Document Type :
Working Paper