PAC-FNO: Parallel-Structured All-Component Fourier Neural Operators for Recognizing Low-Quality Images
A standard practice in developing image recognition models is to train a model on a specific image resolution and then deploy it. However, in real-world inference, models often encounter images different from the training sets in resolution and/or subject to natural variations such as weather change...
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Zusammenfassung: | A standard practice in developing image recognition models is to train a
model on a specific image resolution and then deploy it. However, in real-world
inference, models often encounter images different from the training sets in
resolution and/or subject to natural variations such as weather changes, noise
types and compression artifacts. While traditional solutions involve training
multiple models for different resolutions or input variations, these methods
are computationally expensive and thus do not scale in practice. To this end,
we propose a novel neural network model, parallel-structured and all-component
Fourier neural operator (PAC-FNO), that addresses the problem. Unlike
conventional feed-forward neural networks, PAC-FNO operates in the frequency
domain, allowing it to handle images of varying resolutions within a single
model. We also propose a two-stage algorithm for training PAC-FNO with a
minimal modification to the original, downstream model. Moreover, the proposed
PAC-FNO is ready to work with existing image recognition models. Extensively
evaluating methods with seven image recognition benchmarks, we show that the
proposed PAC-FNO improves the performance of existing baseline models on images
with various resolutions by up to 77.1% and various types of natural variations
in the images at inference. |
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DOI: | 10.48550/arxiv.2402.12721 |