2021
DOI: 10.48550/arxiv.2110.07439
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Inverse Problems Leveraging Pre-trained Contrastive Representations

Abstract: We study a new family of inverse problems for recovering representations of corrupted data. We assume access to a pre-trained representation learning network R(x) that operates on clean images, like CLIP. The problem is to recover the representation of an image R(x), if we are only given a corrupted version A(x), for some known forward operator A. We propose a supervised inversion method that uses a contrastive objective to obtain excellent representations for highly corrupted images. Using a linear probe on o… Show more

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