Likelihood approximations for images are not trivial to compute and can be useful in many applications. We examine the use of Contrastive Language-Image Pre-training (CLIP) to assess the likelihood of images and captions. We introduce \textit{Whitened CLIP}, a novel transformation of the CLIP latent space via an invertible linear operation. This transformation ensures that each feature in the embedding space has zero mean, unit standard deviation, and no correlation with all other features, resulting in an identity covariance matrix. We show that the whitened embeddings statistics can be well approximated as a standard normal distribution, thus, the log-likelihood is estimated simply by the square Euclidean norm in the whitened embedding space. The whitening procedure is completely training-free and performed using a pre-computed whitening matrix, hence, is very fast. We present several preliminary experiments demonstrating the properties and applicability of these likelihood scores to images and captions.
Whitened CLIP as a Likelihood Surrogate of Images and Captions
Whitened CLIP, a transformation of CLIP's latent space, enables efficient likelihood approximation for images and captions using standard normal distribution properties.
- Year
- 2025
- Venue
- arXiv 2025
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- 3
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- arxiv.org/abs/2505.06934ARXIV-DEFAULT
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