Density estimation, compression and data generation are crucial tasks in artificial intelligence. Variational Auto-Encoders (VAEs) constitute a single framework to achieve these goals. Here, we present a novel class of generative models, called self-supervised Variational Auto-Encoder (selfVAE), that utilizes deterministic and discrete variational posteriors. This class of models allows to perform both conditional and unconditional sampling, while simplifying the objective function. First, we use a single self-supervised transformation as a latent variable, where a transformation is either downscaling or edge detection. Next, we consider a hierarchical architecture, i.e., multiple transformations, and we show its benefits compared to the VAE. The flexibility of selfVAE in data reconstruction finds a particularly interesting use case in data compression tasks, where we can trade-off memory for better data quality, and vice-versa. We present performance of our approach on three benchmark image data (Cifar10, Imagenette64, and CelebA).
Self-Supervised Variational Auto-Encoders
A self-supervised Variational Auto-Encoder (selfVAE) with deterministic and discrete variational posteriors achieves density estimation, compression, and data generation with improved flexibility and performance compared to VAEs.
- Year
- 2020
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- self-supervised-variational-auto-encoders
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- 2
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2010.02014v2ARXIV-DEFAULT
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