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Dual Contradistinctive Generative Autoencoder

Gaurav Parmar, Dacheng Li, Kwonjoon Lee, Zhuowen Tu

202163 citationsDOI

Abstract

We present a new generative autoencoder model with dual contradistinctive losses to improve generative autoencoder that performs simultaneous inference (reconstruction) and synthesis (sampling). Our model, named dual contradistinctive generative autoencoder (DC-VAE), integrates an instance-level discriminative loss (maintaining the instance-level fidelity for the reconstruction/synthesis) with a set-level adversarial loss (encouraging the set-level fidelity for the reconstruction/synthesis), both being contradistinctive. Extensive experimental results by DC-VAE across different resolutions including 32×32, 64×64, 128×128, and 512×512 are reported. The two contradistinctive losses in VAE work harmoniously in DC-VAE leading to a significant qualitative and quantitative performance enhancement over the baseline VAEs without architectural changes. State-of-the-art or competitive results among generative autoencoders for image reconstruction, image synthesis, image interpolation, and representation learning are observed. DC-VAE is a general-purpose VAE model, applicable to a wide variety of downstream tasks in computer vision and machine learning.

Topics & Concepts

AutoencoderComputer scienceDiscriminative modelArtificial intelligenceGenerative modelGenerative grammarInferencePattern recognition (psychology)Set (abstract data type)Interpolation (computer graphics)FidelityImage (mathematics)High fidelityRepresentation (politics)Dual (grammatical number)Deep learningPolitical scienceLiteratureTelecommunicationsPoliticsEngineeringProgramming languageElectrical engineeringLawArtGenerative Adversarial Networks and Image SynthesisDigital Media Forensic DetectionAdvanced Image Processing Techniques
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