Publication | Closed Access
Dual Contradistinctive Generative Autoencoder
62
Citations
61
References
2021
Year
Unknown Venue
Artificial IntelligenceEngineeringMachine LearningAutoencodersGenerative SystemImage AnalysisGenerative ModelComputational ImagingGenerative AutoencoderSynthetic Image GenerationGenerative Artificial IntelligenceSimultaneous InferenceComputer EngineeringGenerative ModelsComputer ScienceDeep LearningComputer VisionGenerative Adversarial NetworkGenerative AiDual Contradistinctive Losses
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.
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