Efficient Subsampling of Realistic Images From GANs Conditional on a Class or a Continuous Variable
Xin Ding, Yongwei Wang, Z. Jane Wang, William J. Welch

TL;DR
This paper introduces cDR-RS, an efficient and effective subsampling method for high-quality images from conditional GANs, improving image quality and label consistency without sacrificing diversity.
Contribution
The paper proposes a novel conditional density ratio-guided rejection sampling method with a new density ratio estimation technique and a filtering scheme for better sampling from cGANs.
Findings
cDR-RS outperforms state-of-the-art methods in effectiveness.
cDR-RS is more efficient than comparable methods.
Reduces Label Score significantly without losing diversity.
Abstract
Recently, subsampling or refining images generated from unconditional GANs has been actively studied to improve the overall image quality. Unfortunately, these methods are often observed less effective or inefficient in handling conditional GANs (cGANs) -- conditioning on a class (aka class-conditional GANs) or a continuous variable (aka continuous cGANs or CcGANs). In this work, we introduce an effective and efficient subsampling scheme, named conditional density ratio-guided rejection sampling (cDR-RS), to sample high-quality images from cGANs. Specifically, we first develop a novel conditional density ratio estimation method, termed cDRE-F-cSP, by proposing the conditional Softplus (cSP) loss and an improved feature extraction mechanism. We then derive the error bound of a density ratio model trained with the cSP loss. Finally, we accept or reject a fake image in terms of its…
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Taxonomy
TopicsCell Image Analysis Techniques · Advanced Image Processing Techniques · Image Processing Techniques and Applications
MethodsDense Connections · Softmax · Convolution · *Communicated@Fast*How Do I Communicate to Expedia? · Six Ways To Communicate To Someone At Expedia Via Phone And Email's. · 1x1 Convolution · Linear Layer · Feedforward Network · ((Reservation@Faqs))How do I cancel a reservation on Expedia? · Non-Local Operation
