STF

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STF

A Stable Target Field (STF) objective is proposed as a generalized version of the denoising score-matching objective to reduce the variance of training targets using an additional reference batch of examples.

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An Overview of STF

A Stable Target Field (STF) objective is proposed as a generalized version of the denoising score-matching objective to reduce the variance of training targets using an additional reference batch of examples.

State-Of-The-Art FID of 1.90 on CIFAR-10

SOTA FID Scores

STF generative model achieved a state-of-the-art FID score of 1.90 on CIFAR-10.

The bias vanishes with increasing reference batch size

Reduced Variance

Stable targets trade bias for lower variance, and bias decreases with a larger reference batch size.

Model's new objective enhances the image quality.

Better Image Enhancement

Improvement in diffusions models' quality, stability, and training speed on multiple datasets with ODE/SDE solvers.

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  • Sample Codes

  • Limitations

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TaskDatasetScore
Image Generation (VE, PC)CIFAR-102.66
Image Generation (VE, RK45)CIFAR-105.51
Image Generation (VP, DDIM)CIFAR-105.06
Image Generation (VP, RK45)CIFAR-102.99
Image Generation (EDM, Heun, NCSN++)CIFAR-101.9
Image Generation (EDM, Heun, DDPM+)CIFAR-101.92
Image Generation (VE, RK45)CelebA 64x645.34
Image Generation (VE, PC)CelebA 64x648.28
TasksBusiness Use CasesExamples
Image GenerationCIFAR-101.9