Abstract

Image inpainting seeks to fill in corrupted areas with pixels that have a similar texture and content with its surroundings. For high-structured data, e.g., human face, some recent works can achieve quite realistic results. However, almost all existing methods learned a determined mapping from a corrupted input to the final result, yet ignored the potential multiple plausible solutions of the same input. Furthermore, they have not explored the underlying connections between those plausible solutions and semantic conditions. In this work, we propose a novel deep representation calibrated Bayesian neural network (DRCBNN) for semantically explainable face inpainting and editing. By leveraging the advantages that Bayesian decision theory deals with uncertainty, the proposed framework exploits deep representation into Bayesian decision theory and derive a deep representation calibrated evidence lower bound (ELBO). In comparison with traditional ELBO in BNN, the newly calibrated ELBO is a more task-specific loss function. After optimizing the newly calibrated ELBO, it allows to inference desired inpainting outputs in accordance with specific semantics. Finally, experiments demonstrated that our method can produce multiple semantics-aware inpainting outputs and outperforms the state-of-the-arts.

Highlights

  • Image inpainting refers to fill in the holes of an image with semantic content

  • We propose a deep representation calibrated Bayesian neural network (DRCBNN) to inpaint images in accordance to the specification of semantics

  • DEEP REPRESENTATION CALIBRATED BNN 1) MOTIVATION Based on Bayesian decision theory, we introduce latent variable z∗ as deep representation of x∗ in Eq 5

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Summary

INTRODUCTION

Image inpainting refers to fill in the holes of an image with semantic content. It is extensively exploited to remove unwanted content, edit image and render images. Overall, existing deep learning based methods achieved impressive visual results on filling the missing part of the input image, especially on highlystructured data (e.g., human faces). For these methods, each inpainting output is unique and highly dependent on the statistical priors learned from the training data. We propose a deep representation calibrated Bayesian neural network (DRCBNN) to inpaint images in accordance to the specification of semantics. Based on Bayesian decision theory, we exploit the deep latent representation to capture the complex variations of semantics. The newly designed Bayesian decision theory generates deep representation calibrated evidence lower bound (ELBO) Such calibrated ELBO consists of two parts: semantics encoding and semantics recognition. In [8], the partial convolution is proposed to perform convolutional operations on only valid pixels

FACE INPAINTING
BAYESIAN NEURAL NETWORK
EXPERIMENTS
BASELINES We compared our method with the following state-of-thearts:
QUANTITATIVE EVALUATION
CONCLUSION
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