Abstract

Image interpolation is often implemented using one of two methods: optical flow or convolutional neural networks. These methods are typically pixel-based; they do not work well on objects between images far apart. Because they either rely on a simple frame average or pixel motion, they do not have the required knowledge of the semantic structure of the data. In this paper, we propose a method for image interpolation based on latent representations. We use a simple network structure based on a variational autoencoder and an adjustable hyperparameter that imposes the latent space distribution to generate accurate interpolation. To visualize the effects of the proposed approach, we evaluate a synthetic dataset. We demonstrate that our method outperforms both pixel-based methods and a conventional variational autoencoder, with particular improvements in nonsuccessive images.

Highlights

  • T HE process of generating in-between images from a sequence of images is known as image interpolation

  • We propose a novel method for the problem of image interpolation based on latent variables

  • We demonstrate the benefits of using learned latent representations for the task of image interpolation

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Summary

Introduction

T HE process of generating in-between images from a sequence of images is known as image interpolation. Image interpolation reveals the dynamics of objects in a scene by relating spatial features (i.e., distinct viewpoints) to temporal changes (i.e., different timestamps) [1]. Image interpolation methods are used in a wide variety of computer vision applications, including the movie and animation industry. It aims to enhance the quality of images displayed in different scenarios. In the digital and movie industry, original videos often have a high frame rate. Because of the limitations on network bandwidth, the rate has to decrease before transmission. This reduction is often made by skipping some frames [2].

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