Abstract

In this burgeoning age and society where people are tending towards learning the benefits adversarial network we hereby benefiting the society tend to extend our research towards adversarial networks as a general-purpose solution to image-to-image translation problems. Image to image translation comes under the peripheral class of computer sciences extending our branch in the field of neural networks. We apprentice Generative adversarial networks as an optimum solution for generating Image to image translation where our motive is to learn a mapping between an input image(X) and an output image(Y) using a set of predefined pairs[4]. But it is not necessary that the paired dataset is provided to for our use and hence adversarial methods comes into existence. Further, we advance a method that is able to convert and recapture an image from a domain X to another domain Y in the absence of paired datasets. Our objective is to learn a mapping function G: A —B such that the mapping is able to distinguish the images of G(A) within the distribution of B using an adversarial loss.[1] Because this mapping is high biased, we introduce an inverse mapping function F B—A and introduce a cycle consistency loss[7]. Furthermore we wish to extend our research with various domains and involve them with neural style transfer, semantic image synthesis. Our essential commitment is to show that on a wide assortment of issues, conditional GANs produce sensible outcomes. This paper hence calls for the attention to the purpose of converting image X to image Y and we commit to the transfer learning of training dataset and optimising our code.You can find the source code for the same here.

Highlights

  • Many problems arising in various domains can be overcome with the advection of translation tasks

  • Our contribution as we propose this paper is that cycle GAN is able to tackle translation tasks with utmost accuracy

  • In this paper we proposed unsupervised image to image translation using Cycle GAN which produced pleasing and fastidious results with utmost accuracy on various datasets

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Summary

INTRODUCTION

Many problems arising in various domains can be overcome with the advection of translation tasks. Image to image translation comes under the supervised approach for computer vison Cycle GAN helps us to overcome the lack of paired datasets available everytime having to one to one relationship between the source. Just as a text can be conveyed in many languages the same way any scene can translated into RGB with the help of translation tasks creating enormous amount of images. We explore Cycle GAN as generative model of data that learn the generative nature of the pictures.

Motivation
METHODOLOGY
Objective Of Cycle GAN
Pre-processing Of Images
Building the Generator
Cycle Consistency Loss
Build the Discriminator
Network Architecture
Training the model
Evaluation Metrics
Applications
CONCLUSION
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