基于深度学习的图像补全图像恢复

Phie Chyan, Tri Saptadi
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引用次数: 0

摘要

数字图像在采集和存储过程中会遇到各种各样的干扰,其中一种干扰表现为图像场的某些区域受到破坏,导致图像所代表的一些信息丢失。恢复经历这种干扰的图像的方法之一是使用图像补全技术。图像补全是一种能够填充或完成图像缺失或损坏部分的图像恢复技术。从基于基本图像处理的方法到最新的依靠人工智能算法的方法,已经开发了各种方法来完成这种图像。本研究旨在利用completion.net架构的迁移学习方法,开发并实现基于深度学习的图像补全模型。使用由一组独特的面部照片组成的Facesrub训练数据集可以让模型更好地理解面部属性。与传统的基于图像补丁的图像补全方法相比,本研究方法可以对图像间隙进行图像填充,结果更加真实。通过对被调查者进行视觉测试,获得的结果使被调查者能够理解恢复图像所代表的所有信息,类似于原始图像。
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Image Restoration Using Deep Learning Based Image Completion
Digital images can experience various disturbances in acquisition and storage, one of which is a disturbance indicated by damage to certain areas of the image field and causes the loss of some of the information represented by the image. One of the ways to restore an image experiencing disturbances like this is with image completion technology. Image completion is an image restoration technology capable of filling in or completing missing or corrupted parts of an image. Various methods have been developed for this image completion, starting from those based on basic image processing to the latest relying on artificial intelligence algorithms. This study aims to develop and implement an image completion model based on deep learning with the transfer learning method from the completion.net architecture. Using the Facesrub training dataset consisting of a collection of unique facial photos allows the model to understand facial attributes better. Compared to conventional image completion based on image patches, the method developed in this study can perform image filling in image gaps with more realistic results. Based on visual tests conducted on respondents, the results obtained enable respondents to understand all the information represented by the restored image, similar to the original image.
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发文量
40
审稿时长
8 weeks
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