Alpha Matting via Residual Convolutional Grid Network

Alpha matting is an important topic in areas of computer vision. It has various applications, such as virtual reality, digital image and video editing, and image synthesis. The conventional approaches for alpha matting perform unsatisfactorily when they encounter complicated background and foregroun...

Full description

Bibliographic Details
Main Author: Zhang, Huizhen
Other Authors: Zhao, Jiying
Format: Others
Language:en
Published: Université d'Ottawa / University of Ottawa 2019
Subjects:
Online Access:http://hdl.handle.net/10393/39467
id ndltd-uottawa.ca-oai-ruor.uottawa.ca-10393-39467
record_format oai_dc
spelling ndltd-uottawa.ca-oai-ruor.uottawa.ca-10393-394672019-07-24T04:30:22Z Alpha Matting via Residual Convolutional Grid Network Zhang, Huizhen Zhao, Jiying Alpha matting Convolutional Neural Network Grid Network Alpha matting is an important topic in areas of computer vision. It has various applications, such as virtual reality, digital image and video editing, and image synthesis. The conventional approaches for alpha matting perform unsatisfactorily when they encounter complicated background and foreground. It is also difficult for them to extract alpha matte accurately when the foreground objects are transparent, semi-transparent, perforated or hairy. Fortunately, the rapid development of deep learning techniques brings new possibilities for solving alpha matting problems. In this thesis, we propose a residual convolutional grid network for alpha matting, which is based on the convolutional neural networks (CNNs) and can learn the alpha matte directly from the original image and its trimap. Our grid network consists of horizontal residual convolutional computation blocks and vertical upsampling/downsampling convolutional computation blocks. By choosing different paths to pass information by itself, our network can not only retain the rich details of the image but also extract high-level abstract semantic information of the image. The experimental results demonstrate that our method can solve the matting problems that plague conventional matting methods for decades and outperform all the other state-of-the-art matting methods in quality and visual evaluation. The only matting method performs a little better than ours is the current best matting method. However, that matting method requires three times amount of trainable parameters compared with ours. Hence, our matting method is the best considering the computation complexity, memory usage, and matting performance. 2019-07-23T19:00:10Z 2019-07-23T19:00:10Z 2019-07-23 Thesis http://hdl.handle.net/10393/39467 en application/pdf Université d'Ottawa / University of Ottawa
collection NDLTD
language en
format Others
sources NDLTD
topic Alpha matting
Convolutional Neural Network
Grid Network
spellingShingle Alpha matting
Convolutional Neural Network
Grid Network
Zhang, Huizhen
Alpha Matting via Residual Convolutional Grid Network
description Alpha matting is an important topic in areas of computer vision. It has various applications, such as virtual reality, digital image and video editing, and image synthesis. The conventional approaches for alpha matting perform unsatisfactorily when they encounter complicated background and foreground. It is also difficult for them to extract alpha matte accurately when the foreground objects are transparent, semi-transparent, perforated or hairy. Fortunately, the rapid development of deep learning techniques brings new possibilities for solving alpha matting problems. In this thesis, we propose a residual convolutional grid network for alpha matting, which is based on the convolutional neural networks (CNNs) and can learn the alpha matte directly from the original image and its trimap. Our grid network consists of horizontal residual convolutional computation blocks and vertical upsampling/downsampling convolutional computation blocks. By choosing different paths to pass information by itself, our network can not only retain the rich details of the image but also extract high-level abstract semantic information of the image. The experimental results demonstrate that our method can solve the matting problems that plague conventional matting methods for decades and outperform all the other state-of-the-art matting methods in quality and visual evaluation. The only matting method performs a little better than ours is the current best matting method. However, that matting method requires three times amount of trainable parameters compared with ours. Hence, our matting method is the best considering the computation complexity, memory usage, and matting performance.
author2 Zhao, Jiying
author_facet Zhao, Jiying
Zhang, Huizhen
author Zhang, Huizhen
author_sort Zhang, Huizhen
title Alpha Matting via Residual Convolutional Grid Network
title_short Alpha Matting via Residual Convolutional Grid Network
title_full Alpha Matting via Residual Convolutional Grid Network
title_fullStr Alpha Matting via Residual Convolutional Grid Network
title_full_unstemmed Alpha Matting via Residual Convolutional Grid Network
title_sort alpha matting via residual convolutional grid network
publisher Université d'Ottawa / University of Ottawa
publishDate 2019
url http://hdl.handle.net/10393/39467
work_keys_str_mv AT zhanghuizhen alphamattingviaresidualconvolutionalgridnetwork
_version_ 1719229929565978624