FastShrinkage: Perceptually-aware retargeting toward mobile platforms

Retargeting aims at adapting an original high-resolution photo/video to a low-resolution screen with an arbitrary aspect ratio. Conventional approaches are generally based on desktop PCs, since the computation might be intolerable for mobile platforms (especially when retargeting videos). Besides, o...

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Main Authors: LIU, Zhenguang, WANG, Zepeng, ZHANG, Luming, SHAH, Rajiv Ratn, XIA, Yingjie, YANG, Yi, LIU, Wei
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Language:English
Published: Institutional Knowledge at Singapore Management University 2017
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Online Access:https://ink.library.smu.edu.sg/sis_research/3874
https://ink.library.smu.edu.sg/context/sis_research/article/4876/viewcontent/FastShrinkage_Perceptually_aware_Retargeting_Towar__1_.pdf
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spelling sg-smu-ink.sis_research-48762018-03-06T09:17:04Z FastShrinkage: Perceptually-aware retargeting toward mobile platforms LIU, Zhenguang WANG, Zepeng ZHANG, Luming SHAH, Rajiv Ratn XIA, Yingjie YANG, Yi LIU, Wei Retargeting aims at adapting an original high-resolution photo/video to a low-resolution screen with an arbitrary aspect ratio. Conventional approaches are generally based on desktop PCs, since the computation might be intolerable for mobile platforms (especially when retargeting videos). Besides, only low-level visual features are exploited typically, whereas human visual perception is not well encoded. In this paper, we propose a novel retargeting framework which fast shrinks photo/video by leveraging human gaze behavior. Specifically, we first derive a geometry-preserved graph ranking algorithm, which efficiently selects a few salient object patches to mimic human gaze shifting path (GSP) when viewing each scenery. Afterward, an aggregation-based CNN is developed to hierarchically learn the deep representation for each GSP. Based on this, a probabilistic model is developed to learn the priors of the training photos which are marked as aesthetically-pleasing by professional photographers. We utilize the learned priors to efficiently shrink the corresponding GSP of a retargeted photo/video to be maximally similar to those from the training photos. Extensive experiments have demonstrated that: 1) our method consumes less than 35ms to retarget a 1024 × 768 photo (or a 1280 × 720 video frame) on popular iOS/Android devices, which is orders of magnitude faster than the conventional retargeting algorithms; 2) the retargeted photos/videos produced by our method outperform its competitors significantly based on the paired-comparison-based user study; and 3) the learned GSPs are highly indicative of human visual attention according to the human eye tracking experiments. 2017-10-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/3874 info:doi/10.1145/3123266.3123377 https://ink.library.smu.edu.sg/context/sis_research/article/4876/viewcontent/FastShrinkage_Perceptually_aware_Retargeting_Towar__1_.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Deep feature Mobile platform Perceptual Probabilistic model Retarget Programming Languages and Compilers Software Engineering
institution Singapore Management University
building SMU Libraries
continent Asia
country Singapore
Singapore
content_provider SMU Libraries
collection InK@SMU
language English
topic Deep feature
Mobile platform
Perceptual
Probabilistic model
Retarget
Programming Languages and Compilers
Software Engineering
spellingShingle Deep feature
Mobile platform
Perceptual
Probabilistic model
Retarget
Programming Languages and Compilers
Software Engineering
LIU, Zhenguang
WANG, Zepeng
ZHANG, Luming
SHAH, Rajiv Ratn
XIA, Yingjie
YANG, Yi
LIU, Wei
FastShrinkage: Perceptually-aware retargeting toward mobile platforms
description Retargeting aims at adapting an original high-resolution photo/video to a low-resolution screen with an arbitrary aspect ratio. Conventional approaches are generally based on desktop PCs, since the computation might be intolerable for mobile platforms (especially when retargeting videos). Besides, only low-level visual features are exploited typically, whereas human visual perception is not well encoded. In this paper, we propose a novel retargeting framework which fast shrinks photo/video by leveraging human gaze behavior. Specifically, we first derive a geometry-preserved graph ranking algorithm, which efficiently selects a few salient object patches to mimic human gaze shifting path (GSP) when viewing each scenery. Afterward, an aggregation-based CNN is developed to hierarchically learn the deep representation for each GSP. Based on this, a probabilistic model is developed to learn the priors of the training photos which are marked as aesthetically-pleasing by professional photographers. We utilize the learned priors to efficiently shrink the corresponding GSP of a retargeted photo/video to be maximally similar to those from the training photos. Extensive experiments have demonstrated that: 1) our method consumes less than 35ms to retarget a 1024 × 768 photo (or a 1280 × 720 video frame) on popular iOS/Android devices, which is orders of magnitude faster than the conventional retargeting algorithms; 2) the retargeted photos/videos produced by our method outperform its competitors significantly based on the paired-comparison-based user study; and 3) the learned GSPs are highly indicative of human visual attention according to the human eye tracking experiments.
format text
author LIU, Zhenguang
WANG, Zepeng
ZHANG, Luming
SHAH, Rajiv Ratn
XIA, Yingjie
YANG, Yi
LIU, Wei
author_facet LIU, Zhenguang
WANG, Zepeng
ZHANG, Luming
SHAH, Rajiv Ratn
XIA, Yingjie
YANG, Yi
LIU, Wei
author_sort LIU, Zhenguang
title FastShrinkage: Perceptually-aware retargeting toward mobile platforms
title_short FastShrinkage: Perceptually-aware retargeting toward mobile platforms
title_full FastShrinkage: Perceptually-aware retargeting toward mobile platforms
title_fullStr FastShrinkage: Perceptually-aware retargeting toward mobile platforms
title_full_unstemmed FastShrinkage: Perceptually-aware retargeting toward mobile platforms
title_sort fastshrinkage: perceptually-aware retargeting toward mobile platforms
publisher Institutional Knowledge at Singapore Management University
publishDate 2017
url https://ink.library.smu.edu.sg/sis_research/3874
https://ink.library.smu.edu.sg/context/sis_research/article/4876/viewcontent/FastShrinkage_Perceptually_aware_Retargeting_Towar__1_.pdf
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