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A semantic-based video scene segmentation using a deep neural network

Authors
Ji, HyesungHooshyar, DanialKim, KuekyengLim, Heuiseok
Issue Date
12월-2019
Publisher
SAGE PUBLICATIONS LTD
Keywords
Deep learning; image captioning; keyframe extraction; shot boundary detection; video scene segmentation
Citation
JOURNAL OF INFORMATION SCIENCE, v.45, no.6, pp.833 - 844
Indexed
SCIE
SSCI
SCOPUS
Journal Title
JOURNAL OF INFORMATION SCIENCE
Volume
45
Number
6
Start Page
833
End Page
844
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/61380
DOI
10.1177/0165551518819964
ISSN
0165-5515
Abstract
Video scene segmentation is very important research in the field of computer vision, because it helps in efficient storage, indexing and retrieval of videos. Achieving this kind of scene segmentation cannot be done by just calculating the similarity of low-level features presented in the video; high-level features should also be considered to achieve a better performance. Even though much research has been conducted on video scene segmentation, most of these studies failed to semantically segment a video into scenes. Thus, in this study, we propose a Deep-learning Semantic-based Scene-segmentation model (called DeepSSS) that considers image captioning to segment a video into scenes semantically. First, the DeepSSS performs shot boundary detection by comparing colour histograms and then employs maximum-entropy-applied keyframe extraction. Second, for semantic analysis, using image captioning that benefits from deep learning generates a semantic text description of the keyframes. Finally, by comparing and analysing the generated texts, it assembles the keyframes into a scene grouped under a semantic narrative. That said, DeepSSS considers both low- and high-level features of videos to achieve a more meaningful scene segmentation. By applying DeepSSS to data sets from MS COCO for caption generation and evaluating its semantic scene-segmentation task results with the data sets from TRECVid 2016, we demonstrate quantitatively that DeepSSS outperforms other existing scene-segmentation methods using shot boundary detection and keyframes. What's more, the experiments were done by comparing scenes segmented by humans and scene segmented by the DeepSSS. The results verified that the DeepSSS' segmentation resembled that of humans. This is a new kind of result that was enabled by semantic analysis, which was impossible by just using low-level features of videos.
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