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Summarizing First-Person Videos from Third Persons' Points of Views

Authors :
Ho, Hsuan-I
Chiu, Wei-Chen
Wang, Yu-Chiang Frank
Publication Year :
2017

Abstract

Video highlight or summarization is among interesting topics in computer vision, which benefits a variety of applications like viewing, searching, or storage. However, most existing studies rely on training data of third-person videos, which cannot easily generalize to highlight the first-person ones. With the goal of deriving an effective model to summarize first-person videos, we propose a novel deep neural network architecture for describing and discriminating vital spatiotemporal information across videos with different points of view. Our proposed model is realized in a semi-supervised setting, in which fully annotated third-person videos, unlabeled first-person videos, and a small number of annotated first-person ones are presented during training. In our experiments, qualitative and quantitative evaluations on both benchmarks and our collected first-person video datasets are presented.<br />Comment: 16+10 pages, ECCV 2018

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1711.08922
Document Type :
Working Paper