In this dissertation we tackle the problem of automatic video summarization. Automatic summarization techniques enable faster browsing and indexing of large video databases. However, due to the inherent subjectivity of the task, no single video summarizer fits all users unless it adapts to individual user\u27s needs. To address this issue, we introduce a fresh view on the task called Query-focused\u27\u27 extractive video summarization. We develop a supervised model that takes as input a video and user\u27s preference in form of a query, and creates a summary video by selecting key shots from the original video. We model the problem as subset selection via determinantal point process (DPP), a stochastic point process that assigns a probabi...
Gygli M., Grabner H., Van Gool L., ''Video summarization by learning submodular mixtures of objectiv...
Abstract—Compact representations of video data greatly en-hances efficient video browsing. Such repr...
In this thesis, we address the task of video summarization using unsupervised deep-learning architec...
Video data is explosively growing. As a result of the “big video data”, intelligent algorithms for a...
Recent years have witnessed a resurgence of interest in video summarization. However, one of the mai...
Gygli M., Grabner H., Riemenschneider H., Van Gool L., ''Creating summaries from user videos'', Lect...
In the past, several automatic video summarization systems had been proposed to generate video summa...
Compact representations of video data can enable ecient video browsing. Such representations provide...
This paper presents an efficient video summarization technique with the focus of generating video su...
AbstractVideo summarization is one of the promising approaches for effective comprehension of video ...
In the light of exponentially increasing video content, video summarization has attracted a lot of a...
In the past, several automatic video summarization systems had been proposed to generate video summa...
International audienceIn large video collections with clusters of typical categories, such as ''birt...
Hours of video are uploaded to streaming platforms every minute, with recommender systems suggesting...
Video summarisation techniques is able to convey significant contents to represent the original vide...
Gygli M., Grabner H., Van Gool L., ''Video summarization by learning submodular mixtures of objectiv...
Abstract—Compact representations of video data greatly en-hances efficient video browsing. Such repr...
In this thesis, we address the task of video summarization using unsupervised deep-learning architec...
Video data is explosively growing. As a result of the “big video data”, intelligent algorithms for a...
Recent years have witnessed a resurgence of interest in video summarization. However, one of the mai...
Gygli M., Grabner H., Riemenschneider H., Van Gool L., ''Creating summaries from user videos'', Lect...
In the past, several automatic video summarization systems had been proposed to generate video summa...
Compact representations of video data can enable ecient video browsing. Such representations provide...
This paper presents an efficient video summarization technique with the focus of generating video su...
AbstractVideo summarization is one of the promising approaches for effective comprehension of video ...
In the light of exponentially increasing video content, video summarization has attracted a lot of a...
In the past, several automatic video summarization systems had been proposed to generate video summa...
International audienceIn large video collections with clusters of typical categories, such as ''birt...
Hours of video are uploaded to streaming platforms every minute, with recommender systems suggesting...
Video summarisation techniques is able to convey significant contents to represent the original vide...
Gygli M., Grabner H., Van Gool L., ''Video summarization by learning submodular mixtures of objectiv...
Abstract—Compact representations of video data greatly en-hances efficient video browsing. Such repr...
In this thesis, we address the task of video summarization using unsupervised deep-learning architec...