This paper presents a novel retrieval pipeline for video collections, which aims to retrieve the most significant parts of an edited video for a given query, and represent them with thumbnails which are at the same time semantically meaningful and aesthetically remarkable. Videos are first segmented into coherent and story-telling scenes, then a retrieval algorithm based on deep learning is proposed to retrieve the most significant scenes for a textual query. A ranking strategy based on deep features is finally used to tackle the problem of visualizing the best thumbnail. Qualitative and quantitative experiments are conducted on a collection of edited videos to demonstrate the effectiveness of our approach
The aesthetics of videos can be used as a useful clue to im-prove user satisfaction in many applicat...
The number, and size, of digital video databases is continuously growing. Unfortunately, most, if no...
<p>Most video retrieval systems are multimodal, commonly relying on textual information, low- and hi...
This paper presents a novel retrieval pipeline for video collections, which aims to retrieve the mos...
This paper presents a novel video access and retrieval system for edited videos. The key element of ...
In this paper, we propose a novel scene detection algorithm which employs semantic, visual, textual ...
We present a novel video browsing and retrieval system for edited videos, in which videos are automa...
To facilitate finding of relevant information in ever-growing multimedia collections, a number of mu...
This thesis focuses on novel video retrieval scenarios. More particularly, we aim at the Known-item ...
We describe an approach to object retrieval which searches for and localizes all the occurrences of ...
Abstract Growth in storage capacity has led to large digital video repositories and complicated the ...
In this paper, we propose an interactive video browser tool for our participation in the fourth vide...
Content-based video retrieval research combines expertise from many different areas, such as signal ...
directions As digital video databases become more and more pervasive, finding video in large databas...
We present a tutorial focusing on video retrieval tasks, where state-of-the-art deep learning approa...
The aesthetics of videos can be used as a useful clue to im-prove user satisfaction in many applicat...
The number, and size, of digital video databases is continuously growing. Unfortunately, most, if no...
<p>Most video retrieval systems are multimodal, commonly relying on textual information, low- and hi...
This paper presents a novel retrieval pipeline for video collections, which aims to retrieve the mos...
This paper presents a novel video access and retrieval system for edited videos. The key element of ...
In this paper, we propose a novel scene detection algorithm which employs semantic, visual, textual ...
We present a novel video browsing and retrieval system for edited videos, in which videos are automa...
To facilitate finding of relevant information in ever-growing multimedia collections, a number of mu...
This thesis focuses on novel video retrieval scenarios. More particularly, we aim at the Known-item ...
We describe an approach to object retrieval which searches for and localizes all the occurrences of ...
Abstract Growth in storage capacity has led to large digital video repositories and complicated the ...
In this paper, we propose an interactive video browser tool for our participation in the fourth vide...
Content-based video retrieval research combines expertise from many different areas, such as signal ...
directions As digital video databases become more and more pervasive, finding video in large databas...
We present a tutorial focusing on video retrieval tasks, where state-of-the-art deep learning approa...
The aesthetics of videos can be used as a useful clue to im-prove user satisfaction in many applicat...
The number, and size, of digital video databases is continuously growing. Unfortunately, most, if no...
<p>Most video retrieval systems are multimodal, commonly relying on textual information, low- and hi...