Recognizing visual content in unconstrained videos has become a very important problem for many applications. Existingcorpora for video analysis lack scale and/or content diversity,and thus limited the needed progress in this critical area. In this paper, we describe and release a new database called CCV, containing 9,317 web videos over 20 semantic categories, including events like “baseball” and “parade”, scenes like “beach”, and objects like “cat”. The database was collected with extra care to ensure relevance to consumer interest and originality of video content without post-editing. Such videos typically have very little textual annotation and thus can benefit from the development of automatic content analysis techniques. We used Amazo...
At present, so much videos are available from many resources. But viewers want video of their intere...
In this paper, we introduce a novel framework for automatic Semantic Video Annotation. As this frame...
Content-based video retrieval research combines expertise from many different areas, such as signal ...
Approximately 10^5 video clips are posted every day on the Web. The popularity of Web-based video da...
Currently all video search engines are text-based, i.e. they search for the text labels associated w...
Recently, the broad adoption of the internet coupled with connected smart devices has seen a signifi...
This paper presents a novel method for automatically classifying consumer video clips based on their...
Due to the availability of online repositories, such as YouTube and social networking sites, there h...
With nearly one billion online videos viewed everyday, an emerging new frontier in computer vision r...
Currently, video analysis algorithms suffer from lack of information regarding the objects present, ...
The number, and size, of digital video databases is continuously growing. Unfortunately, most, if no...
Video concept detection aims to find videos that show a certain event described as a high-level conc...
Recent years have witnessed an explosion of multimedia contents available. In 2010the video sharing ...
In this paper we present a systematic study of automatic classification of consumer videos into a la...
This paper presents a novel video access and retrieval system for edited videos. The key element of ...
At present, so much videos are available from many resources. But viewers want video of their intere...
In this paper, we introduce a novel framework for automatic Semantic Video Annotation. As this frame...
Content-based video retrieval research combines expertise from many different areas, such as signal ...
Approximately 10^5 video clips are posted every day on the Web. The popularity of Web-based video da...
Currently all video search engines are text-based, i.e. they search for the text labels associated w...
Recently, the broad adoption of the internet coupled with connected smart devices has seen a signifi...
This paper presents a novel method for automatically classifying consumer video clips based on their...
Due to the availability of online repositories, such as YouTube and social networking sites, there h...
With nearly one billion online videos viewed everyday, an emerging new frontier in computer vision r...
Currently, video analysis algorithms suffer from lack of information regarding the objects present, ...
The number, and size, of digital video databases is continuously growing. Unfortunately, most, if no...
Video concept detection aims to find videos that show a certain event described as a high-level conc...
Recent years have witnessed an explosion of multimedia contents available. In 2010the video sharing ...
In this paper we present a systematic study of automatic classification of consumer videos into a la...
This paper presents a novel video access and retrieval system for edited videos. The key element of ...
At present, so much videos are available from many resources. But viewers want video of their intere...
In this paper, we introduce a novel framework for automatic Semantic Video Annotation. As this frame...
Content-based video retrieval research combines expertise from many different areas, such as signal ...