Successful and effective content-based access to digital video requires fast, accurate and scalable methods to determine the video content automatically. A variety of contemporary approaches to this rely on text taken from speech within the video, or on matching one video frame against others using low-level characteristics like colour, texture, or shapes, or on determining and matching objects appearing within the video. Possibly the most important technique, however, is one which determines the presence or absence of a high-level or semantic feature, within a video clip or shot. By utilizing dozens, hundreds or even thousands of such semantic features we can support many kinds of content-based video navigation. Critically however, this...
In this paper we describe our TRECVID 2008 video retrieval experiments. The MediaMill team participa...
In this paper we give an overview of the four TRECVID tasks submitted by COST292, European network o...
Witnessing the omnipresence of ever complex yet so intuitive digital video media, research community...
Successful and effective content-based access to digital video requires fast, accurate and scalabl...
Semantic indexing, or assigning semantic tags to video samples, is a key component for content-based...
In this paper, we describe our approaches and experiments in semantic video classification (high-lev...
Invited PaperInternational audienceSemantic indexing, or assigning semantic tags to video samples, i...
Semantic indexing, or assigning semantic tags to video samples, is a key component for content-based...
Abstract. This paper investigates the applicability of high-level semantic features for video retrie...
We describe our fourth participation, that includes two high-level feature extraction runs, and one ...
We describe our second-time participation, that includes one high-level feature extraction run, and ...
We describe our third participation, that includes one high-level feature extraction run, and two ma...
In this paper we describe our TRECVID 2012 video retrieval experiments. The MediaMill team participa...
In this paper we describe our TRECVID 2011 video retrieval experiments. The MediaMill team participa...
In this paper we give an overview of the four TRECVID tasks submitted by COST292, European network o...
In this paper we describe our TRECVID 2008 video retrieval experiments. The MediaMill team participa...
In this paper we give an overview of the four TRECVID tasks submitted by COST292, European network o...
Witnessing the omnipresence of ever complex yet so intuitive digital video media, research community...
Successful and effective content-based access to digital video requires fast, accurate and scalabl...
Semantic indexing, or assigning semantic tags to video samples, is a key component for content-based...
In this paper, we describe our approaches and experiments in semantic video classification (high-lev...
Invited PaperInternational audienceSemantic indexing, or assigning semantic tags to video samples, i...
Semantic indexing, or assigning semantic tags to video samples, is a key component for content-based...
Abstract. This paper investigates the applicability of high-level semantic features for video retrie...
We describe our fourth participation, that includes two high-level feature extraction runs, and one ...
We describe our second-time participation, that includes one high-level feature extraction run, and ...
We describe our third participation, that includes one high-level feature extraction run, and two ma...
In this paper we describe our TRECVID 2012 video retrieval experiments. The MediaMill team participa...
In this paper we describe our TRECVID 2011 video retrieval experiments. The MediaMill team participa...
In this paper we give an overview of the four TRECVID tasks submitted by COST292, European network o...
In this paper we describe our TRECVID 2008 video retrieval experiments. The MediaMill team participa...
In this paper we give an overview of the four TRECVID tasks submitted by COST292, European network o...
Witnessing the omnipresence of ever complex yet so intuitive digital video media, research community...