In this paper we describe our TRECVID 2008 video retrieval experiments. The MediaMill team participated in three tasks: concept detection, automatic search, and interactive search. Rather than continuing to increase the number of concept detectors available for retrieval, our TRECVID 2008 experiments focus on increasing the robustness of a small set of detectors. To that end, our concept detection experiments emphasize in particular the role of sampling, the value of color invariant features, the influence of codebook construction, and the effectiveness of kernel-based learning parameters. For retrieval, a robust but limited set of concept detectors necessitates the need to rely on as many auxiliary information channels as possible. Therefo...
Abstract — In this paper, we propose an automatic video retrieval method based on high-level concept...
In this paper we present the methods and visualizations used in the MediaMill video search engine. T...
In this paper we present the methods and visualizations used in the MediaMill video search engine. T...
In this paper we describe our TRECVID 2009 video retrieval experiments. The MediaMill team participa...
In this paper we describe our TRECVID 2009 video re- trieval experiments. The MediaMill team partici...
In this paper we describe our TRECVID 2007 experiments. The MediaMill team participated in two tasks...
In this paper we describe our TRECVID 2006 experiments. The MediaMill team participated in two tasks...
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 describe the current performance of our MediaMill system as presented in the TRECVI...
In this paper we summarize our TRECVID 2014 video retrieval experiments. The MediaMill team particip...
We combine in this paper automatic learning of a large lexicon of semantic concepts with traditional...
In this paper we present our Mediamill video search engine. The basis for the engine is a semantic i...
In this paper, we review 300 references on video retrieval, indicating when text-only solutions are ...
Abstract Growth in storage capacity has led to large digital video repositories and complicated the ...
Abstract — In this paper, we propose an automatic video retrieval method based on high-level concept...
In this paper we present the methods and visualizations used in the MediaMill video search engine. T...
In this paper we present the methods and visualizations used in the MediaMill video search engine. T...
In this paper we describe our TRECVID 2009 video retrieval experiments. The MediaMill team participa...
In this paper we describe our TRECVID 2009 video re- trieval experiments. The MediaMill team partici...
In this paper we describe our TRECVID 2007 experiments. The MediaMill team participated in two tasks...
In this paper we describe our TRECVID 2006 experiments. The MediaMill team participated in two tasks...
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 describe the current performance of our MediaMill system as presented in the TRECVI...
In this paper we summarize our TRECVID 2014 video retrieval experiments. The MediaMill team particip...
We combine in this paper automatic learning of a large lexicon of semantic concepts with traditional...
In this paper we present our Mediamill video search engine. The basis for the engine is a semantic i...
In this paper, we review 300 references on video retrieval, indicating when text-only solutions are ...
Abstract Growth in storage capacity has led to large digital video repositories and complicated the ...
Abstract — In this paper, we propose an automatic video retrieval method based on high-level concept...
In this paper we present the methods and visualizations used in the MediaMill video search engine. T...
In this paper we present the methods and visualizations used in the MediaMill video search engine. T...