Pattern mining algorithms are often much easier applied than quantitatively assessed. In this paper we address the pattern evaluation problem by looking at both the capability of models and the difficulty of target concepts. We use four different data mining models: frequent itemset mining, k-means clustering, hidden Markov model, and hierarchical hidden Markov model to mine 39 concept streams from the a 137-video broadcast news collection from TRECVID-2005. We hypothesize that the discovered patterns can reveal semantics beyond the input space, and thus evaluate the patterns against a much larger concept space containing 192 concepts defined by LSCOM. Results show that HHMM has the best average prediction among all models, however differen...
An emerging trend in video event detection is to learn an event from a bank of concept detector scor...
Complex event recognition is an expanding research area aim-ing to recognize entities of high-level ...
Abstract:Most of the common techniques of text mining are based on the statistical analysis of the t...
For large scale automatic semantic video characterization, it is necessary to learn and model a larg...
We examine the significance of video mining as pattern discovery in multimedia content. We examine ...
According to some current thinking, a very large number of semantic concepts could provide researche...
We propose a new method to boost the performance of video annotation by exploiting concept relations...
The ubiquity of patterns in data mining and knowledge discovery data sets is a binding characteristi...
The extensive use of multimedia technologies extended the applicability of information technology to...
Abstract In this paper we describe a multi-strategy approach to improving semantic extraction from n...
In this paper we present a clustering-based method for representing semantic concepts on multimodal ...
Automatically discovering concepts is not only a fundamental task in knowledge capturing and ontolog...
We introduce the challenge problem for generic video indexing to gain insight in intermediate steps ...
Large-scale multimedia semantic concept detection requires real-time identification of a set of conc...
Most concept recognition in visual multimedia is based on relatively simple concepts, things which a...
An emerging trend in video event detection is to learn an event from a bank of concept detector scor...
Complex event recognition is an expanding research area aim-ing to recognize entities of high-level ...
Abstract:Most of the common techniques of text mining are based on the statistical analysis of the t...
For large scale automatic semantic video characterization, it is necessary to learn and model a larg...
We examine the significance of video mining as pattern discovery in multimedia content. We examine ...
According to some current thinking, a very large number of semantic concepts could provide researche...
We propose a new method to boost the performance of video annotation by exploiting concept relations...
The ubiquity of patterns in data mining and knowledge discovery data sets is a binding characteristi...
The extensive use of multimedia technologies extended the applicability of information technology to...
Abstract In this paper we describe a multi-strategy approach to improving semantic extraction from n...
In this paper we present a clustering-based method for representing semantic concepts on multimodal ...
Automatically discovering concepts is not only a fundamental task in knowledge capturing and ontolog...
We introduce the challenge problem for generic video indexing to gain insight in intermediate steps ...
Large-scale multimedia semantic concept detection requires real-time identification of a set of conc...
Most concept recognition in visual multimedia is based on relatively simple concepts, things which a...
An emerging trend in video event detection is to learn an event from a bank of concept detector scor...
Complex event recognition is an expanding research area aim-ing to recognize entities of high-level ...
Abstract:Most of the common techniques of text mining are based on the statistical analysis of the t...