Video Event Classification Using Bag of Words and String Kernels
Abstract: The recognition of events in videos is a relevant and challenging task of automatic semantic video analysis. At present one of the most successful frameworks, used for object recognition tasks, is the bag-of-words (BoW) approach. However this approach does not model the temporal information of the video stream. In this paper we present a method to introduce temporal information within the BoW approach. Events are modeled as a sequence composed of histograms of visual features, computed from each frame using the traditional BoW model. The sequences are treated as strings where each histogram is considered as a character. Event classification of these sequences of variable size, depending on the length of the video clip, are performed using SVM classifiers with a string kernel that uses the Needlemann-Wunsch edit distance. Experimental results, performed on two datasets, soccer video and TRECVID 2005, demonstrate the validity of the proposed approach. © 2009 Springer Berlin Heidelberg.
Citation:
Lamberto, Ballan; Marco, Bertini; Alberto Del, Bimbo; Serra, Giuseppe "Video Event Classification Using Bag of Words and String Kernels" Proc. of International Conference on Image Analysis and Processing (ICIAP), vol. 5716, Vietri sul Mare, ita, pp. 170 -178 , September 8-11, 2009, 2009 DOI: 10.1007/978-3-642-04146-4_20not available