Video analysis has been attracting increasing research due to the proliferation of internet videos. In this paper, we investigate how to improve the performance on internet quality video analysis. Particularly, we work on the scenario of few labeled training videos being provided, which is less focused in multimedia. To being with, we consider how to more effectively harness the evidences from the low-level features. Researchers have developed several promising features to represent videos to capture the semantic information. However, as videos usually characterize rich semantic contents, the analysis performance by using one single feature is potentially limited. Simply combining multiple features through early fusion or late fusion to incorporate more informative cues is doable but not optimal due to the heterogeneity and different predicting capability of these features. For better exploitation of multiple features, we propose to mine the importance of different features and cast it...
Multiple Features But Few Labels? A Symbiotic Solution Exemplified for Video Analysis
Ma, Zhigang;Sebe, Niculae;
2014-01-01
Abstract
Video analysis has been attracting increasing research due to the proliferation of internet videos. In this paper, we investigate how to improve the performance on internet quality video analysis. Particularly, we work on the scenario of few labeled training videos being provided, which is less focused in multimedia. To being with, we consider how to more effectively harness the evidences from the low-level features. Researchers have developed several promising features to represent videos to capture the semantic information. However, as videos usually characterize rich semantic contents, the analysis performance by using one single feature is potentially limited. Simply combining multiple features through early fusion or late fusion to incorporate more informative cues is doable but not optimal due to the heterogeneity and different predicting capability of these features. For better exploitation of multiple features, we propose to mine the importance of different features and cast it...I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione



