Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
6866247 | Neurocomputing | 2015 | 9 Pages |
Abstract
In this study, we attempt to explore cross-media retrieval between music and image data based on the emotional correlation. Emotion feature analytic could be the bridge of cross-media retrieval, since emotion represents the user׳s perspective and effectively meets the user׳s retrieval need. Currently, there is little research about the emotion correlation of different multimedia data (e.g. image or music). We propose a promising model based on Differential Evolutionary-Support Vector Machine (DE-SVM) to build up the emotion-driven cross-media retrieval system between Chinese folk image and Chinese folk music. In this work, we first build up the Chinese Folk Music Library and Chinese Folk Image Library.Second, we compare Back Propagation(BP), Linear Regression(LR) and Differential Evolutionary-Support Vector Machine (DE-SVM), and find that DE-SVM has the best performance. Then we conduct DE-SVM to build the optimal model for music/image emotion recognition. Finally, an Emotion-driven Chinese Folk Music-Image Exploring System based on DE-SVM is developed and experiment results show our method is effective in terms of retrieval performance.
Related Topics
Physical Sciences and Engineering
Computer Science
Artificial Intelligence
Authors
Baixi Xing, Kejun Zhang, Shouqian Sun, Lekai Zhang, Zenggui Gao, Jiaxi Wang, Shi Chen,