Department of Computer EngineeringDepartment of Electrical and Electronics Engineering2024-11-092006978-1-4244-0468-11520-6149N/A2-s2.0-33947376189https://hdl.handle.net/20.500.14288/7146In this work, we explore the use of canonical correlation analysis to improve the performance of multimodal recognition systems that involve multiple correlated modalities. More specifically, we consider the audiovisual speaker identification problem, where speech and lip texture (or intensity) modalities are fused in an open-set identification framework. Our motivation is based on the following observation. The late integration strategy, which is also referred to as decision or opinion fusion, is effective especially in case the contributing modalities are uncorrelated and thus the resulting partial decisions are statistically independent. Early integration techniques on the other hand can be favored only if a couple of modalities are highly correlated. However, coupled modalities such as audio and lip texture also consist of some components that are mutually independent. Thus we first perform a cross-correlation analysis on the audio and lip modalities so as to extract the correlated part of the information, and then employ an optimal combination of early and late integration techniques to fuse the extracted features. The results of the experiments testing the performance of the proposed system are also provided.AcousticsComputer ScienceArtificial intelligenceComputer scienceSoftware Electrical electronics engineering engineeringMultimodal speaker identification using canonical correlation analysisConference proceeding2455599010367239