Publication | Closed Access
Discriminant correlation analysis for feature level fusion with application to multimodal biometrics
50
Citations
23
References
2016
Year
Unknown Venue
EngineeringFeature DetectionMachine LearningPair-wise CorrelationsBiometricsFeature ExtractionMulti-image FusionSpeech RecognitionDiscriminant Correlation AnalysisImage AnalysisData ScienceData MiningPattern RecognitionFusion LearningMultimodal Sensor FusionBiostatisticsSoft BiometricsMachine VisionFeature Level FusionComputer ScienceDeep LearningFeature ConstructionFeature FusionBetween-class CorrelationsComputer VisionMultilevel Fusion
In this paper, we present Discriminant Correlation Analysis (DCA), a feature level fusion technique that incorporates the class associations in correlation analysis of the feature sets. DCA performs an effective feature fusion by maximizing the pair-wise correlations across the two feature sets, and at the same time, eliminating the between-class correlations and restricting the correlations to be within classes. Our proposed method can be used in pattern recognition applications for fusing features extracted from multiple modalities or combining different feature vectors extracted from a single modality. It is noteworthy that DCA is the first technique that considers class structure in feature fusion. Moreover, it has a very low computational complexity and it can be employed in realtime applications. Multiple sets of experiments performed on various biometric databases show the effectiveness of our proposed method, which outperforms other state-of-the-art approaches.
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