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Kernelized Supervised Dictionary Learning

About

In this paper, we propose supervised dictionary learning (SDL) by incorporating information on class labels into the learning of the dictionary. To this end, we propose to learn the dictionary in a space where the dependency between the signals and their corresponding labels is maximized. To maximize this dependency, the recently introduced Hilbert Schmidt independence criterion (HSIC) is used. One of the main advantages of this novel approach for SDL is that it can be easily kernelized by incorporating a kernel, particularly a data-derived kernel such as normalized compression distance, into the formulation. The learned dictionary is compact and the proposed approach is fast. We show that it outperforms other unsupervised and supervised dictionary learning approaches in the literature, using real-world data.

Mehrdad J. Gangeh, Ali Ghodsi, Mohamed S. Kamel• 2012

Related benchmarks

TaskDatasetResultRank
Digit ClassificationUSPS
Accuracy96.81
24
Face RecognitionExtended YaleB
Accuracy95.65
6
Handwritten Digit RecognitionMNIST
Accuracy94.43
6
Face RecognitionCropped YaleB
Accuracy87
6
Handwritten Digit RecognitionARDIS
Accuracy93.24
6
Telugu OCRUHTelPCC
Accuracy90.43
6
Telugu OCRBanti
Accuracy71.9
6
Image ClassificationExtended YaleB 30% corrupted
Accuracy78.9
5
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