SVMs multi-class loss feedback based discriminative dictionary learning for image classification
SMLFDL integrates dictionary learning and support vector machines training into a unified learning framework by looping the designed multi-class loss term, which is inspired by the feedback mechanism in cybernetics.
analysis has been done on scene-15 dataset.
Feature vectors has been prepared by four-level spatial pyramid
, dense DAISY
feature description followed by PCA.
As article proposed SMLFDL are faster in predictions and converge in lower epochs.
code for features will be added soon.
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Inspired by the feedback mechanism in cybernetics, a novel discriminative dictionary learning framework, named support vector machines (SVMs) multi-class loss feedback based discriminative dictionary learning (SMLFDL) is proposed to learn a dictionary while training SVMs. As far as we know, it is the first time that the feedback mechanism in cybernetics is adopted for constructing dictionary learning model.
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SMLFDL further employ the Fisher discrimination criterion on the coding coefficients under -norm constraint to make the coding coefficients have small intra-class scatter but big inter-class scatter for countering intra-class variability of datasets.
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An efficient and practical SMLFDL optimization algorithm is presented to learn a dictionary while training SVMs. Experimental results on several widely used image databases show that SMLFDL can achieve a competitive performance with other state-of-the-art methods on classification task.
The original article was developed in matlab
The report file is an over-view showing precedures and some figures and didn't published anywhere, it must not be refernece any where, for refernece use original article