Wilson, S and C, Krishna Mohan
(2018)
DESIGN OF COMPACT AND DISCRIMINATIVE DICTIONARIES.
PhD thesis, Indian Institute of Technology, Hyderabad.
Abstract
The objective of this research work is to design compact and discriminative dictionaries
for e�ective classi�cation. The motivation stems from the fact that dictionaries
inherently contain redundant dictionary atoms. This is because the aim of dictionary
learning is reconstruction, not classi�cation. In this thesis, we propose methods to obtain
minimum number discriminative dictionary atoms for e�ective classi�cation and
also reduced computational time.
First, we propose a classi�cation scheme where an example is assigned to a class
based on the weight assigned to both maximum projection and minimum reconstruction
error. Here, the input data is learned by K-SVD dictionary learning which alternates
between sparse coding and dictionary update. For sparse coding, orthogonal
matching pursuit (OMP) is used and for dictionary update, singular value decomposition
is used. This way of classi�cation though e�ective, still there is a scope to
improve dictionary learning by removing redundant atoms because our goal is not reconstruction.
In order to remove such redundant atoms, we propose two approaches
based on information theory to obtain compact discriminative dictionaries. In the
�rst approach, we remove redundant atoms from the dictionary while maintaining
discriminative information. Speci�cally, we propose a constraint optimization problem
which minimizes the mutual information between optimized dictionary and initial
dictionary while maximizing mutual information between class labels and optimized
dictionary. This helps to determine information loss between before and after the
dictionary optimization. To compute information loss, we use Jensen-Shannon diver-
gence with adaptive weights to compare class distributions of each dictionary atom.
The advantage of Jensen-Shannon divergence is its computational e�ciency rather
than calculating information loss from mutual information.
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