Author:
De Pubali,Chatterjee Amitava,Rakshit Anjan
Abstract
Abstract
This study demonstrates that a novel dictionary learning
(DL) algorithm-based approach can be successfully used in
conjunction with an indigenously developed hardware module, using
four pyroelectric infrared (PIR) sensors, to enhance the performance
of an intruder detection system. In this work, initially, a
hyperbolic function based Consistent Adaptive Sequential Dictionary
Learning (CAS-DL) algorithm has been proposed (HCAS-DL). Then
another dictionary learning algorithm, called label consistency
based K-SVD (LCK-SVD) is considered, where the label information of
each dictionary atom has been introduced to enforce discriminability
in sparse code. The objective function in LCK-SVD is formuated
simultaneously considering the concept of label consistency (LC)
constraints, reconstruction errors, and classification errors. Next,
the newly proposed HCAS-DL is hybridized with LCK-SVD to form a
novel version of hybrid consistent adaptive sequential dictionary
learning approach, named here as the LC-HCAS-DL algorithm.
Extensive experiments have been performed to establish the
suitability of our proposed approach for the problem under
consideration. The performance evaluation clearly establishes that
the LC-HCAS-DL algorithm can achieve superior performance compared
to recently proposed LC-MCAS-DL algorithm and other state-of-the-art
algorithms for the intruder detection problem under consideration.
Subject
Mathematical Physics,Instrumentation