Vol.2 No.2
Year: 2013
Issue: Feb-Apr
Title : HDL Based Illumination
Invariant High Performance Face Detection System for Mobile Applications
Author
Name : suguna tangimi, yarraballi mahesh
Synopsis :
Illumination variation is a big problem in face
detection which usually requires a costly compensation prior to classification.
To avoid this problem we are proposing a method for face detection irrespective
of illumination variations. In this context the contribution of the work is
twofold. First we introduce illumination invariant Local Structure Features for
face detection. For an efficient computation we propose a Modified Census
Transform which enhances the original work of Zabih and Wood [10]. Secondly we
introduce an efficient face detection classifier for rapid detection to render
high performance face detection rate. The Classifier structure is much simpler
because we use only single stage classifier than multi-stage approaches, while
having similar capabilities. The combination of illumination invariant features
together with a simple classifier leads to a realtime processing[12]. Detection
results are presented on two commonlyused databases namely BioID set of
1526images and Yale face data base set of 15 people with 11 images for each .We
are achieving detection rates of about 99.76% with a very low false positive
rate of 0.18%In this paper, we are also proposing a novel hardware architecture
of face-detection engine for mobile applications. Here MCT (Modified Census
Transform) and Adaboost learning technique as basic algorithms of face-detection
engine. The face-detection chip is developed by verifying and implementing
through FPGA and ASIC. The developed ASIC chip has advantage in real-time
processing, low power consumption, high performance and low cost. So we expect
this chip can be easily used in mobile applications.
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