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Analysis of different similarity measure functions and their impacts on shared nearest neighbor clustering approach, Analysis 40 (2012)

by A K Patid, J Agrawal, N Mishra
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Future Generation Computer Systems ( ) – Contents lists available at ScienceDirect Future Generation Computer Systems

by unknown authors
"... journal homepage: www.elsevier.com/locate/fgcs An adaptive per-application storage management scheme based on ..."
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journal homepage: www.elsevier.com/locate/fgcs An adaptive per-application storage management scheme based on
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...etwork performance (e.g., request hit ratio). A nonlinear manifold learning method is adopted to perform data mining. There are many learning-based data mining algorithms, such as K -Means [11], CURE =-=[12]-=-, etc. However, most of the learning-based algorithms need to know some a priori information (e.g., locations of nodes) and heavily rely on algorithms’ initial values. Furthermore, most of the learnin...

An Information-Theoretic Measure for Face Recognition: Comparison with Structural Similarity

by Asmhan Flieh Hassan, Zahir M. Hussain, Dong Cai-lin
"... Abstract—Automatic recognition of people faces is a challenging problem that has received significant attention from signal processing researchers in recent years. This is due to its several applications in different fields, including security and forensic analysis. Despite this attention, face reco ..."
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Abstract—Automatic recognition of people faces is a challenging problem that has received significant attention from signal processing researchers in recent years. This is due to its several applications in different fields, including security and forensic analysis. Despite this attention, face recognition is still one among the most challenging problems. Up to this moment, there is no technique that provides a reliable solution to all situations. In this paper a novel technique for face recognition is presented. This technique, which is called ISSIM, is derived from our recently published information- theoretic similarity measure HSSIM, which was based on joint histogram. Face recognition with ISSIM is still based on joint histogram of a test image and a database images. Performance evaluation was performed on MATLAB using part of the well-known AT&T image database that consists of 49 face images, from which seven subjects are chosen, and for each subject seven views (poses) are chosen with different facial expressions. The goal of this paper is to present a simplified approach for face recognition that may work in real-time environments. Performance of our information- theoretic face recognition method (ISSIM) has been demonstrated experimentally and is shown to outperform the well-known, statistical-based method (SSIM).
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