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  1. Wahid, N. S. A., Saad, P., Hariharan, M.
    MyJurnal
    – This paper proposes the automatic infant cry classification to analyse infant cry signals.
    The cry classification system consists of three stages: (1) feature extraction, (2) feature selection, and
    (3) pattern classification. We extract features such as Mel Frequency Cepstral Coefficients (MFCC),
    Linear Prediction Cepstral Coefficients (LPCC), and dynamic features to represent the acoustic
    characteristics of the cry signals. Due to the high dimensionality of data resulting from the feature
    extraction stage, we perform feature selection in order to reduce the data dimensionality by selecting
    only the relevant features. In this stage, five different feature selection techniques are experimented. In
    pattern classification stage, two Artificial Neural Network (ANN) architectures: Multilayer Perceptron
    (MLP) and Radial Basis Function Network (RBFN) are used for classifying the cry signals into binary
    classes. Experimental results show that the best classification accuracy of 99.42% is obtained with
    RBFN. Copyright © 2016 Penerbit Akademia Baru - All rights reserved.
  2. Muda HM, Saad P, Othman RM
    Comput Biol Med, 2011 Aug;41(8):687-99.
    PMID: 21704312 DOI: 10.1016/j.compbiomed.2011.06.004
    Remote protein homology detection and fold recognition refer to detection of structural homology in proteins where there are small or no similarities in the sequence. To detect protein structural classes from protein primary sequence information, homology-based methods have been developed, which can be divided to three types: discriminative classifiers, generative models for protein families and pairwise sequence comparisons. Support Vector Machines (SVM) and Neural Networks (NN) are two popular discriminative methods. Recent studies have shown that SVM has fast speed during training, more accurate and efficient compared to NN. We present a comprehensive method based on two-layer classifiers. The 1st layer is used to detect up to superfamily and family in SCOP hierarchy using optimized binary SVM classification rules. It used the kernel function known as the Bio-kernel, which incorporates the biological information in the classification process. The 2nd layer uses discriminative SVM algorithm with string kernel that will detect up to protein fold level in SCOP hierarchy. The results obtained were evaluated using mean ROC and mean MRFP and the significance of the result produced with pairwise t-test was tested. Experimental results show that our approaches significantly improve the performance of remote protein homology detection and fold recognition for all three different version SCOP datasets (1.53, 1.67 and 1.73). We achieved 4.19% improvements in term of mean ROC in SCOP 1.53, 4.75% in SCOP 1.67 and 4.03% in SCOP 1.73 datasets when compared to the result produced by well-known methods. The combination of first layer and second layer of BioSVM-2L performs well in remote homology detection and fold recognition even in three different versions of datasets.
  3. Ghanizadeh A, Abarghouei AA, Sinaie S, Saad P, Shamsuddin SM
    Appl Opt, 2011 Jul 1;50(19):3191-200.
    PMID: 21743518 DOI: 10.1364/AO.50.003191
    Iris-based biometric systems identify individuals based on the characteristics of their iris, since they are proven to remain unique for a long time. An iris recognition system includes four phases, the most important of which is preprocessing in which the iris segmentation is performed. The accuracy of an iris biometric system critically depends on the segmentation system. In this paper, an iris segmentation system using edge detection techniques and Hough transforms is presented. The newly proposed edge detection system enhances the performance of the segmentation in a way that it performs much more efficiently than the other conventional iris segmentation methods.
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