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    A novel fingerprint image compression technique using wavelets packets and pyramid lattice vector quantization

    , Article IEEE Transactions on Image Processing ; Volume 11, Issue 12 , 2002 , Pages 1365-1378 ; 10577149 (ISSN) Kasaei, S ; Deriche, M ; Boashash, B ; Sharif University of Technology
    2002
    Abstract
    A novel compression algorithm for fingerprint images is introduced. Using wavelet packets and lattice vector quantization, a new vector quantization scheme based on an accurate model for the distribution of the wavelet coefficients is presented. The model is based on the generalized Gaussian distribution. We also discuss a new method for determining the largest radius of the lattice used and its scaling factor, for both uniform and piecewise-uniform pyramidal lattices. The proposed algorithms aim at achieving the best rate-distortion function by adapting to the characteristics of the subimages. In the proposed optimization algorithm, no assumptions about the lattice parameters are made, and... 

    Performance improvement of spread spectrum additive data hiding over codec-distorted voice channels

    , Article European Signal Processing Conference ; Volume. 97, Issue. 9 , 2014 , pp. 2510-2514 ; ISSN: 22195491 Boloursaz, M ; Kazemi, R ; Behnia, F ; Akhaee, M. A ; Sharif University of Technology
    Abstract
    This paper considers the problem of covert communication through dedicated voice channels by embedding secure data in the cover speech signal utilizing spread spectrum additive data hiding. The cover speech signal is modeled by a Generalized Gaussian (GGD) random variable and the Maximum A Posteriori (MAP) detector for extraction of the covert message is designed and its reliable performance is verified both analytically and by simulations. The idea of adaptive estimation of detector parameters is proposed to improve detector performance and overcome voice non-stationarity. The detector's bit error rate (BER) is investigated for both blind and semi-blind cases in which the GGD shape... 

    Robust sparse recovery in impulsive noise via continuous mixed norm

    , Article IEEE Signal Processing Letters ; Volume 25, Issue 8 , 2018 , Pages 1146-1150 ; 10709908 (ISSN) Javaheri, A ; Zayyani, H ; Figueiredo, M. A. T ; Marvasti, F ; Sharif University of Technology
    Institute of Electrical and Electronics Engineers Inc  2018
    Abstract
    This letter investigates the problem of sparse signal recovery in the presence of additive impulsive noise. The heavy-tailed impulsive noise is well modeled with stable distributions. Since there is no explicit formula for the probability density function of SαS distribution, alternative approximations are used, such as, generalized Gaussian distribution, which imposes ℓp-norm fidelity on the residual error. In this letter, we exploit a continuous mixed norm (CMN) for robust sparse recovery instead of ℓp-norm. We show that in blind conditions, i.e., in the case where the parameters of the noise distribution are unknown, incorporating CMN can lead to near-optimal recovery. We apply... 

    Contourlet based image watermarking using optimum detector in the noisy environment

    , Article 2008 IEEE International Conference on Image Processing, ICIP 2008, San Diego, CA, 12 October 2008 through 15 October 2008 ; December , 2008 , Pages 429-432 ; 15224880 (ISSN); 1424417643 (ISBN); 9781424417643 (ISBN) Sahraeian, S. M. E ; Akhaee, M. A ; Hejazi, S. A ; Marvasti, F ; Institute of Electrical and Electronics Engineers; Signal Processing Society ; Sharif University of Technology
    2008
    Abstract
    In this paper, a new multiplicative image watermarking system is presented. As human visual system is less sensitive to the image edges, watermarking is applied in the contourlet domain, which represents image edges sparsely. In the presented scheme, watermark data is embedded in the most energetic directional subband. By modeling General Gaussian Distribution (GGD) for the contourlet coefficients, the distribution of watermarked noisy coefficients is analytically calculated. At the receiver, based on the Maximum Likelihood (ML) decision rule, the optimal detector is proposed. Experimental results show the imperceptibility and high robustness of the proposed method against Additive White... 

    Contourlet-based image watermarking using optimum detector in a noisy environment

    , Article IEEE Transactions on Image Processing ; Volume 19, Issue 4 , 2010 , Pages 967-980 ; 10577149 (ISSN) Akhaee, M. A ; Sahraeian, S. M. E ; Marvasti, F ; Sharif University of Technology
    Abstract
    In this paper, an improved multiplicative image watermarking system is presented. Since human visual system is less sensitive to the image edges, watermarking is applied in the contourlet domain, which represents image edges sparsely. In the presented scheme, watermark data is embedded in directional subband with the highest energy. By modeling the contourlet coefficients with General Gaussian Distribution (GGD), the distribution of watermarked noisy coefficients is analytically calculated. The tradeoff between the transparency and robustness of the watermark data is solved in a novel fashion. At the receiver, based on the Maximum Likelihood (ML) decision rule, an optimal detector by the aid...