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    A Soft Spectrographic Mask Estimation for Speech Recognition

    , M.Sc. Thesis Sharif University of Technology Esmaeelzadeh, Vahid (Author) ; Sameti, Hossein (Supervisor)
    Abstract
    Nowadays, robustness of the Automatic Speech Recognition (ASR) systems against various noises is major challenge in these systems. Missing feature speech recognition approaches are our goal in this thesis for achieving robust ASR systems. In these approaches, low SNR regions of a spectrogram are considered to be “missing” or “unreliable” and are removed from the spectrogram. Noise compensation is carried out by either estimating the missing regions from the remaining regions in some manner prior to recognition, or by performing recognition directly on incomplete spectrograms. These techniques clearly require a "spectrographic mask" which accurately labels the reliable and unreliable regions... 

    Deterministic Compressed Sensing

    , Ph.D. Dissertation Sharif University of Technology Amini, Arash (Author) ; Marvasti, Farrokh (Supervisor)
    Abstract
    The emerging field of compressed sensing deals with the techniques of combining the two blocks of sampling and compression into a single unit without compromising the performance. Clearly, this is not feasible for any general signal; however, if we restrict the signal to be sparse, it becomes possible. There are two main challenges in compressed sensing, namely the sampling process and the reconstruction methods. In this thesis, we will focus only on the deterministic sampling process as opposed to the random sampling. The sampling methods discussed in the literature are mainly linear, i.e., a matrix is used as the sampling operator. Here, we first consider linear sampling methods and... 

    Optimization of Sparse Control Structures in Multivariable Systems

    , Ph.D. Dissertation Sharif University of Technology Babazadeh, Maryam (Author) ; Nobakhti, Amin (Supervisor)
    Abstract
    In this thesis, the optimal control structure selection and design of sparse multi-variable control systems is addressed. A fundamental challenge which frequently emerges in engineering, social, and economic sciences, is the optimal selection of a subset of elements, in order to maximally fulfil a design objective. In practice, it is required to solve this underlying selection problem in conjunction with a non-linear or non-convex optimization which is designed to ensure desired performance. The requirement to solve these two problems simultaneously is what makes it inherently difficult; one which has thus far eluded efforts to develop a systematic means of determining its solution. In spite... 

    Range-Doppler Map Generation in the Presence of Sparse Clutter for Multistatic Radar

    , M.Sc. Thesis Sharif University of Technology Haghighat, Soheil (Author) ; Karbasi, Mohammad (Supervisor)
    Abstract
    Multistatic radar has several advantages over monostatic radar (such as better detection), which are due to the use of different viewing angles and the difference in their clutter characteristics. Clutter in many applications (such as marine applications) has the property of being sparse in certain dictionaries. Therefore, the investigation of sparse clutter (such as sea clutter) is of particular importance. It is worth noting that the detection of targets in the vicinity of the sea faces difficulties due to the dynamics of the sea, which causes the Doppler spectrum to change with time and change in space. Considering the fact that the sea clutter is sparse clutter, one of the powerful...