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picture1_Digital Signal Processing Applications Ppt 70345 | Svdsignal


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File: Digital Signal Processing Applications Ppt 70345 | Svdsignal
signals flow of information measured quantity that varies with time or position electrical signal received from a transducer microphone thermometer accelerometer antenna etc electrical signal that controls a process svd ...

icon picture PPT Filetype Power Point PPT | Posted on 30 Aug 2022 | 3 years ago
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    Signals
     Flow of information
     Measured quantity that varies with time (or 
      position)
     Electrical signal received from a transducer 
      (microphone, thermometer, accelerometer, 
      antenna, etc.)
     Electrical signal that controls a process
                               
     SVD background 
      The Singular Value Decomposition (SVD) of a rectangular matrix A 
        is a decomposition of the form 
                 T
        A = U S V  
      U and V are orthogonal matrices 
      and S is a diagonal matrix 
      The singular vectors form orthonormal bases, and the important 
        relation 
      A v = s u  
            i   i i
      shows that each right singular vectors is mapped onto the 
        corresponding left singular vector, and the "magnification factor" is 
        the corresponding singular value. 
                                          
    What is Digital Signal 
    Processing?
     Digital signal processing (DSP) is the study 
      of signals in a digital representation and the 
      processing methods of these signals.
      DSP includes subfields like: audio signal 
      processing, control engineering, digital image 
      processing and speech processing.
                               
                               
     Noise reduction 
      The SVD has also applications in digital signal processing, e.g., as a 
        method for noise reduction. The central idea is to let a matrix A 
        represent the noisy signal, compute the SVD, and then discard 
        small singular values of A. It can be shown that the small singular 
        values mainly represent the noise, and thus the rank-k matrix A  
                                                                       k
        represents a filtered signal with less noise. 
                                         
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...Signals flow of information measured quantity that varies with time or position electrical signal received from a transducer microphone thermometer accelerometer antenna etc controls process svd background the singular value decomposition rectangular matrix is form t u s v and are orthogonal matrices diagonal vectors orthonormal bases important relation i shows each right mapped onto corresponding left vector magnification factor what digital processing dsp study in representation methods these includes subfields like audio control engineering image speech noise reduction has also applications e g as method for central idea to let represent noisy compute then discard small values it can be shown mainly thus rank k represents filtered less...

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