2/17/2007DSP Course-IUST-Spring Semester 1 Digital Signal Processing Electrical Engineering Department Iran University of Science & Tech.

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Presentation transcript:

2/17/2007DSP Course-IUST-Spring Semester 1 Digital Signal Processing Electrical Engineering Department Iran University of Science & Tech.

DSP Course-IUST-Spring Semester2 2/17/2007 Digital Signal Processing Topic 1: Time Domain 1. Discrete-time systems 2. Convolution 3. Linear Constant-Coefficient Difference Equations (LCCDEs) 4. Correlation

DSP Course-IUST-Spring Semester3 2/17/ Discrete-time systems

DSP Course-IUST-Spring Semester4 2/17/2007 Moving Average (MA)

DSP Course-IUST-Spring Semester5 2/17/2007 MA Smoother

DSP Course-IUST-Spring Semester6 2/17/2007 Accumulator

DSP Course-IUST-Spring Semester7 2/17/2007 Accumulator

DSP Course-IUST-Spring Semester8 2/17/2007 Classes of DT systems

DSP Course-IUST-Spring Semester9 2/17/2007 Linearity: Example 1

DSP Course-IUST-Spring Semester10 2/17/2007 Linearity Example 2:

DSP Course-IUST-Spring Semester11 2/17/2007 Linearity Example 3:

DSP Course-IUST-Spring Semester12 2/17/2007 Property: Shift (time) invariance

DSP Course-IUST-Spring Semester13 2/17/2007 Shift-invariance counterexample

DSP Course-IUST-Spring Semester14 2/17/2007 Another counterexample

DSP Course-IUST-Spring Semester15 2/17/2007 Linear Shift Invariant (LSI)

DSP Course-IUST-Spring Semester16 2/17/2007 Causality

DSP Course-IUST-Spring Semester17 2/17/2007 Causality example

DSP Course-IUST-Spring Semester18 2/17/2007 Impulse response (IR)

DSP Course-IUST-Spring Semester19 2/17/2007 Impulse response example

DSP Course-IUST-Spring Semester20 2/17/ Convolution

DSP Course-IUST-Spring Semester21 2/17/2007 Convolution sum

DSP Course-IUST-Spring Semester22 2/17/2007 Convolution properties

DSP Course-IUST-Spring Semester23 2/17/2007 Interpreting convolution

DSP Course-IUST-Spring Semester24 2/17/2007 Convolution interpretation 1

DSP Course-IUST-Spring Semester25 2/17/2007 Convolution interpretation 2

DSP Course-IUST-Spring Semester26 2/17/2007 Matrix interpretation

DSP Course-IUST-Spring Semester27 2/17/2007 Convolution notes

DSP Course-IUST-Spring Semester28 2/17/2007 Convolution in MATLAB

DSP Course-IUST-Spring Semester29 2/17/2007 Connected systems

DSP Course-IUST-Spring Semester30 2/17/2007 Inverse systems

DSP Course-IUST-Spring Semester31 2/17/2007 Inverse systems

DSP Course-IUST-Spring Semester32 2/17/2007 Inverse system example

DSP Course-IUST-Spring Semester33 2/17/2007 Parallel connection

DSP Course-IUST-Spring Semester34 2/17/ Linear Constant-Coefficient Difference Equation (LCCDE)

DSP Course-IUST-Spring Semester35 2/17/2007 Solving LCCDEs

DSP Course-IUST-Spring Semester36 2/17/2007 Complementary Solution

DSP Course-IUST-Spring Semester37 2/17/2007 Complementary Solution

DSP Course-IUST-Spring Semester38 2/17/2007 Complementary Solution

DSP Course-IUST-Spring Semester39 2/17/2007 Particular Solution

DSP Course-IUST-Spring Semester40 2/17/2007 LCCDE example

DSP Course-IUST-Spring Semester41 2/17/2007 LCCDE example

DSP Course-IUST-Spring Semester42 2/17/2007 LCCDE example

DSP Course-IUST-Spring Semester43 2/17/2007 LCCDE example

DSP Course-IUST-Spring Semester44 2/17/2007 LCCDE example

DSP Course-IUST-Spring Semester45 2/17/2007 LCCDE solving summary

DSP Course-IUST-Spring Semester46 2/17/2007 LCCDEs: zero input/zero state

DSP Course-IUST-Spring Semester47 2/17/2007 Impulse response of LCCDEs

DSP Course-IUST-Spring Semester48 2/17/2007 LCCDE IR example

DSP Course-IUST-Spring Semester49 2/17/2007 System property: Stability

DSP Course-IUST-Spring Semester50 2/17/2007 Stability

DSP Course-IUST-Spring Semester51 2/17/2007 Stability example

DSP Course-IUST-Spring Semester52 2/17/2007 Stability & LCCDEs

DSP Course-IUST-Spring Semester53 2/17/ Correlation

DSP Course-IUST-Spring Semester54 2/17/2007 Correlation and convolution

DSP Course-IUST-Spring Semester55 2/17/2007 Autocorrelation

DSP Course-IUST-Spring Semester56 2/17/2007 Correlation maxima

DSP Course-IUST-Spring Semester57 2/17/2007 AC of a periodic sequence

DSP Course-IUST-Spring Semester58 2/17/2007 AC of a periodic sequence

DSP Course-IUST-Spring Semester59 2/17/2007 What correlations look like

DSP Course-IUST-Spring Semester60 2/17/2007 What correlation looks like