Lecture 4: Convolution - MIT OpenCourseWare
time and discrete-time signals as a linear combination of delayed impulses and the consequences for representing linear, time-invariant systems. The re-sulting representation is referred to as convolution. Later in this series of lec-tures we develop in detail the decomposition of signals as linear combina-
Time, Discrete, Signal, Mit opencourseware, Opencourseware, Convolutions, Discrete time signals
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