
a.
Convolution code:
The convolutional code is a secure method of coding where the output is a combination of not only input stream but also the previous input lines.
Viterbi
The Viterbi algorithm is used for finding the most likely series of hidden states that is called as Viterbi path and the results are in the series of observed events.
b.
Convolution code:
The convolutional code is a secure method of coding where the output is a combination of not only input stream but also the previous input lines.
Viterbi algorithm:
The Viterbi algorithm is used for finding the most likely series of hidden states that is called as Viterbi path and the results are in the series of observed events.
c.
Convolution code:
The convolutional code is a secure method of coding where the output is a combination of not only input stream but also the previous input lines.
Viterbi algorithm:
The Viterbi algorithm is used for finding the most likely series of hidden states that is called as Viterbi path and the results are in the series of observed events.

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Essentials of Computer Organization and Architecture
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