Class Central is learner-supported. When you buy through links on our site, we may earn an affiliate commission.

Indian Institute of Technology Kanpur

Introduction to Coding Theory

Indian Institute of Technology Kanpur and NPTEL via Swayam

This course may be unavailable.

Overview

Prepare for a new career with $100 off Coursera Plus
Gear up for jobs in high-demand fields: data analytics, digital marketing, and more.

Error control coding is an indispensable part of any digital communication system. In this introductory course, we will discuss theory of linear block codes and convolutional codes, their encoding and decoding techniques as well as their applications in real world scenarios. Starting from simple repetition codes, we will discuss among other codes: Hamming codes, Reed Muller codes, low density parity check codes, and turbo codes. We will also study how from simple codes by concatenation we can build more powerful error correcting codes.  

PREREQUISITES: An exposure to linear algebra and probability theory as well as a course in digital communications

Syllabus

Week 1-

Lecture 1: Introduction to error control coding Lecture 2: Introduction to linear block codes, generator matrix and parity check matrix Lecture 3: Properties of linear block codes: Syndrome, error detection

Week 2-

Lecture 4: Decoding of linear block codes Lecture 5: Distance properties of linear block codes

Week 3-

Lecture 6: Some simple linear block codes: Repetition codes, Single parity check codes, Hamming codes, Reed Muller codes Lecture 7: Bounds on size of codes: Hamming bound, Singleton bound, Plotkin bound, Gilbert-Varshamov bound

Week 4-

Lecture 8: Introduction to convolutional codes-I: Encoding, state diagram, trellis diagram Lecture 9: Introduction to convolutional codes-II: Classification, realization, distance properties Lecture 10: Decoding of convolutional codes-I: Viterbi algorithm


Week 5-

Lecture 11: Decoding of convolutional codes-II: BCJR algorithm Lecture 12: Performance bounds for convolutional codes


Week 6-

Lecture 13: Low density parity check codes Lecture 14: Decoding of low density parity check codes: Belief propagation algorithm on BSC and AWGN channels


Week 7-

Lecture 15: Turbo codes Lecture 16: Turbo decoding


Week 8-

Lecture 17: Distance properties of turbo codes Lecture 18: Convergence of turbo codes  Lecture 19: Automatic repeat request schemes Lecture 20: Applications of linear codes

Taught by

Prof. Adrish Banerjee

Tags

Reviews

Start your review of Introduction to Coding Theory

Never Stop Learning.

Get personalized course recommendations, track subjects and courses with reminders, and more.

Someone learning on their laptop while sitting on the floor.