CSD

CCS349: Image and Video Analytics syllabus for CSD 2021 regulation (Professional Elective-I)

Image and Video Analytics detailed syllabus for Computer Science & Design (CSD) for 2021 regulation curriculum has been taken from the Anna Universities official website and presented for the CSD students. For course code, course name, number of credits for a course and other scheme related information, do visit full semester subjects post given below.

For Computer Science & Design 5th Sem scheme and its subjects, do visit CSD 5th Sem 2021 regulation scheme. For Professional Elective-I scheme and its subjects refer to CSD Professional Elective-I syllabus scheme. The detailed syllabus of image and video analytics is as follows.

Course Objectives:

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Unit I

INTRODUCTION
Computer Vision – Image representation and image analysis tasks – Image representations -digitization – properties – color images – Data structures for Image Analysis – Levels of image data representation – Traditional and Hierarchical image data structures.

Unit II

IMAGE PRE-PROCESSING
Local pre-processing – Image smoothing – Edge detectors – Zero-crossings of the second derivative – Scale in image processing – Canny edge detection – Parametric edge models – Edges in multi-speralct images – Local pre-processing in the frequency domain – Line detection by local pre-processing operators – Image restoration.

Unit III

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Unit IV

FACE RECOGNITION AND GESTURE RECOGNITION
Face Recognition-Introduction-Applications of Face Recognition-Process of Face RecognitionDeepFace solution by Facebook-FaceNet for Face Recognition- Implementation using FaceNet-Gesture Recognition.

Unit V

VIDEO ANALYTICS
Video Processing – use cases of video analytics-Vanishing Gradient and exploding gradient problem-RestNet architecture-RestNet and skip connections-Inception Network-GoogleNet architecture-Improvement in Inception v2-Video analytics-RestNet and Inception v3.

List of Exercises:

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Course Outcomes:

At the end of this course, the students will be able to:

  1. Understand the basics of image processing techniques for computer vision and video analysis.
  2. Explain the techniques used for image pre-processing.
  3. Develop various object detection techniques.
  4. Understand the various face recognition mechanisms.
  5. Elaborate on deep learning-based video analytics.

Text Books:

  1. Milan Sonka, Vaclav Hlavac, Roger Boyle, “Image Processing, Analysis, and Machine Vision”, 4nd edition, Thomson Learning, 2013.
  2. Vaibhav Verdhan,(2021, Computer Vision Using Deep Learning Neural Network Architectures with Python and Keras,Apress 2021(UNIT-III,IV and V)

Reference Books:

  1. Richard Szeliski, “Computer Vision: Algorithms and Applications”, Springer Verlag London Limited,2011.
  2. Caifeng Shan, FatihPorikli, Tao Xiang, Shaogang Gong, “Video Analytics for Business Intelligence”, Springer, 2012.
  3. D. A. Forsyth, J. Ponce, “Computer Vision: A Modern Approach”, Pearson Education, 2003.
  4. E. R. Davies, (2012), “Computer & Machine Vision”, Fourth Edition, Academic Press.

For detailed syllabus of all the other subjects of Computer Science & Design 5th Sem, visit CSD 5th Sem subject syllabuses for 2021 regulation.

For all Computer Science & Design results, visit Anna University CSD all semester results direct link.

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