This course will enable students to
Course | Learning outcome (at course level) | Learning and teaching strategies | Assessment Strategies | ||
Course Code | Course Title | ||||
24DBDA 511A |
Computer Vision and IoT (Theory)
| CO295. Analyse image formation and manipulation techniques in computer vision. CO296. Implement basic image processing operations. CO297. Apply advanced techniques to address image processing and recognition problems. CO298. Analyse IoT adoption, patterns, challenges, and solution anatomy. CO299. Identify different kinds of sensors and their characteristics with respect to real life problems. CO300.Contribute effectively in course-specific interaction | Approach in teaching: Interactive Lectures, Discussion, Reading assignments, Demonstration.
Learning activities for the students: Self learning assignments, Effective questions, Seminar presentation. | Class test, Semester end examinations, Quiz, Practical Assignments, Presentation. |
Image Processing VS Computer Vision , Problems in Computer Vision Introduction to images .How images are formed, Image as a Matrix ,Manipulating Pixels, Displaying and Saving an Image ,Display Utility Functions ,Color Image ,Image Channels ,Splitting and Merging Channels ,Manipulating Color pixels ,Images with Alpha Channel.
Basic image operations (creating, cropping, resizing images, creating image masks).
Mathematical operations on images. Datatype Conversion, Contrast Enhancement, Brightness Enhancement.
Image Annotation. Draw a line over an image, Draw a Circle over an image, Draw a Rectangle over an image, Draw an Ellipse over an image ,Draw text over an image.
point operators, linear filtering, neighbourhood operators, fourier transforms, segmentation. Feature Detection and Matching – points and patches, edges, lines, Feature-based Alignment – 2D, 3D feature-based alignment, pose estimation.
Recognition – object detection, face recognition, instance recognition, category recognition.
IoT global adoption, IoT common Patterns. sensor, data, analytics, IoT challenges. security and scalability, Resources.IoT Application Domains. IoT Solution Anatomy – Device and Networks. IoT Solution Architecture, Physical Layer (Devices, Hardware, Sensors), Communication layer (IoT networks), Resources IoT Solution Anatomy – IoT Data Platform. IoT Platform Layer, Data Analytics and applications Layer, Resources.
Description & Characteristics–First Generation – Description & Characteristics– Advanced Generation – Description & Characteristics–Integrated IoT Sensors – Description & Characteristics–Polytronics Systems – Description & Characteristics–Sensors' Swarm – Description & Characteristics.
SUGGESTED TEXT BOOKS
SUGGESTED REFERENCE BOOKS
e RESOURCES
JOURNALS