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 Postgraduate Course: Image and Vision Computing (UG) (INFR11251)
Course Outline
| School | School of Informatics | College | College of Science and Engineering |  
| Credit level (Normal year taken) | SCQF Level 11 (Postgraduate) | Availability | Available to all students |  
| SCQF Credits | 10 | ECTS Credits | 5 |  
 
| Summary | This course follows the delivery and assessment of Image and Vision Computing (INFR11140) exactly. Undergraduate students must register for this course, while MSc students must register for INFR11140 instead. |  
| Course description | This course follows the delivery and assessment of Image and Vision Computing (INFR11140) exactly. Undergraduate students must register for this course, while MSc students must register for INFR11140 instead. |  
Entry Requirements (not applicable to Visiting Students)
| Pre-requisites |  | Co-requisites |  |  
| Prohibited Combinations | Students MUST NOT also be taking    
Image and Vision Computing (INFR11140) AND   
Introduction to Vision and Robotics (INFR09019) AND   
Image and Vision Computing (INFD11004) 
 | Other requirements | This course follows the delivery and assessment of Image and Vision Computing (INFR11140) exactly. Undergraduate students must register for this course, while MSc students must register for INFR11140 instead. 
 Students should be comfortable with probability (Bayes theorem), linear algebra, and multivariate calculus. Students should know or be willing to learn Matlab programming for labs and coursework.
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Information for Visiting Students 
| Pre-requisites | As above. |  
		| High Demand Course? | Yes |  
Course Delivery Information
| Not being delivered |  
Learning Outcomes 
| On completion of this course, the student will be able to: 
        explain the basic physics and mathematical principles of image formationunderstand basic image processing operations such as convolutionwrite programs to solve basic image analysis tasks such as edge detection and line fittingunderstand the concepts of local and global image descriptors, and descriptor matchingwrite programs to perform image analysis tasks of recognition and detection |  
Reading List 
| Relevant Books: - Simon Prince, Computer Vision Models, CUP.
 - Richard Szeliski, Computer Vision Algorithms & Applications, Springer.
 - Forsyth & Ponce, Computer Vision a Modern Approach, Pearson.
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Additional Information
| Graduate Attributes and Skills | The activities in this course will develop skills in lab work, report writing, and programming. 
 Team working skills. For group (probably in pairs) participation in the course mini-project.
 
 Also the flipped classroom discussion sessions (see following section) will promote SCQF11 skills such as;
 -Develop original and creative responses to problems and issues
 -Critically review, consolidate and extend knowledge, skills, practices
 -Thinking in a subject/discipline/sector.
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| Keywords | IVC,Computer Vision,Image Processing,Computer Graphics |  
Contacts 
| Course organiser | Dr Changjian Li Tel:
 Email:
 | Course secretary | Ms Lindsay Seal Tel: (0131 6)50 5194
 Email:
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