Exploring Martian planetary images: C++ exercises for CS1
SIGCSE '97 Proceedings of the twenty-eighth SIGCSE technical symposium on Computer science education
Adding some spice to CS1 curricula
SIGCSE '97 Proceedings of the twenty-eighth SIGCSE technical symposium on Computer science education
Adding breadth to CS1 and CS2 courses through visual and interactive programming projects
SIGCSE '99 The proceedings of the thirtieth SIGCSE technical symposium on Computer science education
Introductory Techniques for 3-D Computer Vision
Introductory Techniques for 3-D Computer Vision
Computer Vision
Computer Vision: A Modern Approach
Computer Vision: A Modern Approach
Image analysis: a group assignment in programming with breadth
FIE '95 Proceedings of the Frontiers in Education Conference, on 1995. Proceedings., 1995 - Volume 02
Review of computer vision education
IEEE Transactions on Education
Breadth-first CS 1 for scientists
Proceedings of the 12th annual SIGCSE conference on Innovation and technology in computer science education
Evaluating a breadth-first cs 1 for scientists
Proceedings of the 39th SIGCSE technical symposium on Computer science education
Hi-index | 0.00 |
In a small computer science department without a graduate program, it is sometimes difficult to attract research students. This is particularly true for research in computer vision, since it is built upon a substantial body of knowledge, including considerable mathematics, that most undergraduates are not familiar with. My approach to encouraging students to take part in this research starts by introducing computation with images in early programming classes. Students become comfortable working with images in a structured framework, where they are not exposed to excessive underlying details. The students that become interested in working with images can take my computer vision class. This course is taught in a way that students can understand the material without having a deep background in mathematics. Students that are successful in this class are ready for (and encouraged to) work on undergraduate research projects and perform internships in computer vision research. While my strategy focuses on computer vision, similar approaches could be used for other research areas.