Course details
Neural Networks, Adaptive and Optimum Filtering
QB4 Acad. year 2017/2018 Summer semester
In its first part, the course is devoted to providing an overview of types of architecture of neural networks and to a detailed analysis of their properties. Applications of neural networks in signal and image processing and recognition are included in this treatment. In the second part, the course deals with the theory of optimum detection and restoration of signals in its classical and generalised forms, emphasising the common base of this whole area. The subject highlights the common view-points in the area of neural networks and in the area of optimised signal processing.
Guarantor
Language of instruction
Completion
Assessment points
- 100 pts final exam
Department
Subject specific learning outcomes and competences
Theoretical knowledge of areas of neural networks and optimum signal processing, ability to apply and, if necessary, to modify these methods for concrete problems.
Learning objectives
Gaining knowledge of theory of neural networks and theory of adaptive and optimum filtering, showing common view-points of both areas
Prerequisite knowledge and skills
signal and system theory, digital signal processing (e.g. the subjects BCZA, MMZS)
Syllabus of seminars
Progress assessment
Study evaluation is based on marks obtained for specified items. Minimimum number of marks to pass is 50.
Controlled instruction
There are no checked study.
Course inclusion in study plans