Introduction-Digital Image Fundamentals: Elements of Computer Vision-Light and the Electromagnetic Spectrum-Light and the Electromagnetic Spectrum-Image Sensing and Acquisition-Image Sampling and Quantization-Some Basic Relationships between Pixels. Introduction to the Basic Mathematical Tools Used in Digital Image Processing- Intensity Transformations and Spatial
Filtering: Basic Intensity Transformation Functions-Histogram Processing-Fundamentals of Spatial Filtering -Smoothing (Lowpass) Spatial Filters-Sharpening (High pass) Spatial Filters.
Filtering in the Frequency Domain: Sampling and the Fourier Transform of Sampled Functions-Discrete Fourier Transform of One Variable-Extensions to Functions of Two Variables-Properties of the 2-D and 3-D DFT and IDFT-Filtering in the Frequency Domain-Image Smoothing Using Lowpass Frequency Domain Filters , Basics of morphological operators, Color
Image Processing: Color Fundamental-Color Models-Color Transformations-Smoothing and Sharpening-Case Studies – Medical Imaging – Security and Surveillance Systems – Automated Driving Systems.
Video processing : Digital video, 2D and 3-D Feature Detection and Matching – points and patches, tomography, Motion estimation : Motion Models, Optical flow, Matching methods