introduction to image processing grass sky tree ? ? review
Post on 25-Dec-2015
218 Views
Preview:
TRANSCRIPT
Introduction to Image Processing
Grass
Sky
TreeTree
? ?
Review
Exam Paper Format
• Duration: One Hour
• Format: Answer 3 out of 4 Questions
Question 1• Digital Image Fundamentals
– image sensing & acquisition; sampling & quantisation; spatial resolution & aliasing; image representations; colour models: additive vs. subtractive; alternative colour spaces: RGB, HSV, CMYK, YUV
• Point Processing
– intensity transformation: contrast reversal (negatives), log, power-law; contrast stretching using piecewise linear transform functions; bit-plane slicing; histogram equalisation & matching; arithmetic/logic operations
Question 2
• Neighbourhood Processing (Image Filtering)
– noise models: uniform, Gaussian, impulse & periodic; convolution vs. correlation; linear filters: mean (box), weighted average & Gaussian; nonlinear filters: minimum, maximum & median; bilateral filtering; handling of edge pixels; separable filters; edge detectors: 1st and 2nd derivatives gradient operators; Roberts, Prewitt, Sobel, Laplacian operators & their mathematical formulations
Question 3
• Image Segmentation
– purpose and main approaches of segmentation; over & under-segmentation; thresholding: global, local, adaptive and multi-level; algorithms: iterative global thresholding & Otsu, connected components & 2-pass labelling
– texture, region growing, split & merge and motion segmentation; background extraction; edge linking, i.e. local vs. global processing using Hough transform (no mathematical details required)
– 4 vs. 8-neighbours; object representation & description, e.g. normalised chain codes & shape number
Question 4
• Spectral Techniques
– Fourier theory and discrete Fourier transform; magnitude and phase of image spectra; filtering in the frequency domain and its advantages; convolution theorem; basic filtering steps in the frequency domain; differences between low, high & bandpass filters; ideal vs. practical spectral filters, e.g. Butterworth filters; image enhancement vs. image restoration; inverse filters
top related