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## Quiz on Sampling & Fourier Transform of Sampled Function Worksheet 34 Quiz PDF Download

Sampling and Fourier Transform of Sampled Function Quiz

MCQ: Band limited function can be recovered from its samples if acquired samples are at rate twice highest frequency, this theorem is called

1. sampling theorem
2. sampling theorem
3. sampling theorem
4. sampling theorem

A

Line Detection in Image Segmentation Quiz

MCQ: Preferred direction of mask is weighted with the

1. low value coefficients
2. high value coefficients
3. mid value coefficients
4. double value coefficients

B

Point Line and Edge Detection Quiz

MCQ: Points other than exceeding threshold in output image are marked as

1. 0
2. 1
3. 11
4. x

A

Spatial and Intensity Resolution Quiz

MCQ: Type of zooms are

1. 8
2. 6
3. 4
4. 2

D

Background of Intensity Transformation Quiz

MCQ: In formula g(x,y) = T[ƒ(x,y)], T is the

1. transformed image
2. transformation vector
3. transformation theorem
4. transformation function

D