DTU M.SC. - COURSE EXAM Revised Edition
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1 Written test, 16 th of December Course name : Digital Image Analysis Aids allowed : All usual aids Weighting : All questions are equally weighed. Name : Signature : Desk no. : Question Answer Question Answer Possible answers to each question are numbered from 1 to 6. The chosen number of the answer must be entered in the table above. In case you enter an incorrect number in the table this may be corrected by "inking out" the wrong number and instead placing the correct number below. Should there be any doubts in connection with a correction, the question will be considered as not answered. ONLY THE FRONT PAGE IS TO BE HANDED-IN. If you decide to make a blank hand-in or leave the examination prematurely the front page must in all circumstances be handed-in. Rough drafts, calculations and comments will NOT be included in the evaluation. Only numbers included in the above table will be registered. A correct answer will be equivalent to 5 points. An incorrect answer will be equivalent to -1 points. Questions unanswered as well as answer number six (equivalent to "do not know") will not produce points. The number of points required for a satisfactorily answered exam is finally determined by teacher and external examiner. Please don't forget to state your name, signature and desk number on the paper.
2 QUESTION 99.1 A camera is made using a CCD-chip. The chip has the following data: Resolution : 756 pixels horizontal * 581 pixels vertical Pixels size : 11 µ m * 11 µ m Pixels placement : 11 µ m (centre to centre) Given a focal length (camera constant) of 8 mm, find the field of viewθ (diagonal). 1. θ = θ = θ = θ = θ =
3 QUESTION 99.2 In the image we see an object consisting of 5 black foreground pixels. what is the spatial dispersion matrix for this object? 1. 3, , , ,2
4 QUESTION 99.3 A point P has the following coordinates in the object coordinate system: X 2 Y = 2 Z 2 In a camera coordinate system point P has the coordinates: x 8 y = 4 z 4 The camera is rotated around a point Q, that is different from the projection centre. In the object coordinate system, Q s coordinates are: dx 2 = dy 1 3 dz The camera coordinate system and the object coordinate system are orientated in the same way, i.e. the axis of the two systems are parallel and the axis have the same positive directions. Calculate the coordinates (q x, y z q,q ) of point Q in the camera coordinate system. 1. (-12, -5, 5) 2. (-3, 4, 8) 3. (4, 5, 8) 4. (14, 12, 6) 5. (5, -8, 10) 6. Do not know
5 QUESTION 99.4 Lossy coding was applied to a digital map. A part of the decoded image is shown below. Which of the following techniques was applied as the first step of the coding? 1. Prediction for Differential Coding 2. Motion compensation 3. Conditional probabilities 4. DCT (8 x 8 pixels) 5. JBIG
6 QUESTION 99.5 We want to use a feature vector x to discriminate between four classes: π 1, π 2, π 3 and π 4. The prior probabilities are 0.4, 0.2, 0.3 and 0.1 respectively, and the loss function is Chosen class π 1 π π 2 3 π 4 π True class π π π Which one of the following five possibilities is not a Bayes discriminant function for any of the classes? 1. -0,8 f (x π 1 ) - 0,4 f (x π 2 ) - 0,6 f (x π 3 ) 2. -0,4 f (x π 1 ) - 0,3 f (x π 3 ) - 0,4 f (x π 4 ) 3. -0,2 f (x π 2 ) - 0,3 f (x π 3 ) - 0,4 f (x π 4 ) 4. -0,4 f (x π 1 ) -0,2 f (x π 2 ) - 0,4 f (x π 4 ) 5. -0,4 f (x π 1 ) -0,4 f (x π 2 ) - 0,4 f (x π 4 )
7 QUESTION 99.6 We want to perform a Voronoi tessellation of the set of all pixels by three points - the three black pixels. How many pixels are associated with the upper-left point if we use a Euclidean distance transformation?
8 QUESTION 99.7 We perform a hit-or-miss-transformation on the black pixels in the above with the composite structuring element 0 1 * * 1 * How many black pixels are there in the resulting image?
9 QUESTION 99.8 Which of the statements below are true (T) and which are false (F): a) 1'st order binary moments are good for real time vision. b) Region growing is good for real time vision. c) It is not possible to control unstable systems using vision. d) Active signalling increases the time used for image processing significantly. 1. (a,b,c,d) = (T,T,T,F) 2. (a,b,c,d) = (F,T,T,F) 3. (a,b,c,d) = (T,F,F,F) 4. (a,b,c,d) = (T,F,T,T) 5. (a,b,c,d) = (F,T,F,T)
10 QUESTION X Y A 7*7 digital image has the pixel values as shown. The image is taken through a lens with the radial distortion given by the parameters: 2 3 a = 0, a3 = , a and a = 0 1 = 7 The principal point of the image is (4, 4). The image is corrected for the distortion, and thereafter rectified using the following output-toinput transformation. x = x y y = x y Which pixel value is assigned to the pixel ( x, y ) = (2,1) in the output image, when the pixel value in the input image is determined by a nearest neighbour interpolation? Do not know
11 QUESTION Which of the following monochannel mappings will map 0.0 into 0.0,1.0 into 1.0, and 0.5 into 0.8? 1. Hyperbolic mapping with parameter Hyperbolic mapping with parameter Gamma mapping with parameter Gamma mapping with parameter Logarithmic mapping with parameter Do not know
12 QUESTION Which one of the following texture statistics is invariant to any gamma mapping of the pixel values? 1. Correlation 2. Diagonal moment 3. Sum average 4. Inertia 5. Maximum probability
13 QUESTION A camera is calibrated using a plane test field. The photo is taken from an unknown distance. The optical axis of the camera is pointed at right angle (perpendicular) to the test field. Which of the listed inner orientation parameters cannot be estimated from a single photo? 1. The affinity angle 2. The coefficients in the distortion polynomial 3. The aspect ratio 4. The principal point 5. The camera constant 6. Do not know
14 QUESTION A binary image is coded using (a very simple) run-length code applied to each row of the image. The values of the pixels are independent. The probabilities are given by P(white) = 0.8 and P(black) = 0.2, independently of neighbouring pixels. We code the run-values 1,2 and esc for both black and white runs using a different code for each colour. The esc symbol is used for runs larger than 2. Consider the situation that a black run has been completed so the next binary pixel is white. What is the entropy for the next symbol (1,2 or esc)? (The entropy determines a lower bound for the expected number of bits used to code the symbol.) bit bit bit 4. 2 bits 5. 3 bits
15 QUESTION The discrete Fourier transform is performed on a 480 x 640 (rows x columns) image. A peak is found at frequency (u,v) = (27,0). What is the length in pixels of one period of this frequency?
16 QUESTION A SAR has an antenna with a length of 4 m in the azimuth direction. It is operating at an altitude of 13,000 m. The radar system has a bandwidth of 150 MHz. At which one of the following ground-range distances will the spatial resolutions in the azimuth direction and in the groundrange direction be the same? 1. 13,000 m 2. 7,506 m 3. 3,357 m 4. 6,500 m 5. 4,436 m
17 QUESTION Which filter will in one step do the same as a 3 x 3 mean filter followed by a Laplacian ? Do not know
18 QUESTION In an industrial vision system objects on a conveyor belt are detected using a single line in the camera. The camera conforms to the CCIR standard i.e. the line is scanned every 40 ms (the line scan time is considered negligible). The minimum length of the objects b min are 0.1 m. The distance between objects are greater than b min. What is the maximum conveyor belt speed V max requiring that all objects are detected (seen in at least one scan). 1. V max = 2.5 m/s. 2. V max = 3.5 m/s 3. V max = 3.0 m/s 4. V max = 4.0 m/s 5. V max = 2.0 m/s
19 QUESTION The gray level run length matrix in the horizontal direction can be computed on the image above. What is the short runs emphasis?
20 QUESTION On the set of black pixels X in the image above we perform the operation ( X o B ) B ) o B ) with structuring element How many pixels are there in the result?
21 QUESTION The absolute orientation parameters for a stereo model are: X Y Z = 1 ; Ω = 0 ; Φ = 0; Κ = 0 and M = 2; 1 A point P in the object coordinate system has the coordinates X 5 Y = 5 Z 5 The stereo model is constructed from 2 images taken by a pinhole camera with c = 2. Find the image coordinates of point P in the left camera (image 1) where the relative orientation parameters are defined. 1. (-4, 0) 2. (0, 3) 3. (-1, 3) 4. (-4, -3) 5. (3, -4) 6. Do not know
NAME :... Signature :... Desk no. :... Question Answer
Written test Tuesday 19th of December 2000. Aids allowed : All usual aids Weighting : All questions are equally weighted. NAME :................................................... Signature :...................................................
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