ece4580:questionsformative
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ece4580:questionsformative [2017/01/31 10:30] – pvela | ece4580:questionsformative [2017/01/31 10:37] – [Topic 6: Optimization in Computer Vision] pvela | ||
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====== ECE4580: Formative Questions ====== | ====== ECE4580: Formative Questions ====== | ||
- | The questions below are meant to highlight key aspects or principles related to the reading. | + | The questions below are meant to highlight key aspects or principles related to the reading. |
- | ==== Topic 1: Image Formation ==== | + | ===== Topic 1: Image Formation |
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equations? (related to Question 4.3 part 3) | equations? (related to Question 4.3 part 3) | ||
- | ==== Topic 2: Camera Geometry ==== | + | ===== Topic 2: Camera Geometry |
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- | ==== Topic 3: Camera Calibration ==== | + | ===== Topic 3: Camera Calibration |
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In my notes, I use the symbol M, however Szeleski (Sec 2.1.5) and the DLT reading use the symbol P to denote the camera (projection) matrix. | In my notes, I use the symbol M, however Szeleski (Sec 2.1.5) and the DLT reading use the symbol P to denote the camera (projection) matrix. | ||
- | ==== Topic 4: Stereo and Multiview Geometry ==== | + | ===== Topic 4: Stereo and Multiview Geometry |
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- | ==== Topic 5: Images as Functions ==== | + | ===== Topic 5: Images as Functions |
**Question 1:** What is a convolution kernel? What relationship is there with Fourier analysis? What purpose would a convolution kernel serve in image processing? | **Question 1:** What is a convolution kernel? What relationship is there with Fourier analysis? What purpose would a convolution kernel serve in image processing? | ||
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- | ==== Topic 6: Optimization in Computer Vision ==== | + | ===== Topic 6: Optimization in Computer Vision |
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**Question 2:** What is a Voronoi diagram (or Voronoi partition)? | **Question 2:** What is a Voronoi diagram (or Voronoi partition)? | ||
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+ | ===== Topic 7: Bayesian Statistics in Computer Vision ===== | ||
+ | ------------ | ||
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+ | **Question 1:** | ||
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+ | ===== Topic 8: Optical Flow ===== | ||
+ | ------------ | ||
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+ | **Question 1:** What is the optical flow constraint? Why is it ill-posed (e.g., degenerate)? | ||
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+ | **Question 2:** What favorite trick do we apply to the optical flow constraint to obtain a well-posed optimization problem for dense optical flow? | ||
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+ | **Question 3:** (Optional) Sparse optical flow doesn' | ||
ece4580/questionsformative.txt · Last modified: 2023/03/06 10:31 by 127.0.0.1