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Mar
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awarded  Popular Question
Feb
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awarded  Notable Question
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awarded  Yearling
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May
19
asked Issues with installing PCL with Homebrew (OS X)
May
12
answered Mat copyTo from row to col doesn't work! Why?
May
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May
8
comment Setting a cv::Mat to its maximum possible value
matrix_1.type() should return you the type. Then use a switch to handle the cases.
May
8
answered Setting a cv::Mat to its maximum possible value
May
2
comment Does SVM need to do learning each time when detecting people?
It's supposed to learn once, so that your SVM 'understand' the way to classify pedestrian (i.e. found the parameters to your features). Then everytime you do prediction, you predict directly (i.e. internally it should be more or less (learned parameters * features)).
Apr
25
comment Questions about the Structure From Motion Pipeline
I don't know the answer for second question, but for the first one. Normally I'd undistort the points first, however I read that AR library such as Metaio doesn't really use lens distortion, so maybe you can forego that.
Apr
24
comment OpenCV OTSU threshold removing text
Yeah, Otsu's thresholding works by minimising intra class variance from histogram calculated in the image. So, when there's some lighting changes that's not extreme, the result will be very similar. In this case, you might wanna think about other thresholding method. Wiki Otsu's method for more info.
Apr
13
answered How to merge 3 matrices into 1 in opencv?
Apr
11
awarded  Notable Question
Apr
11
comment Effect of variance (sigma) at gaussian smoothing
Ah the sigma we're talking here is not the one in frequency domain. It's inverse proportional to frequency. Look here: en.wikipedia.org/wiki/Gaussian_filter#Digital_implementation That might be where the confusion comes from
Apr
11
comment Effect of variance (sigma) at gaussian smoothing
Here's a sample video of Gaussian blur with kernel(window) size of 105, and sigma that varies from 1.0 to 15.0: youtube.com/watch?v=A_MloE8B5Oo
Apr
11
comment Effect of variance (sigma) at gaussian smoothing
Sigma is the variance (i.e. standard deviation squared). If you increase standard deviation in normal distribution, the distribution will be more spread out, and the peak will be less spiky. Similarly in gaussian smoothing, which is a low pass filter, it makes everything blurry, by de-emphasising sharp gradient changes in the image, thus if you increase the variance / stddev, it will be more blurry. But this is limited by the size of your gaussian kernel.