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subokita.com


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
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
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.
Apr
8
comment C++ data for SVM
Like what herohuyongtao and gokhans said, dimensionality reduction using PCA, or just remove redundant part of the features vector should help. Right now your SVM training will lots of time, and remember that prediction of SVM is of O( support vectors * size of feature vectors ), so your SVM prediction will be very slow too.
Apr
8
comment Remove circles using opencv
Yeah, tuning params is always an annoying issue in computer vision.
Apr
6
comment how to train SVM using landmarks from CI2CV sdk to classify expressions?
Don't forget to update here, I'm as curious as you are.
Apr
6
comment how to train SVM using landmarks from CI2CV sdk to classify expressions?
Sadly I have never done classification of facial expression. But your landmarks are your feature vectors, try to train SVM with them, and do prediction with test data, try plot the precision recall curve. However, if I were you, I'd read some academic papers on it first. cs.cmu.edu/~pmichel/publications/… is one of the papers that shows promising result.
Apr
6
comment how to train SVM using landmarks from CI2CV sdk to classify expressions?
I presume that you're trying to use SVM (probably multi class) to classify expressions. So will SVM work? Probably, training an SVM depends on many things, and it's trial and error. You need to have sufficient amount of training data, and tune your SVM parameters to avoid over and underfitting. Get enough data for training, validation and testing, and play with it. Personally I think if the data is not ambiguous (less noise), then it's easier to train SVM. Not sure if other ML methods (e.g. ANN) are better for this case though.
Mar
29
comment PointCloud from two undistorted images
Yeah, I think I forgot. It's here: subokita.com/2014/03/26/…
Dec
17
comment Is it possible to use assimp to generate tangents IF you also use it to generate normals?
From what I learned, you need to have UV coords first, since tangents and bitangents seemed to be defined to point along texture axis
Nov
24
comment Outputting analog pins from A0 to A5 from Processing
You're right, I need to change the code in the Standard Firmata for that. Thanks a lot, it works now !
Aug
23
comment How do you apply shader on CCRenderTexture twice?
Hmmm, does it mean that there's no way to do that using CCRenderTexture ? Since later on I want to try to combine with other kind of shaders too.
Jun
14
comment how to map depth frame to color frame WITHOUT Kinect
Yeah, I have misalignments in my results too. I asked this on StackOverflow, it seems like there isn't any good answer yet.
Jun
14
comment How do you map Kinect's depth data to its RGB color?
Sadly no. Only OpenCV
Jun
10
comment How do you map Kinect's depth data to its RGB color?
Yeah as per original post, I can't use MapDepthFrameToColorFrame (dataset is pgm and ppm images, and I don't have kinect to work with). And sadly what I'm really looking for is the internal algorithms in NuiImageGetColorPixelCoordinatesFromDepthPixel, which I can't find anywhere (it doesn't seems like it's open source)
Jun
10
comment How do you map Kinect's depth data to its RGB color?
Ah, I'm already using parameters (camera intrinsics, distortions and the extrinsic params) that other users have already performed calibration on it. My main problem seems to be alignment, which might be a step that I have missed, or so.