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@ -947,7 +947,7 @@ Returns Gaussian filter coefficients. |
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:param ksize: Aperture size. It should be odd ( :math:`\texttt{ksize} \mod 2 = 1` ) and positive. |
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:param sigma: Gaussian standard deviation. If it is non-positive, it is computed from ``ksize`` as \ ``sigma = 0.3*((ksize-1)*0.5 - 1) + 0.8`` . |
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:param ktype: Type of filter coefficients. It can be ``CV_32f`` or ``CV_64F`` . |
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:param ktype: Type of filter coefficients. It can be ``CV_32F`` or ``CV_64F`` . |
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The function computes and returns the |
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:math:`\texttt{ksize} \times 1` matrix of Gaussian filter coefficients: |
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@ -976,6 +976,32 @@ Two of such generated kernels can be passed to |
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getGaborKernel |
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----------------- |
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Returns Gabor filter coefficients. |
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.. ocv:function:: Mat getGaborKernel( Size ksize, double sigma, double theta, double lambd, double gamma, double psi = CV_PI*0.5, int ktype = CV_64F ) |
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.. ocv:pyfunction:: cv2.getGaborKernel(ksize, sigma, theta, lambd, gamma[, psi[, ktype]]) -> retval |
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:param ksize: Size of the filter returned. |
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:param sigma: Standard deviation of the gaussian envelope. |
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:param theta: Orientation of the normal to the parallel stripes of a Gabor function. |
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:param lambd: Wavelength of the sinusoidal factor. |
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:param gamma: Spatial aspect ratio. |
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:param psi: Phase offset. |
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:param ktype: Type of filter coefficients. It can be ``CV_32F`` or ``CV_64F`` . |
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For more details about gabor filter equations and parameters, see: `Gabor Filter <http://en.wikipedia.org/wiki/Gabor_filter>`_. |
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getKernelType |
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------------- |
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Returns the kernel type. |
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