| | Convolution Kernels |
| | ******************* |
| |
|
| | Introduction and Concept |
| | ======================== |
| |
|
| | The convolution module provides several built-in kernels to cover the most |
| | common applications in astronomy. It is also possible to define custom kernels |
| | from arrays or combine existing kernels to match specific applications. |
| |
|
| | Every filter kernel is characterized by its response function. For time series |
| | we speak of an "impulse response function" or for images we call it "point |
| | spread function." This response function is given for every kernel by a |
| | `~astropy.modeling.FittableModel`, which is evaluated on a grid with |
| | :func:`~astropy.convolution.discretize_model` to obtain a kernel |
| | array, which can be used for discrete convolution with the binned data. |
| |
|
| |
|
| | Examples |
| | ======== |
| |
|
| | 1D Kernels |
| | ---------- |
| |
|
| | One application of filtering is to smooth noisy data. In this case we |
| | consider a noisy Lorentz curve: |
| |
|
| | >>> import numpy as np |
| | >>> from astropy.modeling.models import Lorentz1D |
| | >>> from astropy.convolution import convolve, Gaussian1DKernel, Box1DKernel |
| | >>> lorentz = Lorentz1D(1, 0, 1) |
| | >>> x = np.linspace(-5, 5, 100) |
| | >>> data_1D = lorentz(x) + 0.1 * (np.random.rand(100) - 0.5) |
| |
|
| | Smoothing the noisy data with a `~astropy.convolution.Gaussian1DKernel` |
| | with a standard deviation of 2 pixels: |
| |
|
| | >>> gauss_kernel = Gaussian1DKernel(2) |
| | >>> smoothed_data_gauss = convolve(data_1D, gauss_kernel) |
| |
|
| | Smoothing the same data with a `~astropy.convolution.Box1DKernel` of width 5 |
| | pixels: |
| |
|
| | >>> box_kernel = Box1DKernel(5) |
| | >>> smoothed_data_box = convolve(data_1D, box_kernel) |
| |
|
| | The following plot illustrates the results: |
| |
|
| | .. plot:: |
| |
|
| | import numpy as np |
| | import matplotlib.pyplot as plt |
| | from astropy.modeling.models import Lorentz1D |
| | from astropy.convolution import convolve, Gaussian1DKernel, Box1DKernel |
| |
|
| | # Fake Lorentz data including noise |
| | lorentz = Lorentz1D(1, 0, 1) |
| | x = np.linspace(-5, 5, 100) |
| | data_1D = lorentz(x) + 0.1 * (np.random.rand(100) - 0.5) |
| |
|
| | # Smooth data |
| | gauss_kernel = Gaussian1DKernel(2) |
| | smoothed_data_gauss = convolve(data_1D, gauss_kernel) |
| | box_kernel = Box1DKernel(5) |
| | smoothed_data_box = convolve(data_1D, box_kernel) |
| |
|
| | # Plot data and smoothed data |
| | plt.plot(x, data_1D, label='Original') |
| | plt.plot(x, smoothed_data_gauss, label='Smoothed with Gaussian1DKernel') |
| | plt.plot(x, smoothed_data_box, label='Smoothed with Box1DKernel') |
| | plt.xlabel('x [a.u.]') |
| | plt.ylabel('amplitude [a.u.]') |
| | plt.xlim(-5, 5) |
| | plt.ylim(-0.1, 1.5) |
| | plt.legend(prop={'size':12}) |
| | plt.show() |
| |
|
| |
|
| | Beside the ``astropy`` convolution functions |
| | `~astropy.convolution.convolve` and |
| | `~astropy.convolution.convolve_fft`, it is also possible to use |
| | the kernels with ``numpy`` or ``scipy`` convolution by passing the ``array`` |
| | attribute. This will be faster in most cases than the ``astropy`` convolution, |
| | but will not work properly if NaN values are present in the data. |
| |
|
| | >>> smoothed = np.convolve(data_1D, box_kernel.array) |
| |
|
| | 2D Kernels |
| | ---------- |
| |
|
| | As all 2D kernels are symmetric, it is sufficient to specify the width in one |
| | direction. Therefore the use of 2D kernels is basically the same as for 1D |
| | kernels. Here we consider a small Gaussian-shaped source of amplitude 1 in the |
| | middle of the image and add 10% noise: |
| |
|
| | >>> import numpy as np |
| | >>> from astropy.convolution import convolve, Gaussian2DKernel, Tophat2DKernel |
| | >>> from astropy.modeling.models import Gaussian2D |
| | >>> gauss = Gaussian2D(1, 0, 0, 3, 3) |
| | >>> # Fake image data including noise |
| | >>> x = np.arange(-100, 101) |
| | >>> y = np.arange(-100, 101) |
| | >>> x, y = np.meshgrid(x, y) |
| | >>> data_2D = gauss(x, y) + 0.1 * (np.random.rand(201, 201) - 0.5) |
| |
|
| | Smoothing the noisy data with a |
| | :class:`~astropy.convolution.Gaussian2DKernel` with a standard |
| | deviation of 2 pixels: |
| |
|
| | >>> gauss_kernel = Gaussian2DKernel(2) |
| | >>> smoothed_data_gauss = convolve(data_2D, gauss_kernel) |
| |
|
| | Smoothing the noisy data with a |
| | :class:`~astropy.convolution.Tophat2DKernel` of width 5 pixels: |
| |
|
| | >>> tophat_kernel = Tophat2DKernel(5) |
| | >>> smoothed_data_tophat = convolve(data_2D, tophat_kernel) |
| |
|
| | This is what the original image looks like: |
| |
|
| | .. plot:: |
| |
|
| | import numpy as np |
| | import matplotlib.pyplot as plt |
| | from astropy.modeling.models import Gaussian2D |
| | gauss = Gaussian2D(1, 0, 0, 2, 2) |
| | # Fake image data including noise |
| | x = np.arange(-100, 101) |
| | y = np.arange(-100, 101) |
| | x, y = np.meshgrid(x, y) |
| | data_2D = gauss(x, y) + 0.1 * (np.random.rand(201, 201) - 0.5) |
| | plt.imshow(data_2D, origin='lower') |
| | plt.xlabel('x [pixels]') |
| | plt.ylabel('y [pixels]') |
| | plt.colorbar() |
| | plt.show() |
| |
|
| | The following plot illustrates the differences between several 2D kernels |
| | applied to the simulated data. Note that it has a slightly different color |
| | scale compared to the original image. |
| |
|
| | .. plot:: |
| |
|
| | import numpy as np |
| | import matplotlib.pyplot as plt |
| |
|
| | from astropy.convolution import * |
| | from astropy.modeling.models import Gaussian2D |
| |
|
| | # Small Gaussian source in the middle of the image |
| | gauss = Gaussian2D(1, 0, 0, 2, 2) |
| | # Fake data including noise |
| | x = np.arange(-100, 101) |
| | y = np.arange(-100, 101) |
| | x, y = np.meshgrid(x, y) |
| | data_2D = gauss(x, y) + 0.1 * (np.random.rand(201, 201) - 0.5) |
| |
|
| | # Setup kernels, including unity kernel for original image |
| | # Choose normalization for linear scale space for MexicanHat |
| |
|
| | kernels = [TrapezoidDisk2DKernel(11, slope=0.2), |
| | Tophat2DKernel(11), |
| | Gaussian2DKernel(11), |
| | Box2DKernel(11), |
| | 11 ** 2 * MexicanHat2DKernel(11), |
| | AiryDisk2DKernel(11)] |
| |
|
| | fig, axes = plt.subplots(nrows=2, ncols=3) |
| |
|
| | # Plot kernels |
| | for kernel, ax in zip(kernels, axes.flat): |
| | smoothed = convolve(data_2D, kernel, normalize_kernel=False) |
| | im = ax.imshow(smoothed, vmin=-0.01, vmax=0.08, origin='lower', |
| | interpolation='None') |
| | title = kernel.__class__.__name__ |
| | ax.set_title(title, fontsize=12) |
| | ax.set_yticklabels([]) |
| | ax.set_xticklabels([]) |
| |
|
| | cax = fig.add_axes([0.9, 0.1, 0.03, 0.8]) |
| | fig.colorbar(im, cax=cax) |
| | plt.subplots_adjust(left=0.05, right=0.85, top=0.95, bottom=0.05) |
| | plt.show() |
| |
|
| |
|
| | The Gaussian kernel has better smoothing properties compared to the Box and the |
| | Top Hat. The Box filter is not isotropic and can produce artifacts (the source |
| | appears rectangular). The Mexican Hat filter removes noise and slowly varying |
| | structures (i.e., background), but produces a negative ring around the source. |
| | The best choice for the filter strongly depends on the application. |
| |
|
| |
|
| | Available Kernels |
| | ================= |
| |
|
| | .. currentmodule:: astropy.convolution |
| |
|
| | .. autosummary:: |
| |
|
| | AiryDisk2DKernel |
| | Box1DKernel |
| | Box2DKernel |
| | CustomKernel |
| | Gaussian1DKernel |
| | Gaussian2DKernel |
| | MexicanHat1DKernel |
| | MexicanHat2DKernel |
| | Model1DKernel |
| | Model2DKernel |
| | Ring2DKernel |
| | Tophat2DKernel |
| | Trapezoid1DKernel |
| | TrapezoidDisk2DKernel |
| |
|
| | Kernel Arithmetics |
| | ================== |
| |
|
| | Addition and Subtraction |
| | ------------------------ |
| |
|
| | As convolution is a linear operation, kernels can be added or subtracted from |
| | each other. They can also be multiplied with some number. One basic example |
| | would be the definition of a Difference of Gaussian filter: |
| |
|
| | >>> from astropy.convolution import Gaussian1DKernel |
| | >>> gauss_1 = Gaussian1DKernel(10) |
| | >>> gauss_2 = Gaussian1DKernel(16) |
| | >>> DoG = gauss_2 - gauss_1 |
| |
|
| | Another application is to convolve faked data with an instrument response |
| | function model. For example, if the response function can be described by |
| | the weighted sum of two Gaussians: |
| |
|
| | >>> gauss_1 = Gaussian1DKernel(10) |
| | >>> gauss_2 = Gaussian1DKernel(16) |
| | >>> SoG = 4 * gauss_1 + gauss_2 |
| |
|
| | Most times it will be necessary to normalize the resulting kernel by calling |
| | explicitly: |
| |
|
| | >>> SoG.normalize() |
| |
|
| |
|
| | Convolution |
| | ----------- |
| |
|
| | Furthermore, two kernels can be convolved with each other, which is useful when |
| | data is filtered with two different kinds of kernels or to create a new, |
| | special kernel: |
| |
|
| | >>> import warnings |
| | >>> from astropy.convolution import Gaussian1DKernel, convolve |
| | >>> gauss_1 = Gaussian1DKernel(10) |
| | >>> gauss_2 = Gaussian1DKernel(16) |
| | >>> with warnings.catch_warnings(): |
| | ... warnings.simplefilter('ignore') # Ignore warning for doctest |
| | ... broad_gaussian = convolve(gauss_2, gauss_1) |
| |
|
| | Or in case of multistage smoothing: |
| |
|
| | >>> import numpy as np |
| | >>> from astropy.modeling.models import Lorentz1D |
| | >>> from astropy.convolution import convolve, Gaussian1DKernel, Box1DKernel |
| | >>> lorentz = Lorentz1D(1, 0, 1) |
| | >>> x = np.linspace(-5, 5, 100) |
| | >>> data_1D = lorentz(x) + 0.1 * (np.random.rand(100) - 0.5) |
| |
|
| | >>> gauss = Gaussian1DKernel(3) |
| | >>> box = Box1DKernel(5) |
| | >>> smoothed_gauss = convolve(data_1D, gauss) |
| | >>> smoothed_gauss_box = convolve(smoothed_gauss, box) |
| |
|
| | You would rather do the following: |
| |
|
| | >>> gauss = Gaussian1DKernel(3) |
| | >>> box = Box1DKernel(5) |
| | >>> with warnings.catch_warnings(): |
| | ... warnings.simplefilter('ignore') # Ignore warning for doctest |
| | ... smoothed_gauss_box = convolve(data_1D, convolve(box, gauss)) |
| |
|
| | Which, in most cases, will also be faster than the first method because only |
| | one convolution with the often times larger data array will be necessary. |
| |
|
| | Discretization |
| | ============== |
| |
|
| | To obtain the kernel array for discrete convolution, the kernel's response |
| | function is evaluated on a grid with |
| | :func:`~astropy.convolution.discretize_model`. For the |
| | discretization step the following modes are available: |
| |
|
| | * Mode ``'center'`` (default) evaluates the response function on the grid by |
| | taking the value at the center of the bin. |
| | |
| | >>> from astropy.convolution import Gaussian1DKernel |
| | >>> gauss_center = Gaussian1DKernel(3, mode='center') |
| |
|
| | * Mode ``'linear_interp'`` takes the values at the corners of the bin and |
| | linearly interpolates the value at the center: |
| | |
| | >>> gauss_interp = Gaussian1DKernel(3, mode='linear_interp') |
| |
|
| | * Mode ``'oversample'`` evaluates the response function by taking the mean on an |
| | oversampled grid. The oversample factor can be specified with the ``factor`` |
| | argument. If the oversample factor is too large, the evaluation becomes slow. |
| | |
| | >>> gauss_oversample = Gaussian1DKernel(3, mode='oversample', factor=10) |
| |
|
| | * Mode ``'integrate'`` integrates the function over the pixel using |
| | ``scipy.integrate.quad`` and ``scipy.integrate.dblquad``. This mode is very |
| | slow and is only recommended when the highest accuracy is required. |
| | |
| | .. doctest-requires:: scipy |
| |
|
| | >>> gauss_integrate = Gaussian1DKernel(3, mode='integrate') |
| |
|
| | Especially in the range where the kernel width is in order of only a few pixels, |
| | it can be advantageous to use the mode ``oversample`` or ``integrate`` to |
| | conserve the integral on a subpixel scale. |
| |
|
| |
|
| | Normalization |
| | ============= |
| |
|
| | The kernel models are normalized per default (i.e., |
| | :math:`\int_{-\infty}^{\infty} f(x) dx = 1`). But because of the limited kernel |
| | array size, the normalization for kernels with an infinite response can differ |
| | from one. The value of this deviation is stored in the kernel's ``truncation`` |
| | attribute. |
| |
|
| | The normalization can also differ from one, especially for small kernels, due |
| | to the discretization step. This can be partly controlled by the ``mode`` |
| | argument, when initializing the kernel. (See also |
| | :func:`~astropy.convolution.discretize_model`.) Setting the |
| | ``mode`` to ``'oversample'`` allows us to conserve the normalization even on the |
| | subpixel scale. |
| | |
| | The kernel arrays can be renormalized explicitly by calling either the |
| | ``normalize()`` method or by setting the ``normalize_kernel`` argument in the |
| | :func:`~astropy.convolution.convolve` and |
| | :func:`~astropy.convolution.convolve_fft` functions. The latter |
| | method leaves the kernel itself unchanged but works with an internal normalized |
| | version of the kernel. |
| |
|
| | Note that for :class:`~astropy.convolution.MexicanHat1DKernel` |
| | and :class:`~astropy.convolution.MexicanHat2DKernel` there is |
| | :math:`\int_{-\infty}^{\infty} f(x) dx = 0`. To define a proper normalization, |
| | both filters are derived from a normalized Gaussian function. |
| |
|