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For information about designing linear filters in the spatial domain, see What Is Image Filtering in the Spatial Domain?.

This example shows how to transform a one-dimensional FIR filter into
a two-dimensional FIR filter using the `ftrans2`

function. This
function can be useful because it is easier to design a one-dimensional filter with
particular characteristics than a corresponding two-dimensional filter. The frequency
transformation method preserves most of the characteristics of the one-dimensional filter,
particularly the transition bandwidth and ripple characteristics. The shape of the
one-dimensional frequency response is clearly evident in the two-dimensional
response.

This function uses a *transformation matrix*, a set of elements
that defines the frequency transformation. This function's default transformation matrix
produces filters with nearly circular symmetry. By defining your own transformation
matrix, you can obtain different symmetries. (See Jae S. Lim, *Two-Dimensional
Signal and Image Processing*, 1990, for details.)

Create 1-D FIR filter using the `firpm`

function from the
Signal
Processing Toolbox™.

b = firpm(10,[0 0.4 0.6 1],[1 1 0 0])

b = Columns 1 through 9 0.0537 -0.0000 -0.0916 -0.0001 0.3131 0.4999 0.3131 -0.0001 -0.0916 Columns 10 through 11 -0.0000 0.0537

Transform the 1-D filter to a 2-D filter.

h = ftrans2(b);

h = Columns 1 through 9 0.0001 0.0005 0.0024 0.0063 0.0110 0.0132 0.0110 0.0063 0.0024 0.0005 0.0031 0.0068 0.0042 -0.0074 -0.0147 -0.0074 0.0042 0.0068 0.0024 0.0068 -0.0001 -0.0191 -0.0251 -0.0213 -0.0251 -0.0191 -0.0001 0.0063 0.0042 -0.0191 -0.0172 0.0128 0.0259 0.0128 -0.0172 -0.0191 0.0110 -0.0074 -0.0251 0.0128 0.0924 0.1457 0.0924 0.0128 -0.0251 0.0132 -0.0147 -0.0213 0.0259 0.1457 0.2021 0.1457 0.0259 -0.0213 0.0110 -0.0074 -0.0251 0.0128 0.0924 0.1457 0.0924 0.0128 -0.0251 0.0063 0.0042 -0.0191 -0.0172 0.0128 0.0259 0.0128 -0.0172 -0.0191 0.0024 0.0068 -0.0001 -0.0191 -0.0251 -0.0213 -0.0251 -0.0191 -0.0001 0.0005 0.0031 0.0068 0.0042 -0.0074 -0.0147 -0.0074 0.0042 0.0068 0.0001 0.0005 0.0024 0.0063 0.0110 0.0132 0.0110 0.0063 0.0024 Columns 10 through 11 0.0005 0.0001 0.0031 0.0005 0.0068 0.0024 0.0042 0.0063 -0.0074 0.0110 -0.0147 0.0132 -0.0074 0.0110 0.0042 0.0063 0.0068 0.0024 0.0031 0.0005 0.0005 0.0001

View the frequency response of the filters.

```
[H,w] = freqz(b,1,64,'whole');
colormap(jet(64))
plot(w/pi-1,fftshift(abs(H)))
figure, freqz2(h,[32 32])
```

**One-Dimensional Frequency Response**

**Corresponding Two-Dimensional Frequency Response**

The frequency sampling method creates a filter based on a desired frequency response. Given a matrix of points that define the shape of the frequency response, this method creates a filter whose frequency response passes through those points. Frequency sampling places no constraints on the behavior of the frequency response between the given points; usually, the response ripples in these areas. (Ripples are oscillations around a constant value. The frequency response of a practical filter often has ripples where the frequency response of an ideal filter is flat.)

The toolbox function `fsamp2`

implements frequency sampling design for
two-dimensional FIR filters. `fsamp2`

returns a filter `h`

with a frequency response that passes through the points in the input matrix
`Hd`

. The example below creates an 11-by-11 filter using
`fsamp2`

and plots the frequency response of the resulting filter. (The
`freqz2`

function in this example calculates the two-dimensional
frequency response of a filter. See Computing the Frequency Response of a Filter for more information.)

Hd = zeros(11,11); Hd(4:8,4:8) = 1; [f1,f2] = freqspace(11,'meshgrid'); mesh(f1,f2,Hd), axis([-1 1 -1 1 0 1.2]), colormap(jet(64)) h = fsamp2(Hd); figure, freqz2(h,[32 32]), axis([-1 1 -1 1 0 1.2])

**Desired Two-Dimensional Frequency Response (left) and Actual
Two-Dimensional Frequency Response (right)**

Notice the ripples in the actual frequency response, compared to the desired frequency response. These ripples are a fundamental problem with the frequency sampling design method. They occur wherever there are sharp transitions in the desired response.

You can reduce the spatial extent of the ripples by using a larger filter. However, a larger filter does not reduce the height of the ripples, and requires more computation time for filtering. To achieve a smoother approximation to the desired frequency response, consider using the frequency transformation method or the windowing method.

The windowing method involves multiplying the ideal impulse response with a window function to generate a corresponding filter, which tapers the ideal impulse response. Like the frequency sampling method, the windowing method produces a filter whose frequency response approximates a desired frequency response. The windowing method, however, tends to produce better results than the frequency sampling method.

The toolbox provides two functions for window-based filter design,
`fwind1`

and `fwind2`

. `fwind1`

designs
a two-dimensional filter by using a two-dimensional window that it creates from one or two
one-dimensional windows that you specify. `fwind2`

designs a
two-dimensional filter by using a specified two-dimensional window directly.

`fwind1`

supports two different methods for making the two-dimensional
windows it uses:

Transforming a single one-dimensional window to create a two-dimensional window that is nearly circularly symmetric, by using a process similar to rotation

Creating a rectangular, separable window from two one-dimensional windows, by computing their outer product

The example below uses `fwind1`

to create an 11-by-11 filter from the
desired frequency response `Hd`

. The example uses the Signal Processing
Toolbox `hamming`

function to create a one-dimensional window, which
`fwind1`

then extends to a two-dimensional window.

Hd = zeros(11,11); Hd(4:8,4:8) = 1; [f1,f2] = freqspace(11,'meshgrid'); mesh(f1,f2,Hd), axis([-1 1 -1 1 0 1.2]), colormap(jet(64)) h = fwind1(Hd,hamming(11)); figure, freqz2(h,[32 32]), axis([-1 1 -1 1 0 1.2])

**Desired Two-Dimensional Frequency Response (left) and Actual
Two-Dimensional Frequency Response (right)**

The filter design functions `fsamp2`

,
`fwind1`

, and `fwind2`

all create filters based on a
desired frequency response magnitude matrix. Frequency response is a mathematical function
describing the gain of a filter in response to different input frequencies.

You can create an appropriate desired frequency response matrix using the
`freqspace`

function. `freqspace`

returns correct,
evenly spaced frequency values for any size response. If you create a desired frequency
response matrix using frequency points other than those returned by
`freqspace`

, you might get unexpected results, such as nonlinear
phase.

For example, to create a circular ideal lowpass frequency response with cutoff at 0.5, use

[f1,f2] = freqspace(25,'meshgrid'); Hd = zeros(25,25); d = sqrt(f1.^2 + f2.^2) < 0.5; Hd(d) = 1; mesh(f1,f2,Hd)

**Ideal Circular Lowpass Frequency Response**

Note that for this frequency response, the filters produced by
`fsamp2`

, `fwind1`

, and `fwind2`

are
real. This result is desirable for most image processing applications. To achieve this in
general, the desired frequency response should be symmetric about the frequency origin
(`f1`

`=`

`0`

, `f2`

`=`

`0`

).

The `freqz2`

function computes the frequency response for a
two-dimensional filter. With no output arguments, `freqz2`

creates a mesh
plot of the frequency response. For example, consider this FIR filter,

h =[0.1667 0.6667 0.1667 0.6667 -3.3333 0.6667 0.1667 0.6667 0.1667];

This command computes and displays the 64-by-64 point frequency response of
`h`

.

freqz2(h)

**Frequency Response of a Two-Dimensional Filter**

To obtain the frequency response matrix `H`

and the frequency point
vectors `f1`

and `f2`

, use output arguments

[H,f1,f2] = freqz2(h);

`freqz2`

normalizes the frequencies `f1`

and
`f2`

so that the value 1.0 corresponds to half the sampling frequency, or
π radians.

For a simple `m`

-by-`n`

response, as shown above,
`freqz2`

uses the two-dimensional fast Fourier transform function
`fft2`

. You can also specify vectors of arbitrary frequency points, but
in this case `freqz2`

uses a slower algorithm.

See Fourier Transform for more information about the fast Fourier transform and its application to linear filtering and filter design.

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