1 Image filtering Images by Pawan SinhaPawan Sinha.

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Presentation transcript:

1 Image filtering Images by Pawan SinhaPawan Sinha

2 What is an image? We can think of an image as a function, f, from R 2 to R:  f( x, y ) gives the intensity at position ( x, y )  Realistically, we expect the image only to be defined over a rectangle, with a finite range: f: [a,b] x [c,d]  [0,1] A color image is just three functions pasted together. We can write this as a “vector-valued” function:

3 Images as functions “intensity surface” z=f(x,y)

4 What is a digital image? In computer vision we usually operate on digital (discrete) images:  Sample the 2D space on a regular grid  Quantize each sample (round to nearest integer) If our samples are  apart, we can write this as: f[i,j] = Quantize{ f(i , j  ) } The image can now be represented as a matrix of integer values

5 Filtering Operations Use Masks Masks operate on a neighborhood of pixels. A mask of coefficients is centered on a pixel. The mask coefficients are multiplied by the pixel values in its neighborhood and the products are summed. The result goes into the corresponding pixel position in the output image /9 1/9 1/9 ** ** ** ** ** ** 39 ** ** ** ** ** ** ** ** Input Image 3x3 Mask Output Image

6 Noise Image processing is useful for noise reduction... Common types of noise:  Salt and pepper noise: contains random occurrences of black and white pixels  Impulse noise: contains random occurrences of white pixels  Gaussian noise: variations in intensity drawn from a Gaussian normal distribution

7 Practical noise reduction How can we “smooth” away noise in a single image?

8 Mean filtering

9 Mean filtering

Effect of mean filters

11 Cross-correlation filtering Let’s write this down as an equation. Assume the averaging window is (2k+1)x(2k+1): We can generalize this idea by allowing different weights for different neighboring pixels: This is called a cross-correlation operation and written: H is called the “filter,” “kernel,” or “mask.” The above allows negative filter indices. When you implement need to use: H[u+k,v+k] instead of H[u,v]

12 Mean kernel What’s the kernel for a 3x3 mean filter?

13 Gaussian Filtering A Gaussian kernel gives less weight to pixels further from the center of the window This kernel is an approximation of a Gaussian function:

14 Mean vs. Gaussian filtering

15 Convolution A convolution operation is a cross-correlation where the filter is flipped both horizontally and vertically before being applied to the image: It is written: Suppose H is a Gaussian or mean kernel. How does convolution differ from cross-correlation?

16 Median filters A Median Filter operates over a window by selecting the median intensity in the window. What advantage does a median filter have over a mean filter? Is a median filter a kind of convolution?

17 Comparison: salt and pepper noise

18 Comparison: Gaussian noise