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CS558 C OMPUTER V ISION Lecture IV: Image Filter and Edge Detection Slides adapted from S. Lazebnik
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R ECAP OF L ECTURE III Light and Shade Radiance and irradiance Radiometry of thin lens Bidirectional reflectance distribution function (BRDF) Photometric stereo Color What is color? Human eyes Trichromacy and color space Color perception
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O UTLINE Image filter and convolution Convluation and linear filter Gaussian filter, box filter, and median filter Application: Hybrid images Edge detection Image derivatives Gaussian derivative filters Canny edge detector
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O UTLINE Image filter and convolution Convolution and linear filter Gaussian filter, box filter, and median filter Application: Hybrid images Edge detection Image derivatives Gaussian derivative filters Canny edge detector
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M OTIVATION : I MAGE DENOISING How can we reduce noise in a photograph?
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M OVING AVERAGE Let’s replace each pixel with a weighted average of its neighborhood The weights are called the filter kernel What are the weights for the average of a 3x3 neighborhood? 111 111 111 “box filter” Source: D. Lowe
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O UTLINE Image filter and convolution Convolution and linear filter Gaussian filter, box filter, and median filter Application: Hybrid images Edge detection Image derivatives Gaussian derivative filters Canny edge detector
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D EFINING CONVOLUTION Let f be the image and g be the kernel. The output of convolving f with g is denoted f * g. f Source: F. Durand MATLAB functions: conv2, filter2, imfilter
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K EY PROPERTIES Linearity: filter( f 1 + f 2 ) = filter( f 1 ) + filter( f 2 ) Shift invariance: same behavior regardless of pixel location: filter(shift( f )) = shift(filter( f )) Theoretical result: any linear shift-invariant operator can be represented as a convolution
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P ROPERTIES IN MORE DETAIL Commutative: a * b = b * a Conceptually no difference between filter and signal Associative: a * ( b * c ) = ( a * b ) * c Often apply several filters one after another: ((( a * b 1 ) * b 2 ) * b 3 ) This is equivalent to applying one filter: a * ( b 1 * b 2 * b 3 ) Distributes over addition: a * ( b + c ) = ( a * b ) + ( a * c ) Scalars factor out: ka * b = a * kb = k ( a * b ) Identity: unit impulse e = […, 0, 0, 1, 0, 0, …], a * e = a
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A NNOYING DETAILS What is the size of the output? MATLAB: filter2(g, f, shape ) shape = ‘full’: output size is sum of sizes of f and g shape = ‘same’: output size is same as f shape = ‘valid’: output size is difference of sizes of f and g f gg gg f gg g g f gg gg full samevalid
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A NNOYING DETAILS What about near the edge? the filter window falls off the edge of the image need to extrapolate methods: clip filter (black) wrap around copy edge reflect across edge Source: S. Marschner
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A NNOYING DETAILS What about near the edge? the filter window falls off the edge of the image need to extrapolate methods (MATLAB): clip filter (black): imfilter(f, g, 0) wrap around:imfilter(f, g, ‘circular’) copy edge: imfilter(f, g, ‘replicate’) reflect across edge: imfilter(f, g, ‘symmetric’) Source: S. Marschner
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P RACTICE WITH LINEAR FILTERS 000 010 000 Original ? Source: D. Lowe
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P RACTICE WITH LINEAR FILTERS 000 010 000 Original Filtered (no change) Source: D. Lowe
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P RACTICE WITH LINEAR FILTERS 000 100 000 Original ? Source: D. Lowe
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P RACTICE WITH LINEAR FILTERS 000 100 000 Original Shifted left By 1 pixel Source: D. Lowe
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P RACTICE WITH LINEAR FILTERS Original ? 111 111 111 Source: D. Lowe
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P RACTICE WITH LINEAR FILTERS Original 111 111 111 Blur (with a box filter) Source: D. Lowe
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P RACTICE WITH LINEAR FILTERS Original 111 111 111 000 020 000 - ? (Note that filter sums to 1) Source: D. Lowe
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P RACTICE WITH LINEAR FILTERS Original 111 111 111 000 020 000 - Sharpening filter - Accentuates differences with local average Source: D. Lowe
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S HARPENING Source: D. Lowe
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S HARPENING What does blurring take away? original smoothed (5x5) – detail = sharpened = Let’s add it back: originaldetail +
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S MOOTHING WITH BOX FILTER REVISITED What’s wrong with this picture? What’s the solution? Source: D. Forsyth
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S MOOTHING WITH BOX FILTER REVISITED What’s wrong with this picture? What’s the solution? To eliminate edge effects, weight contribution of neighborhood pixels according to their closeness to the center “fuzzy blob”
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O UTLINE Image filter and convolution Convluation and linear filter Gaussian filter, box filter, and median filter Application: Hybrid images Edge detection Image derivatives Gaussian derivative filters Canny edge detector
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G AUSSIAN K ERNEL Constant factor at front makes volume sum to 1 (can be ignored when computing the filter values, as we should renormalize weights to sum to 1 in any case) 0.003 0.013 0.022 0.013 0.003 0.013 0.059 0.097 0.059 0.013 0.022 0.097 0.159 0.097 0.022 0.013 0.059 0.097 0.059 0.013 0.003 0.013 0.022 0.013 0.003 5 x 5, = 1 Source: C. Rasmussen
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G AUSSIAN K ERNEL Standard deviation : determines extent of smoothing Source: K. Grauman σ = 2 with 30 x 30 kernel σ = 5 with 30 x 30 kernel
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C HOOSING KERNEL WIDTH The Gaussian function has infinite support, but discrete filters use finite kernels Source: K. Grauman
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C HOOSING KERNEL WIDTH Rule of thumb: set filter half-width to about 3 σ
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G AUSSIAN VS. BOX FILTERING
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G AUSSIAN FILTERS Remove “high-frequency” components from the image (low-pass filter) Convolution with self is another Gaussian So can smooth with small- kernel, repeat, and get same result as larger- kernel would have Convolving two times with Gaussian kernel with std. dev. σ is same as convolving once with kernel with std. dev. Separable kernel Factors into product of two 1D Gaussians Source: K. Grauman
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S EPARABILITY OF THE G AUSSIAN FILTER Source: D. Lowe
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S EPARABILITY EXAMPLE * * = = 2D convolution (center location only) Source: K. Grauman The filter factors into a product of 1D filters: Perform convolution along rows: Followed by convolution along the remaining column:
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W HY IS SEPARABILITY USEFUL ? What is the complexity of filtering an n × n image with an m × m kernel? O(n 2 m 2 ) What if the kernel is separable? O(n 2 m)
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N OISE 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 Source: S. Seitz
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G AUSSIAN NOISE Mathematical model: sum of many independent factors Good for small standard deviations Assumption: independent, zero-mean noise Source: M. Hebert
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Smoothing with larger standard deviations suppresses noise, but also blurs the image R EDUCING G AUSSIAN NOISE
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R EDUCING SALT - AND - PEPPER NOISE What’s wrong with the results? 3x35x57x7
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A LTERNATIVE IDEA : M EDIAN FILTERING A median filter operates over a window by selecting the median intensity in the window Is median filtering linear? Source: K. Grauman
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M EDIAN FILTER What advantage does median filtering have over Gaussian filtering? Robustness to outliers Source: K. Grauman
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M EDIAN FILTER MATLAB: medfilt2(image, [h w]) Salt-and-pepper noise Median filtered Source: M. Hebert
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G AUSSIAN VS. MEDIAN FILTERING 3x35x57x7 Gaussian Median
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S HARPENING REVISITED Source: D. Lowe
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S HARPENING REVISITED What does blurring take away? original smoothed (5x5) – detail = sharpened = Let’s add it back: originaldetail + α
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U NSHARP MASK FILTER Gaussian unit impulse Laplacian of Gaussian image blurred image unit impulse (identity)
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O UTLINE Image filter and convolution Convolution and linear filter Gaussian filter, box filter, and median filter Application: Hybrid images Edge detection Image derivatives Gaussian derivative filters Canny edge detector
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A PPLICATION : H YBRID I MAGES A. Oliva, A. Torralba, P.G. Schyns, “Hybrid Images,” SIGGRAPH 2006 “Hybrid Images,”
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A PPLICATION : H YBRID I MAGES A. Oliva, A. Torralba, P.G. Schyns, “Hybrid Images,” SIGGRAPH 2006 “Hybrid Images,” Gaussian Filter Laplacian Filter
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O UTLINE Image filter and convolution Convoluation and linear filter Gaussian filter, box filter, and median filter Application: Hybrid images Edge detection Image derivatives Gaussian derivative filters Canny edge detector
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E DGE DETECTION Goal: Identify sudden changes (discontinuities) in an image Intuitively, most semantic and shape information from the image can be encoded in the edges More compact than pixels Ideal: artist’s line drawing (but artist is also using object-level knowledge) Source: D. Lowe
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O RIGIN OF EDGES Edges are caused by a variety of factors: depth discontinuity surface color discontinuity illumination discontinuity surface normal discontinuity Source: Steve Seitz
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C HARACTERIZING EDGES An edge is a place of rapid change in the image intensity function image intensity function (along horizontal scanline) first derivative edges correspond to extrema of derivative
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O UTLINE Image filter and convolution Convoluation and linear filter Gaussian filter, box filter, and median filter Application: Hybrid images Edge detection Image derivatives Gaussian derivative filters Canny edge detector
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D ERIVATIVES WITH CONVOLUTION For 2D function f(x,y), the partial derivative is: For discrete data, we can approximate using finite differences: To implement above as convolution, what would be the associated filter? Source: K. Grauman
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P ARTIAL DERIVATIVES OF AN IMAGE Which shows changes with respect to x? -1 1 1 -1 or -1 1
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F INITE DIFFERENCE FILTERS Other approximations of derivative filters exist: Source: K. Grauman
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The gradient points in the direction of most rapid increase in intensity I MAGE GRADIENT The gradient of an image: The gradient direction is given by Source: Steve Seitz The edge strength is given by the gradient magnitude How does this direction relate to the direction of the edge?
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O UTLINE Image filter and convolution Convolution and linear filter Gaussian filter, box filter, and median filter Application: Hybrid images Edge detection Image derivatives Gaussian derivative filters Canny edge detector
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E FFECTS OF NOISE Consider a single row or column of the image Plotting intensity as a function of position gives a signal Where is the edge? Source: S. Seitz
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S OLUTION : SMOOTH FIRST To find edges, look for peaks in f g f * g Source: S. Seitz
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Differentiation is convolution, and convolution is associative: This saves us one operation: D ERIVATIVE THEOREM OF CONVOLUTION f Source: S. Seitz
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D ERIVATIVE OF G AUSSIAN FILTER Are these filters separable? x-direction y-direction
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D ERIVATIVE OF G AUSSIAN FILTER Which one finds horizontal/vertical edges? x-direction y-direction
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Smoothed derivative removes noise, but blurs edge. Also finds edges at different “scales” 1 pixel3 pixels7 pixels S CALE OF G AUSSIAN DERIVATIVE FILTER Source: D. Forsyth
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R EVIEW : S MOOTHING VS. DERIVATIVE FILTERS Smoothing filters Gaussian: remove “high-frequency” components; “low-pass” filter Can the values of a smoothing filter be negative? What should the values sum to? One: constant regions are not affected by the filter Derivative filters Derivatives of Gaussian Can the values of a derivative filter be negative? What should the values sum to? Zero: no response in constant regions High absolute value at points of high contrast
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O UTLINE Image filter and convolution Convolution and linear filter Gaussian filter, box filter, and median filter Application: Hybrid images Edge detection Image derivatives Gaussian derivative filters Canny edge detector
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T HE C ANNY EDGE DETECTOR original image The story of Lena Slide credit: Steve Seitz
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T HE C ANNY EDGE DETECTOR norm of the gradient
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T HE C ANNY EDGE DETECTOR thresholding
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T HE C ANNY EDGE DETECTOR thresholding How to turn these thick regions of the gradient into curves?
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N ON - MAXIMUM SUPPRESSION Check if pixel is local maximum along gradient direction, select single max across width of the edge requires checking interpolated pixels p and r
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T HE C ANNY EDGE DETECTOR thinning (non-maximum suppression) Problem: pixels along this edge didn’t survive the thresholding
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H YSTERESIS THRESHOLDING Use a high threshold to start edge curves, and a low threshold to continue them. Source: Steve Seitz
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H YSTERESIS THRESHOLDING original image high threshold (strong edges) low threshold (weak edges) hysteresis threshold Source: L. Fei-Fei
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R ECAP : C ANNY EDGE DETECTOR 1. Filter image with derivative of Gaussian 2. Find magnitude and orientation of gradient 3. Non-maximum suppression : Thin wide “ridges” down to single pixel width 4. Linking and thresholding ( hysteresis ): Define two thresholds: low and high Use the high threshold to start edge curves and the low threshold to continue them MATLAB: edge(image, ‘canny’); J. Canny, A Computational Approach To Edge Detection, IEEE Trans. Pattern Analysis and Machine Intelligence, 8:679-714, 1986.A Computational Approach To Edge Detection
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E DGE DETECTION IS JUST THE BEGINNING … Berkeley segmentation database: http://www.eecs.berkeley.edu/Research/Projects/CS/vision/grouping/segbench/ http://www.eecs.berkeley.edu/Research/Projects/CS/vision/grouping/segbench/ image human segmentation gradient magnitude
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BackgroundTexture Shadows Low-level edges vs. perceived contours Kristen Grauman, UT-Austin
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