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Published byDustin Roberts Modified over 9 years ago
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1 An Implementation Sanun Srisuk 42973003 of EdgeFlow
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2 Outline Problem Statement Theory & Algorithm Results Conclusion
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3 Problem Statement Segmentation using small scaleSegmentation using large scale
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4 Theory & Algorithm is a pixel in an image. is an edge energy at location s along the orientation theta. is the probability of finding an image boundary in the direction theta from s. is the probability of finding an image boundary in the direction theta+pi from s.
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5 Gaussian Function
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6 3-D GD mask
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7 GD mask in different theta
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8 3-D DOOG mask
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9 DOOG mask in different theta
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10 Intensity Edges The edge energy E(s, theta) at scale sigma is defined to be the magnitude of the gradient of the smoothed image, which is obtained by smoothing the original image I(x,y) with a Gaussian kernel
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11 Intensity Edges P(s, theta) is the probability of finding an image boundary in the direction theta from s.
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12 Conventional Edge Detection & EdgeFlow
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13 Edge Flow Vector where is a complex number with its magnitude representing the resulting edge energy and angle representing the flow direction.
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14 Results red greenblue intensity
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15 Intensity & Texture EdgeFlow
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16 Total EdgeFlow
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17 Segmentation Results
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18 Segmentation Results
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19 EdgeFlow
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20 EdgeFlow
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21 EdgeFlow Results
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22 EdgeFlow Results
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23 EdgeFlow Results
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24 EdgeFlow Results
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25 Segmentation results in different theta
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26 Segmentation results in different theta
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27 Conclusion EdgeFlow using a predictive coding model to identify and integrate the direction of change in image attributes such as color, texture, and phase discontinuities, at each image location.
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28 The End.
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