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Published byPhilippa Lawrence Modified over 8 years ago
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1 M15338: Depth Map Estimation Software version 2 April, 27th 2008, Archamps Olgierd Stankiewicz Krzysztof Wegner team supervisor: Marek Domański Chair of Multimedia Telecommunications and Microelectronics Poznan University of Technology, Poland
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2 Outline Depth map quality measurement Ground-truth map View resynthesis View synthesis tool Depth map estimation tools Belief Propagation based estimation Accuracy refinement by mid-level hypothesis Summary
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3 Depth map quality Commonly used: ‘Bad-Pixels’ Miss information about error magnitude and energy Requires ground-truth disparity map
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4 Depth map quality NBP-SAD (Normalized Bad Pixel SAD) NBP-SSD (Normalized Bad Pixel SSD) Still, requires ground-truth disparity map
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5 Depth map quality measurement by view resynthesis End-user never sees depth-map Resynthesis No standarized method Tool employs straight-forward method PSNR (Peak Signal-to-Noise Ratio) of resynthesized view as quality measure
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6 Bad-Pixels vs PSNR
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7 View synthesis tool Simple and straight-forward For linearly positioned stereo pairs only Two disparity maps and corresponding reference views Weighting of pixels from side-views, translated according to their disparity
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8 View synthesis tool
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9 Belief Propagation based depth estimation tool Alternative for Hierarchical-Shape Adaptive Block Matching Employs message passing for optimization of disparity map hierarchical processing in layers Pixel differences (1-point SAD) used as observations
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10 Message passing in Belief Propagation
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11 Message in Belief Propagation Single message contains information about all possible disparities
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12 Hierarchical processing in Belief Propagation Higher resolution Lower resolution from the lowest resolution to the full resolution in coarse-to-fine manner
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13 Belief propagation V pq (x p,x q ) – transition cost in node q between disparity x p and x q insisted by nodeł p V p (x p ) – observation in node p about disparity x p (SAD value) m pq (x q ) – message from node p to q about disparity x q
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14 Belief propagation Pot model Simpleand computationally efficient. Stable beliefs are prefered
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15 Belief propagation results 1th iteration20 iterations300 iterations Middlebury test results – 1,65% of bad-pixels Best Middlebury algorithm – 0,88% of bad-pixels
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16 Bad-Pixels vs PSNR
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17 Accuracy refinement by mid-level hypothesis Low computational cost Improves accuracy of disparity map (number of disparity levels) Spatial resolution unchanged Focuses on unit-step edges in disparity map
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18 Unit-step edges
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19 Mid-level hypothesis Hypothesis spread along unit-step edges
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20 Refinement by mid-level hypothesis Pixel accurate disparity (1x)After refinement (8x)
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21 Works over untextured regions
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22 Results
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23 Summary New version of experimental Depth Estimation software Quality measurement problem with respect to multi-view applications Simple view resynthesis tool Belief Propagation depth estimation tool Novel technique for accuracy refinement
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