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Stereo Matching Information Permeability For Stereo Matching – Cevahir Cigla and A.Aydın Alatan – Signal Processing: Image Communication, 2013 Radiometric Invariant Stereo Matching Based On Relative Gradients – Xiaozhou Zhou and Pierre Boulanger – International Conference on Image Processing (ICIP), IEEE 2012 1
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Outline Introduction Related Works Methods Conclusion 2
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Introduction Goal – Get accurate disaprity maps effectively. – Find more robust algorithm, especially refinement technique. Foucus : Refinement step and Comparison 3
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Related Works Stereo Matching – The same object, the same disparity Segmentation Calculate correspond pixels similarity (color and geographic distance) – Occlusion handling Refinement 4
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Related Works Global Methods – Energy minimization process (GC,BP,DP,Cooperative) – Per-processing – Accurate but slow Local Methods – A local support region with winner take all – Fast but inaccurate. – Adaptive Support Weight 5
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Related Works Disparity Refinement Disparity Optimization Cost Aggregation Matching Cost Computation 6 Local methods algorithm [1] D. Scharstein and R. Szeliski. A taxonomy and evaluation of dense two-frame stereo correspondence algorithms. International Journal of Computer Vision (IJCV), 47:7–42, 2002.
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Edge Preserving filter : Remove noise and preserve structure/edge, like object consideration. Adaptive Support Weight [3] Bilateral filter(BF) [34] Guided filter(GF) [5] Geodesic diffusion [33] Arbitrary Support Region [39] Related Works 7
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Reference Papers [3] Kuk-JinYoon, InSoKweon, Adaptive support weight approach for correspondence search, IEEE Transactions on Pattern Analysis and Machine Intelligence, 2006. [5] C. Rhemann, A. Hosni, M. Bleyer, C. Rother, M. Gelautz, Fast cost-volume filtering for visual correspondence and beyond, CVPR 2011. [33] L. De-Maetzu, A. Villanueva nad, R. Cabeza, Near real-time stereo matching using geodesic diffusion, IEEE Transactions on Pattern Analysis and Machine Intelligence, 2012. [34] A. Ansar, A. Castano, L. Matthies, Enhanced real time stereo using bilateral filtering, in: Proceedings of the International Symposium on 3D Data Processing Visualization and Transmission, 2004. [39] X. Mei, X Sun, M Zhou, S. Jiao, H. Wang, Z. Zhang, On building an accurate stereo matching system on graphics hardware, in: Proceed- ings of GPUCV 2011. 8
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Information Permeability For Stereo Matching Method A. 9
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Methods A. Goal : Get high quality but low complexity Save memory Real-time application Successive Weighted Summation (SWS) – Constant time filtering + Weighted aggregation 10 ◎ Qingqing Yang, Dongxiao Li, Lianghao Wang, and Ming Zhang, “Full-Image Guided Filtering for Fast Stereo Matching”, Signal Processing Letters, IEEE March 2013 http://www.camdemy.com/media/7110
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Methods A. Cost Computation 11
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Census Transform 11000 11000 11X00 00011 11111 121130263139 109115334030 98102786745 476732170198 398699159210 110001100011000001111111 Census transform window :
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Census Hamming Distance Left image Right image Hamming Distance = 3 110001100011000001111111 111001100101000001111111 XOR 001000000110000000000000
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Methods A. Cost Computation 14
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Methods A. 15 Cost Aggregation
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Methods A. Cost Aggregation 16
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Methods A. 17 (b)Horizontal effective weights (c)Vertical effective weights(d)2D effective weights
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18 (a) AW [3] (b) Geodesic support [12] (c) Arbitrary support region [4] (d) Proposed Comparison With Other Methods
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Methods A. Refinement – Using cross-check to detect reliable and occluded region detection 19 ф is a constant (set to 0.1 throughout experiments)
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Methods A. 20 (a)Linear mapping function for reliable pixels based on disparities (b)The resultant map for the left image
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Disparity Variation 21 Before After 0 1.15 1 1.30 2 1.45 3 1.60 4 1.75 5 1.90 6 2.05 7 2.20 8 2.35 9 2.50 10 2.65 11 2.80 12 2.95 13 3.10 14 3.25 15 3.40 16 3.55 17 3.70 18 3.85 19 4 20 4.15 21 4.30 22 4.45 23 4.60 24 4.75 25 4.90 26 5.05 27 5.20 28 5.35 29 5.50 30 5.65 31 5.80 32 5.95 33 6.10 34 6.25 35 6.40 36 6.55 37 6.70 38 6.85 39 7 40 7.15 41 7.30 42 7.45 43 7.60 44 7.75 45 7.90 46 8.05 47 8.20 48 8.35 49 8.50 50 8.65 51 8.80 52 8.95 53 9.10 54 9.25 55 9.40 56 9.55 57 9.70 58 9.85 59 10
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22 (b) Without occlusion handling, bright regions correspond to small disparities (c) Detection of occluded and un-reliable regions
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Methods A. 23 (b) occlusion handling with no background favoring (c) the proposed occlusion handling
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Experimental Results A. 24
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Parameter of Method A. 26
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Experimental Results A. 28
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Experimental Results A. 29 6D + 4D * V.S. 129D + 21D * 10~15X
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Experimental Results A. 30 Proposed method is the fastest method without any special hardware implementation among Top-10 local methods of the Middlebury test bench, as of February 2013.
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31 Proposed O(1) AW Guided filter Geodesic support Arbitrary shaped cross filter
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Experimental Results A. 32
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Computational times A. 33
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Error Analysis A. 34
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Comparison with Full-Image ◎ Full-ImageProposed InitializationAD + GradientSAD + Census Aggregation Refinement1.Cross checking (lowest disparity) 2.Weighted median filter 1. Cross checking (normalized disparity) 2. Median filter (background handling) 35 ◎ Qingqing Yang, Dongxiao Li, Lianghao Wang, and Ming Zhang, “Full-Image Guided Filtering for Fast Stereo Matching”, Signal Processing Letters, IEEE
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Comparison with Full-Image 36
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37 Full-Image Results
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38 Full-Image Results Proposed Results Ground Truth
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Comparison with Full-Image My Experimental Results (SAD+Gradient) Lowest V.S. Normalized disparity 39
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Radiometric Invariant Stereo Matching Based On Relative Gradients Method B. 40
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Methods B. Goal : Adapt different environmental factors.(Illumination condition) Effective and robust algorithm Relative gradient algorithm + Gaussian weighted function 41
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Background Lighting Model : – View independent, body reflection 42
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Background Lighting Model : 43 ANCC
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Method B. Cost Computation – 44 (i,j)
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Method B. Cost Aggregation – Refinement – – Avoid White and black noises 45
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Experimental Results B. 46
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Experimental Results B. 48
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Experimental Results B. 49
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Experimental Results B. My Experimental Results (SAD+Gradient) Original V.S.Rerange disparity 50
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Experimental Results B. Using related gradient intialization 51
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Conclusion Initialization ADc/SADcADgC-CensusG-Census??? Aggregation Weighted-WindowPermeabilityCost-Filter Arbitrary Support Region ??? Refinement Lowest NeighborNormalizesRe-RangeScan-line??? 52
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