Semi-global matching (SGM) is essentially a discrete optimization for the disparity value of each pixel, under the assumption of disparity continuities. SGM overcomes the influence of the disparity discontinuities by a set of parameters. Using smaller parameters, the continuity constraint is weakened, which will cause significant noises in planar and textureless areas, reflected as the fluctuations on the final surface reconstruction. On the other hands, larger parameters will impose too much constraints on continuities, which may lead to losses of sharp features. To address this problem, this paper proposes an adaptive dense stereo matching methods for airborne images using with texture information. Firstly, the texture is quantified, and under the assumption that disparity variation is directly proportional to the texture information, the adaptive parameters are gauged accordingly. Second, SGM is adopted to optimize the discrete disparities using the adaptively tuned parameters. Experimental evaluations using the ISPRS benchmark dataset and images obtained by the SWDC-5 have revealed that the proposed method will significantly improve the visual qualities of the point clouds.
[1] LEBERL F,IRSCHARA A,POCK T, et al.Point Clouds:LiDAR Versus 3D Vision[J]. Photogrammetric Engineering & Remote Sensing, 2010, 76(10):1123-1134.
[2] HAALA N. The Landscape of Dense Image Matching Algorithms[C]//Photogrammetric Week 2013. Stuttgart, Germany:[s.n.], 2013.
[3] HIRSCHMULLER H.Stereo Processing by Semiglobal Matching and Mutual Information[J]. IEEE Transactions on Pattern Analysis and Machine Intelligence, 2008, 30(2):328-341.
[4] REMONDINO F, SPERA M G, NOCERINO E, et al. State of the Art in High Density Image Matching[J]. The Photogrammetric Record, 2014, 29(146):144-166.
[5] SCHARSTEIN D, SZELISKI R. A Taxonomy and Evaluation of Dense Two-frame Stereo Correspondence Algorithms[J]. International Journal of Computer Vision, 2002, 47(1-3):7-42.
[6] 王竞雪, 朱庆, 王伟玺. 多匹配基元集成的多视影像密集匹配方法[J]. 测绘学报, 2013, 42(5):691-698. WANG Jingxue, ZHU Qing, WANG Weixi. A Dense Matching Algorithm of Multi-view Image Based on the Integrated Multiple Matching Primitives[J]. Acta Geodaetica et Cartographica Sinica, 2013, 42(5):691-698.
[7] VU H H, LABATUT P, PONS J P,et al.High Accuracy and Visibility-consistent Dense Multiview Stereo[J]. IEEE Transactions on Pattern Analysis and Machine Intelligence, 2012, 34(5):889-901.
[8] 杨化超, 姚国标, 王永波. 基于SIFT的宽基线立体影像密集匹配[J]. 测绘学报, 2011, 40(5):537-543. YANG Huachao, YAO Guobiao, WANG Yongbo. Dense Matching for Wide Base-line Stereo Images Based on SIFT[J]. Acta Geodaetica et Cartographica Sinica, 2011, 40(5):537-543.
[9] HOSNI A, BlEYER M, GELAUTZ M. Secrets of Adaptive Support Weight Techniques for Local Stereo Matching[J]. Computer Vision and Image Understanding, 2013, 117(6):620-632.
[10] YANG Qingxiong. A Non-local Cost Aggregation Method for Stereo Matching[C]//Proceedings of the 2012 IEEE Conference on Computer Vision and Pattern Recognition. Providence, RI:IEEE, 2012:1402-1409.
[11] YANG Qingxiong. Stereo Matching Using Tree Filtering[J]. IEEE Transactions on Pattern Analysis and Machine Intelligence, 2015, 37(4):834-846.
[12] SUN Jian, SHUM H Y, ZHENG Nanning. Stereo Matching Using Belief Propagation[M]//HEYDEN A, SPARR G, NIELSEN M, et al. Computer Vision-ECCV 2002. Berlin:Springer, 2002:510-524.
[13] KOLMOGOROV V, ZABIH R. Computing Visual Correspondence with Occlusions Using Graph Cuts[D]. Ithaca:Cornell University, 2001.
[14] 郑肇葆. 数字影像匹配的动态规划方法[J]. 测绘学报, 1989, 18(2):100-107. ZHENG Zhaobao. Image Matching Method via Dynamic Programming[J]. Acta Geodaetica et Cartographica Sinica, 1989, 18(2):100-107.
[15] 张祖勋, 张剑清, 吴晓良. 跨接法概念之扩展及整体影象匹配[J]. 武汉测绘科技大学学报, 1991, 16(3):1-11. CHANG Zhuxun, CHANG Jianqing, WU Xiaoliang. Develeping of Bridging Mode and Global Image Matching[J]. Journal of Wuhan Technical University of Surveying and Mapping, 1991, 16(3):1-11.
[16] BIRCHFIELD S, TOMASI C. Depth Discontinuities by Pixel-to-pixel Stereo[J]. International Journal of Computer Vision, 1999, 35(3):269-293.
[17] BANZ C, BLUME H, PIRSCH P. Real-time Semi-global Matching Disparity Estimation on the GPU[C]//Proceedings of the IEEE International Conference on Computer Vision Workshops. Barcelona, Spain:IEEE, 2011:514-521.
[18] ALOBEID A, JACOBSEN K, HEIPKE C. Comparison of Matching Algorithms for DSM Generation in Urban Areas from IKONOS Imagery[J]. Photogrammetric Engineering & Remote Sensing, 2010, 76(9):1041-1050.
[19] CAVEGN S,HAALA N,NEBIKER S,et al.Benchmarking High Density Image Matching for Oblique Airborne Imagery[J]. International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, 2014, XL-3(3):45-52.
[20] ROTHERMEL M,WENZEL K,FRITSCH D,et al.SURE:Photogrammetric Surface Reconstruction from Imagery[C]//Proceedings of LC3D Workshop. Berlin:[s.n.], 2012.
[21] FUSIELLO A, TRUCCO E, VERRI A. A Compact Algorithm for Rectification of Stereo Pairs[J]. Machine Vision and Applications, 2000, 12(1):16-22.
[22] HIRSCHMULLER H, SCHARSTEIN D. Evaluation of Stereo Matching Costs on Images with Radiometric Differences[J]. IEEE Transactions on Pattern Analysis and Machine Intelligence, 2009, 31(9):1582-1599.
[23] HIRSCHMULLER H, BUDER M, Ernst I. Memory Efficient Semi-global Matching[C]//ISPRS Annals of Photogrammetry,Remote Sensing and Spatial Information Sciences.Melbourne,Australia:ISPRS,2012,I-3:371-376.
[24] HUMENBERGER M, ZINNER C, KUBINGER W. Performance Evaluation of a Census-based Stereo Matching Algorithm on Embedded and Multi-core Hardware[C]//Proceedings of 6th International Symposium on Image and Signal Processing and Analysis. Salzburg:IEEE, 2009:388-393.
[25] RANFTL R, GEHRIG S, POCK T, et al. Pushing the Limits of Stereo Using Variational Stereo Estimation[C]//Proceedings of 2012 IEEE Intelligent Vehicles Symposium. Alcala de Henares:IEEE, 2012:401-407.
[26] MEI Xing, SUN Xun, ZHOU Mingcai, et al. On Building an Accurate Stereo Matching System on Graphics Hardware[C]//Proceedings of the IEEE International Conference on Computer Vision Workshops. Barcelona, Spain:IEEE, 2011:467-474.
[27] MALIK J, BELONGIE S, LEUNG T, et al. Contour and Texture Analysis for Image Segmentation[J]. International Journal of Computer Vision, 2001, 43(1):7-27.
[28] ZHU Qing, WAN Neng, WU Bo. A Filtering Strategy for Interest Point Detecting to Improve Repeatability and Information Content[J]. Photogrammetric Engineering & Remote Sensing, 2007, 73(5):547-553.
[29] XUE Wufeng, ZHANG Lei, MOU Xuanqin, et al. Gradient Magnitude Similarity Deviation:A Highly Efficient Perceptual Image Quality Index[J]. IEEE Transactions on Image Processing, 2014, 23(2):684-695.
[30] SZELISKI R. Computer Vision:Algorithms and Applications[M]. London:Springer-Verlag, 2011:2601-2605.
[31] ROTTENSTEINER F, SOHN G, GERKE M, et al. Results of the ISPRS Benchmark on Urban Object Detection and 3D Building Reconstruction[J]. ISPRS Journal of Photogrammetry and Remote Sensing, 2014, 93:256-271.
[32] LAGUE D, BRODU N, LEROUX J. Accurate 3D Comparison of Complex Topography with Terrestrial Laser Scanner:Application to the RANGITIKEI Canyon (N-Z)[J]. ISPRS Journal of Photogrammetry and Remote Sensing, 2013, 82:10-26.
[33] CONTE G,TOMMESANI S, ZANICHELLI F. The Long and Winding Road to High-performance Image Processing with MMX/SSE[C]//Proceedings of the 5th IEEE International Workshop on Computer Architectures for Machine Perception. Padova:IEEE, 2000:302-310.