[1. Chris, O., W. Ben. Derivation of Spatiotemporal Data for Cyclists (from Video) to Enable Agent-Based Model Calibration. – Procedia Computer Science, Vol. 52, 2015, pp. 932-937.10.1016/j.procs.2015.05.168]Search in Google Scholar
[2. Syamsul, H., T. Oiwa, T. Tanaka, J. Asama. Calibration Error Improvement Based on Ultrasonic Oscillation for a Linear Motion Rolling Bearing During Sinusoidal Motion. – Precision Engineering, Vol. 38, 2014, No 3, pp. 617-627.10.1016/j.precisioneng.2014.02.012]Search in Google Scholar
[3. Ito, M. A Three-Level Checkboard Pattern (PCT) Projection Method for Curved Surface Measurement. – Pattern Recognition, Vol. 28, 1995, No 1, pp. 27-40.10.1016/0031-3203(94)E0047-O]Search in Google Scholar
[4. Wu, Y. L., X. B. Zhang. Dynamic Arm Three Dimensional Posture Recognition Based on Device and Simulation. – Computer Simulation, Vol. 7, 2016, pp. 367-387.]Search in Google Scholar
[5. Yu, H. Y., X. B. Zhi, J. L. Fan. Image Segmentation Based on Weak Fuzzy Partition Entropy. – Neurocomputing, Vol. 168, 2016, pp. 994-1010.10.1016/j.neucom.2015.05.025]Search in Google Scholar
[6. Ji, R. G., L. J. Cao, Y. Wang. Joint Depth and Semantic Inference from a Single Image via Elastic Conditional Random Field. – Pattern Recognition, Vol. 59, 2016, pp. 268-281.10.1016/j.patcog.2016.03.016]Search in Google Scholar
[7. Pablo, M., I. Óscar, C. Óscar, C. Stefano. A Survey on Image Segmentation Using Metaheuristic-Based Deformable Models: State of the Art and Critical Analysis. – Applied Soft Computing, Vol. 44, 2016, pp. 1-29.10.1016/j.asoc.2016.03.004]Search in Google Scholar
[8. Wang, J., Y. H. Wang, M. Jiang, X. Y. Yan, M. M. Song. Moving Cast Shadow Detection Using Online Sub-Scene Shadow Modelling and Object Inner-Edges Analysis. – Journal of Visual Communication and Image Representation, Vol. 25, 2014, No 5, pp. 978-993.10.1016/j.jvcir.2014.02.015]Search in Google Scholar
[9. Benlamri, R. Curved Shapes Construction for Object Recognition. – IEEE Theory and Applications, Vol. 10, 2002, No 3, pp. 167-172.]Search in Google Scholar
[10. Egorov, A. V., M. C. Hansen, D. P. Roy, A. Kommareddy, P. V. Potapov. Image Interpretation-Guided Supervised Classification Using Nested Segmentation. – Remote Sensing of Environment, Vol. 165, 2015, pp. 135-147.10.1016/j.rse.2015.04.022]Search in Google Scholar
[11. Gotardo, P., O. Bellon. Range Image Segmentation into Planar and Quadric Surfaces Using an Improved Robust Estimator and Genetic Algorithm. – IEEE Transactions on System, Man, Cybernetics B, Vol. 34, 2004, No 6, pp. 2303-2316.10.1109/TSMCB.2004.83508215619931]Search in Google Scholar
[12. Angel, D. S. Surface Model Generation from Range Images of Industrial Environments. – In: Proc. of 2nd International Symposium on 3DPVT, Barcelona, Spain, 2004, pp. 868-871.]Search in Google Scholar
[13. Qian, C., F. T. Li, G. H. Ge. Feature Extraction from Range Images in 3D Modelling of Urban Scenes. – In: Proc. of International Conference on RISSP, Changsha, China, 2003, pp. 909-915.]Search in Google Scholar
[14. Mirante, E., M. Georgiev, A. Gotchev. A Fast Image Segmentation Algorithm Using Color and Depth Map. – In: 3DTV Conference: The True Vision – Capture, Transmission and Display of 3D Video (3DTV-CON), 2011, pp. 1-4.10.1109/3DTV.2011.5877227]Search in Google Scholar
[15. Wang, H., J. Oliensis. Shape Matching by Segmentation Averaging. – IEEE Transactions on Pattern Analysis and Machine Intelligence, Vol. 32, 2010, No 4, pp. 619-635.10.1109/TPAMI.2009.19920224119]Search in Google Scholar
[16. Paris, S., F. Durand. A Topological Approach to Hierarchical Segmentation Using Mean Shift. – In: IEEE Computer Society Conference on Computer Vision and Pattern Recognition (CVPR’07), Minneapolis, MN, 2007.10.1109/CVPR.2007.383228]Search in Google Scholar
[17. Ma, Y., H. Derksen, W. Hong. J. Wright. Segmentation of Multivariate Mixed Data via Lossy Data Coding and Compression. – IEEE Transactions on Pattern Analysis and Machine Intelligence, Vol. 29, 2007, No 9, pp. 1546-1562.10.1109/TPAMI.2007.108517627043]Search in Google Scholar
[18. Fischler, M. A., R. C. Bolles. Random Sample Consensus: A Paradigm for Model Fitting with Applications to Image Analysis and Automated Cartography. – Communications of the ACM, Vol. 24, 1981, No 6, pp. 381-395.10.1145/358669.358692]Search in Google Scholar
[19. Abhishek, A., S. K. Hema, J. Thorsten, S. Ashutosh. Contextually Guided Semantic Labelling and Search for 3D Point Clouds. – International Journal of Robotics Research January, Vol. 32, 2013, No 1, pp. 19-34.10.1177/0278364912461538]Search in Google Scholar
[20. Deng, Z. H., T. T. Li, T. T. Zhang. An Adaptive Tracking Algorithm Based on Mean Shift. – Advanced Materials Research, Vol. 538, 2012, pp. 2607-2613.10.4028/www.scientific.net/AMR.538-541.2607]Search in Google Scholar
[21. Li, Z., D. J. Mu, T. F. Zhang, X. L. Huang, M. Y. Fu. Design of Moving Target Detection and Tracking System Based on Cortex-A7 and Open CV. – In: Proc. of 2nd International Conference on Computational Intelligence, Communication and Signal Processing, South Korea, 2016, pp. 16-20.]Search in Google Scholar
[22. Li, Z., H. X. Zhang, D. J. Mu, L. T. Guo. Random Time Delay Effect on Out-Of-Sequence Measurements. – In IEEE ACCESS Analysis and Synthesis of Large-Scale Systems, 2016 (In Press). DOI 10.1109/ACCESS.2016.2610098.10.1109/ACCESS.2016.2610098]Search in Google Scholar