[1. Amir, A., M. Lindenbaum. A Generic Grouping Algorithm and Its Quantitative Analysis. - IEEE Trans. Pattern Anal, Vol. 20, 1998, No 2, 168-185.10.1109/34.659934]Search in Google Scholar
[2. Wertheimer, M. Laws of Organization in Perceptual Forms. - In: A Source Book of Gestalt Psychology, 1938, 71-88.10.1037/11496-005]Search in Google Scholar
[3. Ullman, S., A. Shashua. Structural Saliency: The Detection of Globally Salient Structures Using Locally Connected Networks. - In: Proc. ICCV-88, 1988, 321-332.]Search in Google Scholar
[4. Gutfinger, D., J. Sklansky. Robust Classifiers by Mixed Adaptation. - Pattern Analysis and Machine Intelligence, Vol. 13, 1991, 552-566.10.1109/34.87342]Search in Google Scholar
[5. Guy, G., G. Medioni. Perceptual Grouping Using Global Saliency-Enhancing Operators. - In: Proc. International Conference on Pattern Recognition, IEEE, Vol. 1, 1992, 99-103.]Search in Google Scholar
[6. Montesinos, P., L. Alquier. Perceptual Organization of Thin Networks with Active Contour Functions Applied to Medical and Aerial Images. - In: Proc. Vienna International Conf. on Pattern Recognition, IEEE, 1996, 647-651.10.1109/ICPR.1996.546104]Search in Google Scholar
[7. Shashua, A., S. Ullman. Grouping Contours by Iterated Pairing Network. - In: Advances in Neural Information Processing Systems, Vol. 3, 1990, 335-341.]Search in Google Scholar
[8. Parent, P., S. W. Zucker. Trace Interface, Curvature Consistency, and Curve Detection. - In: Pattern Analysis and Machine Intelligence, Vol. 11, 1989, 823-839.10.1109/34.31445]Search in Google Scholar
[9. Clemens, D. T. Region-Based Feature Interpretation for Recognizing 3D Models in 2D Images. -Ph. Dissertation, MIT, 1991.]Search in Google Scholar
[10. Leung, T., J. Malik. Detecting, Localizing and Grouping Repeated Scene Elements from an Image. - In: Computer Vision-ECCV, Vol. 1, 1996, 546-555.10.1007/BFb0015565]Search in Google Scholar
[11. Macke, J. H., N. Maack, R. Gupta, W. Denk, B. Scholkopf, A. Borst. Contour- Propagation Algorithms for Semi-Automated Reconstruction of Neural Processes. - Journal of Neuroscience Methods, Vol. 167, 2008, No 2, 349-357.10.1016/j.jneumeth.2007.07.02117870180]Search in Google Scholar
[12. Grossberg, S., E. Mingolla. Neural Dynamics of Perceptual Grouping: Textures, Boundaries, and Emergent Segmentations. - Attention, Perception, & Psychophysics, Vol. 38, 1985, No 2, 141-171.10.3758/BF03198851]Search in Google Scholar
[13. Beck, J. Effect of Orientation and of Shape Similarity on Perceptual Grouping. - Attention, Perception, & Psychophysics, Vol. 1, 1966, No 5, 300-302.10.3758/BF03207395]Search in Google Scholar
[14. Kaynig, V., T. Fuchs, J. M. Buhmann. Neuron Geometry Extraction by Perceptual Grouping in Sstem Images. - In: IEEE Conference on Computer Vision and Pattern Recognition (CVPR), IEEE, 2010, 2902-2909.10.1109/CVPR.2010.5540029]Search in Google Scholar
[15. Luo, J., C. Guo. Perceptual Grouping of Segmented Regions In Color Images. - Pattern Recognition, Vol. 36, 2003, No 12, 2781-2792.10.1016/S0031-3203(03)00170-5]Search in Google Scholar
[16. Martinez-Uso, A., F. Pla, P. Garcia-Sevilla. Unsupervised Color Image Segmentation by Low-Level Perceptual Grouping. - Pattern Analysis & Applications, 2011, 1-14.10.1007/s10044-011-0259-1]Search in Google Scholar
[17. Qi, Y., X. Yang. An Effective and Efficient Perceptual Organization Method for Image Segmentation. - In: Advances in Automation and Robotics. Springer, 2012, 623-630.10.1007/978-3-642-25553-3_77]Search in Google Scholar
[18. Elder, J., S. Zucker. Computing Contour Closure. - In: ECCV-96, Springer, Cambridge, 1996, 399-412.10.1007/BFb0015553]Search in Google Scholar
[19. Cox, I. J., S. B. Rao, Y. Zhong. “Ratio Regions”: A Technique for Image Segmentation. - In: ICPR-96, IEEE, Vienna, 1996, 557-564.]Search in Google Scholar
[20. Boykov, Y., O. Veksler, R. Zabih. Normalized Cuts and Image Segmentation. - In: IEEE Trans. on Pattern Analysis and Machine Intelligence, Vol. 22, 2000, No 11, 888-905.10.1109/34.868688]Search in Google Scholar
[21. Kwatra, V., A. Schodl, I. Essa, G. Turk, A. Bobick. Graphcut Textures: Image and Video Synthesis Using Graph Cuts. - ACM Trans. on Graphics, Vol. 22, 2003, No 3, 277-286.10.1145/882262.882264]Search in Google Scholar
[22. Nowlan, S. J., J. C. Platt. A Convolutional Neural Network Hand Tracker. - Advances in Neural Information Processing Systems, Vol. 7, 1995, 901-908.]Search in Google Scholar
[23. Garcia, C., M. Delakis. Convolutional Face Finder. A Neural Architecture for Fast and Robust Face Detection. - In: IEEE Trans. Pattern Anal., IEEE, Vol. 26, 2004, No 11, 1408-1423.10.1109/TPAMI.2004.9715521490]Search in Google Scholar
[24. Lawrence, S., C. L. Giles, A. C. Tsoi, A. D. Back. Face Recognition: A Convolutional Neural-Network Approach. - In: IEEE Trans. Neural Networks, Vol. 8, 1997, No 1, 98-113.]Search in Google Scholar
[25. Waibel, A., T. Hanazawa, G. Hinton, K. Shikano, K. J. Lang. Phoneme Recognition Using Time-Delay Neural Networks. - In: IEEE Trans. Speech and Signal Processing, Vol. 37, 1989, No 3, 328-339.10.1109/29.21701]Search in Google Scholar
[26. Le Cun, Y., L. Bottou, Y. Bengio, P. Haffner. Gradient-Based Learning Applied to Document Recognition. - In: Proc. IEEE, Vol. 86, 1998, No 11, 2278-2324.10.1109/5.726791]Search in Google Scholar
[27. Jain, V., J. F. Murray, F. Roth, S. Turaga, V. Zhigulin, K. L. Briggman, M. N. Helmstaedter, W. Denk, H. S. Seung. Supervised Learning of Image Restoration with Convolutional Networks. - In: ICCV’2007, IEEE, 2007, 1-8.10.1109/ICCV.2007.4408909]Search in Google Scholar
[28. Turaga, S. C., J. F. Murray, V. Jain, F. Roth, M. Helmstaedter, K. Brigg man, W. Denk, H. S. Seung. Convolutional Networks Can Learn to Generate Affinity Graphs for Image Segmentation. - Neural Computation, Vol. 22, 2010, No 2, 511-538.10.1162/neco.2009.10-08-88119922289]Search in Google Scholar
[29. Cardona, A., S. Saalfeld, S. Preibisch, B. Schmid, A. Cheng, J. Pulokas, P. Tomancak, V. Hartenstein. An Integrated Micro and Macroarchitectural Analysis of the Drosophila Brain by Computer-Assisted Serial Section Electron Microscopy. - PloS Biol, Vol. 8, 2010, No 10, e1000502.10.1371/journal.pbio.1000502295012420957184]Search in Google Scholar
[30. Cardona, A. TrakEM2: An ImageJ-Based Program for Morphological Data Mining and 3d Modeling. - In: Proc. Imagej User and Developer Conference, 2006.]Search in Google Scholar