P. Dollar, L. Zitnick, “Fast Edge Detection using Structured Forests,” IEEE Trans. on Pattern Analysis and Machine Intelligence, Vol. 37, No. 8, pp.1558-1570, 2015.
J. Canny, “A Computational Approach to Edge Detection”, IEEE Trans. on Pattern Analysis and Machine Intelligence, Vol. PAMI-8, No. 6, pp.679-698, 1986.
Z. Qu, P. Wang, Y. Gao, P. Wang, and Z. Shen, “Frequency Domain Filtering of Gradient for Contour Detection,” Int. J. of Light and Electron Optics, Vol. 124, No. 13, pp. 1398-1401, 2013.
K.K. Jena, “Application of COM-SOBEL Operator for Edge Detection of Image,” Int. J. of Innovative Science, Engineering and Technology, Vol. 2, No. 4, pp.48-51, 2015.
B. Gardiner, S.A. Coleman, and B.S. Scotney, “Multiscale Edge Detection using a Finite Element Framework for Hexagonal Pixel-based Images,” J. of Image Processing, Vol.25, No.4, pp.1849-1861, 2016.
P. Melin, C.I. Gonzalez, J.R. Castro, O. Mendoza, and O. Castillo, “Edge Detection Method for Image Processing based on Generalized Type-2 Fuzzy Logic,” IEEE Trans. On Fuzzy System, Vol. 22, No. 6, pp.1515-1525, 2014.
C.S. Tseng, J.H. Wang, “Perceptual Edge Detection via Entropy Driven Gradient Evaluation,” J. of IET Computer Vision, Vol. 10, No. 2, pp.163-171, 2017
JianFang Cao, Lichao Chen, Min Wang, and Yun Tian, “Implementing a Parallel Image Edge Detection Algorithm Based on the Otsu-Canny Operator on the Hadoop Platform,” J. of Computer Intelligence and Neurosci, Volume 2018, No.3, pp.1-12, 2018.
C. Zeng, Y. Li, and C. Li, “Center-Surround Interaction with Adaptive Inhibition: A Computational Model for Contour Detection,” J. of Neuro Image, Vol. 55, No.1, pp.46-66, 2011.
M.W. Spratling, “Image Segmentation using a Sparse Coding Model for Cortical Area V1,” IEEE Trans. on Image Processing, Vol. 22, No. 4, pp.1631-1643, 2013.
K.F. Yang, S.B. Gao, C.F. Guo, C.Y. Li, and Y. J. Li, “Boundary Detection using Double-Opponency and Spatial Sparseness Constraint,” IEEE Trans. On Image Processing, Vol. 24, No.8, pp. 2565-2578, 2015.
F.J.D. Pernas, M.M. Zarzuela, M.A. Rodriguez, and D.G. Ortega, “Double Recurrent Interaction V1-V2-V4 Based Neural Architecture for Color Natural Sence Boundary Detection and Surface Perception,” J. of Applied Soft Computing, Vol. 21, pp.250-264, 2014.
S. Zheng, A. Juille, and Z. Tu, “Detecting Object Boundary using Low-mid and High-level Information,” J. of Computer Vision and Image Understanding”, Vol. 114, No. 10, pp.1055-1067, 2010.
D.R. Martin, C.C. Fowlkes, and J. Malik,” Learning to Detect Natural Image Boudaries using Brightness, Color, and Texture Cues,” IEEE Trans. on Pattern Analysis and Machine Intelligence, Vol. 26, No. 5, pp.530-549, 2004.
P. Arbelaez, M. Maire, C. Fowlkes, and J. Malik, “Contour Detection and Hierarchical Image Segmentation,” IEEE Trans. on Pattern Analysis and Machine Intelligence, Vol. 33, No. 5, pp.898-916, 2011.
F. He, SH. Wang,” Beyond χ^2 Difference Learning Optimal Metric for Boundary Detection,” IEEE Signal Processing Letters, Vol. 22, No. 1, pp.40-44, 2015.
M. Leordeanu, R. Sukthanker, and C. Sminchisescu, “Generalized Boundaries from Multiple Image Interpretations,” IEEE Trans. on Pattern Analysis and Machine Intelligence, Vol.36, No. 7, pp.1312-1324, 2014.
M. Kass, A. Witkin, and D. Terzopoalos, “Snakes: Active Contour Models,” Int. J. of Computer Vision, Vol. 1, No. 4, pp.321-331, 1998.
M. Ciechoiewski, “An Edge-based Active Contour Model using an Inflation/Deflation Force with a Damping coefficient,” J. of Expert System with Applications, Vol. 44, pp.22-36, 2015.
D. Lui, C. Scharfenberger, K. Fergani, A. Wong, and D.A. Clausi, “Enhanced Decoupled Active Contour using Structural and Textual Variation Energy Functional, IEEE Trans. on Image Processing, Vol.23, No. 2, pp.855-869, 2014.
X. Liu, S. Peng, Y. Cheung, Y. Tang, and J. Du, “Active Contours with a Joint and Region-Scalable Distribution Metric for Interactive Natural Image Segmentation,” J. of IET Image Processing, Vol. 8, No. 12, pp.824-832, 2014.
U. Kirchmaier, S. Hawe, and K. Diepold, “A Swarm Intelligence Inspired Algorithm for Contour Detection in Images,” J. of Applied Soft Computing, Vol. 13, No. 6, pp.3118-3129, 2013.
Z. Dorrani, and M.S. Mahmoodi, “Noisy Images Edge Detection: Ant Colony Optimization Algorithm,” J. of AI and Data Mining, Vol. 4, No. 1, pp.77-83, 2016.
X. Zhang and S. Liu, “Image Edge Feature Extraction and Refining based on Genetic-Ant Colony Algorithm,” J. of TELKOMNIKA, Vol.13, No. 1, pp.118-127, 2015.
Y. Ming, H. Li, and X. He, ‘Winding Number Constrained Contour Detection,” IEEE Trans. on Image Processing, Vol. 24, No. 1, pp.68-79, 2015.
H. Zhang, Y. Liu, B. Xie, and J. Yu, “Oreintation Contrast Model for Boundary Detection,” J. of Visual Communication and Image Representation, Vol. 25, No.5, pp.774-784, 2014.
F. Bergholm, “Edge Focusing,” IEEE Trans. on Pattern Analysis and Machine Intelligence, Vol. PAMI-9, No. 6, pp. 624-632, 1987.
S. Deng, Y. Tian, X. Hu, P. Wei, and M. Qin, “Application of New Advanced CNN Structure with Adaptive Threshols to Color Edge Detection,” J. of Communication in Nonlinear Science and Numerical Simulation, Vol. 17, No. 4, pp.1637-1648, 2010.
K.S. Komati, E.O.T. Salles and M.S. Filho, “KSS: using Region and Edge Maps to detect Image Boundaries,” J. of Computing in Science and Engineering, Vol. 13, No. 3, pp.46-52, 2010.
N. Payet, S. Todorovic, “SLEDGE: Sequential Labeling of Image Edges for Boundary Detection,” Int. J. of Computer Vision, Vol. 24, No. 5, pp.774-784, 2014.
N. Widynski, M. Mignotte, “A multiscale particle filter framework for contour detection”, IEEE Trans. On pattern analysis and machine intelligence, Vol. 36, NO. 10, pp. 1922-1935, 2014.
Rami Al-Jarrah, Mohammad Al-Jarrah, and Hubert Roth, “A Novel Edge Detection for Mobile Robot Path Planning,” Journal of Robotics, Volume 2018, No. 9, pp.1-12, 2018.
Saloua Senhaji, and Abdellah Aarab, “A New Edge Detection using Decomposition Model,” International Journal of Intelligent Information Syatem, Vol. 5, No. 3-1, pp.28-31, 2016.
A. Criminisi, J. Shotton, and E. Konukoglu, “Decision Forest: A Unified Framework for Classification, Regression, Density Estimation, Mainfold Learning and Semi-Supervised Learning,” Foundations and Trends in Computer Graghics and Vision Journal, Vol.7, No. 2-3, pp.81-227, 2012.
P. Kontschieder, S. Bulo, H. Bischof, and M. Pelillo, “Structured Classlabels in Random Forests for Semantic Image Labelling,” In 2011 International Conference on Computer Vision (ICCV), Spain, 6-13 Nov. 2011.