References
- Donoho, D.L., 1995, Denoising via soft thresholding: IEEE Transactions on Information Theory, 41, 613–627.
- Field, D.J., 1987, Relations Between the Statistics of Natural Images and the Responses of Cortical Cells: Journal of the Optical Society of America A, 4(12), 2379-2394.
- Kovesi, P.D., 1999, Image Features From Phase Congruency: Videre: A Journal of Computer Vision Research, 1(3), 1-26.
- Kovesi, P.D., 2000, MATLAB and Octave Functions for Computer Vision and Image Processing: Centre for Exploration Targeting, The University of Western Australia. http://www.csse.uwa.edu.au/~pk/research/matlabfns/
- Kovesi, P.D., 2002, Edges are not Just Steps: Proceedings of ACCV2002 The Fifth Asian Conference on Computer Vision, 822-827.
- Kovesi, P.D., 2003, Phase Congruency Detects Corners and Edges: Proceedings of The Australian Pattern Recognition Society Conference: DICTA 2003, 309-318.
- Morrone, M.C. and Owens, R.A., 1987, Feature Detection from Local Energy: Pattern Recognition Letters, 6, 303-313.
- Morrone, M.C. and Burr, D.C, 1988, Feature Detection in Human Vision: A Phase-Dependent Energy Model: Proceedings of the Royal Society, London B, 235, 221-245.
- Richardson, B.J., 2010, Development of a 3D Phase Congruency Program for the Study of Articular Cartilage: Hons. Thesis, The University of Western Australia.
- Russell, B., Hampson, D. and Logel, J., 2010, Applying the Phase Congruency Algorithm to Seismic Data Slices: A Carbonate Case Study: First Break, 28, 84-90.