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研究生: 胡全燊
Hu, Chuan-Shen
論文名稱: 數學形態學導出多參數持續同調之層狀結構
Sheaf Structures on the Multi-parameter Persistent Homology Arising from Mathematical Morphology
指導教授: 林俊吉
Lin, Chun-Chi
鍾佑民
Chung, Yu-Min
口試委員: 樂美亨
Yueh, Mei-Heng
崔茂培
Tsui, Mao-Pei
黃楓南
Hwang, Feng-Nan
鍾佑民
Chung, Yu-Min
林俊吉
Lin, Chun-Chi
口試日期: 2022/01/21
學位類別: 博士
Doctor
系所名稱: 數學系
Department of Mathematics
論文出版年: 2022
畢業學年度: 110
語文別: 英文
論文頁數: 178
英文關鍵詞: applied topology, topological data analysis, multi-parameter persistent homology, persistence modules, sheaf theory, cellular sheaves, mathematical morphology, Alexandrov topology, image processing, machine learning
DOI URL: http://doi.org/10.6345/NTNU202200173
論文種類: 學術論文
相關次數: 點閱:75下載:20
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  • Topological Data Analysis (TDA), a fast-growing research topic in applied topology, uses techniques in algebraic topology to capture features from data. Its importance has been discovered in many areas, such as medical image processing, molecular biology, machine learning, and pattern recognition. Persistent homology (PH) is vital in topological data analysis that detects local changes in filtered topological spaces. It measures the robustness and significance of homological objects in spaces' deformation, such as connected components, loops, or higher dimensional voids. In Morse theory, filtered spaces for persistent homology usually rely on a single parameter, such as the sublevel set filtration of height functions. Recently, as a generalization of persistent homology, computational topologists began to be interested in multi-parameter persistent homology. Multi-parameter persistent homology (or multi-parameter persistence) is an algebraic structure established on a multi-parametrized network of topological spaces and has more fruitful geometric information than persistent homology. So far, finding methods to extract features in multi-parameter persistence is still an open and concentrating topic in TDA. Also, examples of multi-parameter filtration are still rare and limited. The three principal contributions of this dissertation are as follows. First, we combined persistent homology features (persistence statistics and persistence curves) and machine learning models for analyzing medical images. We found that adding topological information into machine learning models can improve recognition accuracy and stability. Second, unlike traditional construction for multi-parameter filtrations in Euclidean spaces, we propose a framework for constructing multi-parameter filtrations from digital images through mathematical morphology and discrete geometry. Multi-parameter persistence derived from mathematical morphology is more efficient for computing and contains intuitive geometric attributes of objects, such as the sizes or robustness of local objects in digital images. We involve these features to remove the salt and pepper noise in digital images as an application. Compared with current denoise algorithms, the proposed approach has a more stable accuracy and keeps the topological structures of original data. The third part of this dissertation focuses on using sheaf theory to analyze the lifespans of objects in multi-parameter persistence. The multi-parameter persistence has a natural sheaf structure by equipping the Alexandrov topology on the based partially ordered set. This sheaf structure uncovers the gluing properties of local image regions in the multi-parameter filtration. We referred to these properties as a fingerprint of the filtration and applied them for the character recognition task. Finally, we propose using sheaf operators to define ultrametric norms on local spaces in multi-parameter persistence. Like persistence barcodes, this metric provides finer geometric and topological quantities.

    Abstract i Contents ii List of Tables iv List of Figures v Introduction 1 I Mathematical Preliminaries 9 1 Posets and Alexandrov Topology 10 1.1 Pre-ordered Sets and Posets 10 1.2 Alexandrov Topology 13 2 Algebraic Limits 19 2.1 Direct Limits 19 2.2 Projective Limits 21 3 Mathematical Morphology 24 3.1 Digital Images and Operators 24 3.2 Morphological Opening and Closing 27 3.3 Distance Transform 35 3.4 Cubical Complex Representation for Images 39 4 Sheaf Theory 44 4.1 Presheaves and Sheaves 44 4.2 Morphisms 46 4.3 Base Sheaves 48 4.4 Some Presheaf Operators 52 5 Persistence Modules 57 5.1 Singular Homology 57 5.2 Persistence Homology 59 5.3 Persistence Modules and Multi-parameter Persistence 64 II Sheaves on Morphological Multi-filtrations 66 6 Shift Inclusion and Absorption Property 67 6.1 Shift Inclusion 67 6.2 Shift Inclusion on Special Domains 71 6.3 Shift Inclusion and Order Preserving Property 75 6.4 Discussion on Image Domains 77 6.5 Weak Shift Inclusion 78 7 Morphological Multi-parameter Filtrations 85 7.1 Morphological One-parameter Persistent Homology 85 7.2 Multi-filtrations from Morphological Operators 89 7.3 Bifiltration from Distance Transform and Thresholding 94 8 Cellular Sheaf and Multi-parameter Persistence 99 8.1 Cellular Sheaves 100 8.2 Cellular Sheaves over Prosets 102 8.3 Examples 105 8.4 Local Merging Relations in Topological Spaces 107 8.5 Cellular Sheaves over Convex Sets of Integers 116 8.6 Norms on Cellular Sheaves 118 8.7 Cohomology of Cellular Sheaves 126 III Applications 130 9 Skin Lesion Images Classification 131 9.1 TopoResNet: A TDA-CNN hybrid Model for Skin lesions 131 9.2 Persistence Statistics and Persistence Curves 132 9.3 Architecture of TopoResNet-101 134 9.4 Experiment Results 138 10 Multi-persistence on Digital Images 140 10.1 A Denoising Algorithm for Salt and Pepper noise 140 10.2 Firn Data Analysis 151 11 Local Merging Relations in Digital Images 158 11.1 System of Patches 158 11.2 Local Merging Numbers 160 11.3 One-dimensional Merging Relations 161 11.4 Application on Handwritten Character Recognition 162 12 Conclusion and Future Works 164 12.1 Persistence of Sheaves 165 12.2 Sheaf Cohomology 166 12.3 More Applications on Real Data 166 Bibliography 167

    [1] Henry Adams, Tegan Emerson, Michael Kirby, Rachel Neville, Chris Peterson, Patrick Ship man, Sofya Chepushtanova, Eric Hanson, Francis Motta, and Lori Ziegelmeier. Persistence images: A stable vector representation of persistent homology. Journal of Machine Learning Research, 18(8):1–35, 2017.
    [2] Pavel S. Alexandrov. Diskrete räume. Mat. Sb, 2:501-518, 1937.
    [3] Pavel S. Alexandrov. Combinatorial Topology. Dover Publications, Inc., 31 East 2nd Street, Mineola, NY, 1947.
    [4] D Vijay Anand, Zhenyu Meng, Kelin Xia, and Yuguang Mu. Weighted persistent homology for osmolyte molecular aggregation and hydrogen-bonding network analysis. Scientific Reports, 10:9685, 06 2020.
    [5] Nieves Atienza, Rocío González-Díaz, and M. Soriano-Trigueros. A new entropy based summary function for topological data analysis. Electronic Notes in Discrete Mathematics, 68:113 –118, 2018. Discrete Mathematics Days 2018.
    [6] Nieves Atienza, Rocío González-Díaz, and M. Soriano-Trigueros. On the stability of persistent entropy and new summary functions for TDA. CoRR, abs/1803.08304, 2018.
    [7] Michael Atiyah and Ian Macdonald. Introduction to Commutative Algebra. Addison-WesleyPublishing Company, 1969.
    [8] Ulrich Bauer, Michael Kerber, and Jan Reininghaus. Dipha (a distributed persistent homology algorithm). https://github.com/DIPHA/dipha, 2014.
    [9] Ulrich Bauer, Michael Kerber, Jan Reininghaus, and Hubert Wagner. Phat - persistent homology algorithms toolbox. J. Symb. Comput., 78:76–90, 2017.
    [10] Paul Bendich, James Marron, Ezra Miller, Alex Pieloch, and Sean Skwerer. Persistent homology analysis of brain artery trees. Arxiv, 2014.
    [11] Paul Bendich, James S Marron, Ezra Miller, Alex Pieloch, and Sean Skwerer. Persistent homology analysis of brain artery trees. The annals of applied statistics, 10(1):198, 2016.
    [12] Nicolas Berkouk. Persistence and Sheaves : from Theory to Applications. Theses, Institut Polytechnique de Paris, September 2020.
    [13] Alexander Bernstein, Evgeny Burnaev, Maxim Sharaev, Ekaterina Kondrateva, and Oleg Kachan. Topological data analysis in computer vision. In Twelfth International Conference on Machine Vision (ICMV), page 140, 01 2020.
    [14] Christophe Biscio and Jesper Møller. The accumulated persistence function, a new useful functional summary statistic for topological data analysis, with a view to brain artery trees and spatial point process applications. Journal of Computational and Graphical Statistics, 28:671– 681, 2016.
    [15] Holger Boche, Mijail Guillemard, Gitta Kutyniok, and Friedrich Philipp. Signal analysis with frame theory and persistent homology. The Conference of Sampling Theory and Applications, SampTA’13, 01 2013.
    [16] Magnus Bakke Botnan and William Crawley-Boevey. Decomposition of persistence modules, 2019.
    [17] Magnus Bakke Botnan, Steffen Oppermann, and Steve Oudot. Signed barcodes for multiparameter persistence via rank decompositions and rank-exact resolutions, 2021.
    [18] Gary Bradski. The OpenCV Library. Dr. Dobb’s Journal of Software Tools, 2000.
    [19] Glen Bredon. Sheaf Theory. Graduate Texts in Mathematics. Springer New York, 1997.
    [20] Peter Bubenik. Statistical topological data analysis using persistence landscapes. The Journal of Machine Learning Research, 16(1):77–102, 2015.
    [21] Faiza Bukenya, Culi Nerissa, Sébastien Serres, Marie-Christine Pardon, and Li Bai. An automated method for segmentation and quantification of blood vessels in histology images. Microvascular Research, 128:103928, 2020.
    [22] SEER stat fact sheets: Melanoma of the skin. nci. https://seer.cancer.gov/statfacts/html/melan.html. Accessed: 2018-08-19.
    [23] Zixuan Cang and Guo-Wei Wei. Topologynet: Topology based deep convolutional and multi-task neural networks for biomolecular property predictions. PLoS computational biology, 13(7):e1005690, 2017.
    [24] Gunnar Carlsson. Topology and Data. Bull. Amer. Math. Soc. 46 (2009), 255-308, 2009.
    [25] Gunnar Carlsson, Gurjeet Singh, and Afra J Zomorodian. Computing multidimensional persistence. Journal of Computational Geometry, 1(1):72–100, 2010.
    [26] Gunnar Carlsson and Afra Zomorodian. The theory of multidimensional persistence. Discrete and Computational Geometry, 42:71–93, 06 2007.
    [27] Gunnar Carlsson, Afra Zomorodian, Anne Collins, and Leonidas Guibas. Persistence barcodes for shapes. International Journal of Shape Modeling, 11:149–188, 01 2005.
    [28] Mathieu Carrière and Andrew Blumberg. Multiparameter persistence image for topological machine learning. Advances in Neural Information Processing Systems, 33, 2020.
    [29] Corrie J Carstens and Kathy J Horadam. Persistent homology of collaboration networks. Mathematical problems in engineering, 2013, 2013.
    [30] Moo Chung, Jamie Hanson, Jieping Ye, Richard Davidson, and Seth Pollak. Persistent homology in sparse regression and its application to brain morphometry. IEEE transactions on medical imaging, 34, 08 2014.
    [31] Yu-Min Chung, Chuan-Shen Hu, Austin Lawson, and Clifford Smyth. Topological approaches to skin disease image analysis. In 2018 IEEE International Conference on Big Data (Big Data), pages 100–105, 2018.
    [32] Yu-Min Chung and Austin Lawson. Persistence curves: A canonical framework for summarizing persistence diagrams. arXiv preprint arXiv:1904.07768, 2019.
    [33] James Clough, Nicholas Byrne, Ilkay Oksuz, Veronika A Zimmer, Julia A Schnabel, and Andrew King. A topological loss function for deep-learning based image segmentation using persistent homology. IEEE Transactions on Pattern Analysis and Machine Intelligence, 2020.
    [34] Mario Coccia. Deep learning technology for improving cancer care in society: New directions in cancer imaging driven by artificial intelligence. Technology in Society, 60:101198, 2020.
    [35] Noel C. F. Codella, David Gutman, M. Emre Celebi, Brian Helba, Michael A. Marchetti, Stephen W. Dusza, Aadi Kalloo, Konstantinos Liopyris, Nabin Mishra, Harald Kittler, and Allan Halpern. Skin lesion analysis toward melanoma detection: A challenge at the 2017 international symposium on biomedical imaging (ISBI), hosted by the international skin imaging collaboration (ISIC). In 2018 IEEE 15th International Symposium on Biomedical Imaging (ISBI 2018), pages 168–172, 2018.
    [36] René Corbet, Ulderico Fugacci, Michael Kerber, Claudia Landi, and Bei Wang. A kernel for multi-parameter persistent homology. Computers & Graphics: X, 2:100005, 2019.
    [37] Michel Couprie and Gilles Bertrand. Topology preserving alternating sequential filter for smoothing two-dimensional and three-dimensional objects. Journal of Electronic Imaging, 13(4):720 – 730, 2004.
    [38] Justin Curry. Sheaves, Cosheaves and Applications. PhD Thesis, Princeton University, 2014.
    [39] Justin Curry. Topological data analysis and cosheaves. Japan Journal of Industrial and Applied Mathematics, 2015.
    [40] Justin Curry. Functors on posets left kan extend to cosheaves: an erratum, 2019.
    [41] Anders M Dale, Arthur K Liu, Bruce R Fischl, Randy L Buckner, John W Belliveau, Jeffrey D Lewine, and Eric Halgren. Dynamic statistical parametric mapping: combining fmri and meg for high-resolution imaging of cortical activity. Neuron, 26(1):55–67, 2000.
    [42] Leila De Floriani, Federico Iuricich, Paola Magillo, and Patricio Simari. Discrete Morse versus watershed decompositions of tessellated manifolds. In International Conference on Image Analysis and Processing, pages 339–348. Springer, 2013.
    [43] Vin De Silva, Robert Ghrist, et al. Coverage in sensor networks via persistent homology. Algebraic & Geometric Topology, 7(1):339–358, 2007.
    [44] Fangfang Dong, Yunmei Chen, De-Xing Kong, and Bailin Yang. Salt and pepper noise removal based on an approximation of l0 norm. Computers & Mathematics with Applications, 70(5):789–804, 2015.
    [45] Edward R. Dougherty. An Introduction to Morphological Image Processing. Books in the Spie Tutorial Texts Series. SPIE Optical Engineering Press, 1992.
    [46] Edward R. Dougherty and Divyendu Sinha. Computational mathematical morphology. Signal Processing, 38(1):21–29, 1994. Mathematical Morphology and its Applications to Signal Processing.
    [47] David S. Dummit and Richard M. Foote. Abstract Algebra. Wiley Publication, 2003.
    [48] Herbert Edelsbrunner. Persistent homology: theory and practice. Bulletin of the American Mathematical Society, 2014.
    [49] Herbert Edelsbrunner and John Harer. Persistent homology-a survey. Contemporary mathematics, 453:257–282, 2008.
    [50] Herbert Edelsbrunner and John Harer. Computational Topology: An Introduction. American Mathematical Society, 01 2010.
    [51] Herbert Edelsbrunner, David Letscher, and Afra Zomorodian. Topological persistence and simplification. Discrete Comput Geom, 28:511–533, 2002.
    [52] Brittany Fasy and Bei Wang. Exploring persistent local homology in topological data analysis. In 2016 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP), pages 6430–6434, 03 2016.
    [53] Brittany Fasy and Carola Wenk. Local persistent homology based distance between maps. In the 22nd ACM SIGSPATIAL International Conference, pages 43–52, 11 2014.
    [54] An Feng-Ping and Liu Zhi-Wen. Medical image segmentation algorithm based on feedback mechanism convolutional neural network. Biomedical Signal Processing and Control, 53:101589, 2019.
    [55] Patrizio Frosini and Claudia Landi. Size functions and morphological transformations. Acta Applicandae Mathematicae, 49:85–104, 10 1997.
    [56] Bo Fu, Xiaoyang Zhao, Chuanming Song, Ximing Li, and Xianghai Wang. A salt and pepper noise image denoising method based on the generative classification. Multimed Tools Appl, 78:12043–12053, 2019.
    [57] Lei Fu. Algebraic Geometry. Springer and Tsing Hua University Press, Mathematics Series for Graduate Students, 2006.
    [58] Marcio Gameiro, Yasuaki Hiraoka, Shunsuke Izumi, Miroslav Kramar, Konstantin Mischaikow, and Vidit Nanda. A topological measurement of protein compressibility. Japan Journal of Industrial and Applied Mathematics, 32(1):1–17, 2015.
    [59] Adélie Garin and Guillaume Tauzin. A topological" reading" lesson: Classification of MNIST using TDA. In 2019 18th IEEE International Conference On Machine Learning And Applications (ICMLA), pages 1551–1556. IEEE, 2019.
    [60] Robert Ghrist. Barcodes: The persistent topology of data. Bulletin of the American Mathematical Society, 45(1):61, 2008.
    [61] Robert Ghrist. Elementary Applied Topology. CreateSpace Independent Publishing Platform, 2014.
    [62] Maryellen L Giger. Machine learning in medical imaging. Journal of the American College of Radiology, 15(3):512–520, 2018.
    [63] Rafael C. Gonzalez, Richard E. Woods, and Steven L. Eddins. Digital image processing, 2012.
    [64] Marvin J. Greenberg and John R. Harper. Algebraic Topology, A First Course. Addison-Wesley Publishing Company, 1980.
    [65] Jakob Hansen and Robert Ghrist. Toward a spectral theory of cellular sheaves. Journal of Applied and Computational Topology, 3, 12 2019.
    [66] Jakob Hansen and Robert Ghrist. Opinion dynamics on discourse sheaves. Arxiv, 2020.
    [67] Robin Hartshorne. Algebraic Geometry. Springer-Verlag, New York, 1977.
    [68] Allen Hatcher. Algebraic topology. Cambridge Univ. Press, Cambridge, 2000.
    [69] Kaiming He, Xiangyu Zhang, Shaoqing Ren, and Jian Sun. Deep residual learning for image recognition. In CVPR. Conference on Computer Vision and Pattern Recognition (CVPR), 2015.
    [70] Roopa B Hegde, Keerthana Prasad, Harishchandra Hebbar, and Brij Mohan Kumar Singh. Comparison of traditional image processing and deep learning approaches for classification of white blood cells in peripheral blood smear images. Biocybernetics and Biomedical Engineering, 39(2):382–392, 2019.
    [71] Ron Held. Sheaves Over Posets (draft). Academia Open Resource, 2016.
    [72] Chuan-Shen Hu and Yu-Min Chung. A sheaf and topology approach to detecting local merging relations in digital images. In Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR) Workshops, pages 4396–4405, June 2021.
    [73] Chuan-Shen Hu, Austin Lawson, Jung-Sheng Chen, Yu-Min Chung, Clifford Smyth, and Shih-Min Yang. Toporesnet: A hybrid deep learning architecture and its application to skin lesion classification. Mathematics, 9(22), 2021.
    [74] Chuan-Shen Hu, Austin Lawson, Yu-Min Chung, and Kaitlin Keegan. Two-parameter persistence for images via distance transform. In Proceedings of the IEEE/CVF International Conference on Computer Vision (ICCV) Workshops, pages 4176–4184, October 2021.
    [75] Qi Huang, Binbin Nie, Chen Ma, Jing Wang, Tianhao Zhang, Shaofeng Duan, Shang Wu, Shengxiang Liang, Panlong Li, Hua Liu, et al. Stereotaxic 18f-fdg pet and mri templates with three-dimensional digital atlas for statistical parametric mapping analysis of tree shrew brain. Journal of Neuroscience Methods, 293:105–116, 2018.
    [76] Thomas W. Hungerford. Algebra. Springer-Verlag New York, 1974.
    [77] D. Huybrechts and Springer-Verlag (Berlin). Complex Geometry: An Introduction. Universitext (Berlin. Print). Springer, 2005.
    [78] Martin Hÿtch and Peter W. Hawkes. Morphological Image Operators. ISSN. Elsevier Science, 2020.
    [79] Vamsi K Ithapu, Vikas Singh, Ozioma C Okonkwo, Richard J Chappell, N Maritza Dowling, Sterling C Johnson, Alzheimer’s Disease Neuroimaging Initiative, et al. Imaging-based enrichment criteria using deep learning algorithms for efficient clinical trials in mild cognitive impairment. Alzheimer’s & Dementia, 11(12):1489–1499, 2015.
    [80] Tomasz Kaczynski, Konstantin Mischaikow, and Marian Mrozek. Computational Homology. Applied Mathematical Sciences. Springer New York, 2004.
    [81] Mohammad Ali Kadampur and Sulaiman Al Riyaee. Skin cancer detection: applying a deep learning based model driven architecture in the cloud for classifying dermal cell images. Informatics in Medicine Unlocked, 18:100282, 2020.
    [82] Davood Karimi, Haoran Dou, Simon K Warfield, and Ali Gholipour. Deep learning with noisy labels: exploring techniques and remedies in medical image analysis. Medical Image Analysis, page 101759, 2020.
    [83] Masaki Kashiwara and Pierre Schapira. Persistent homology and microlocal sheaf theory. Journal of Applied and Computational Topology, 2, 10 2018.
    [84] Masaki Kashiwara and Pierre Schapira. Piecewise Linear Sheaves. International Mathematics Research Notices, 08 2019. rnz145.
    [85] Peter M Kasson, Afra Zomorodian, Sanghyun Park, Nina Singhal, Leonidas J Guibas, and Vijay S Pande. Persistent voids: a new structural metric for membrane fusion. Bioinformatics, 23(14):1753–1759, 2007.
    [86] Zhixiong Zhao Kelin Xia and Guo-Wei Wei. Multiresolution persistent homology for excessively large biomolecular datasets. Journal of Chemical Physics, 143, 134103, 2015.
    [87] Amin Khatami, Asef Nazari, Abbas Khosravi, Chee Peng Lim, and Saeid Nahavandi. A weight perturbation-based regularisation technique for convolutional neural networks and the application in medical imaging. Expert Systems with Applications, 149:113196, 2020.
    [88] Donald E. Knuth. The Art of Computer Programming. Vol. 2: Seminumerical Algorithms. Addison-Wesley Series in Computer Science and Information Processing. Addison-Wesley, 1968.
    [89] Rami Kraft. Illustrations of Data Analysis Using the Mapper Algorithm and Persistent Homology. TRITA-MAT-E. Master Thesis, 2016.
    [90] Alex Krizhevsky, Ilya Sutskever, and Geoffrey E. Hinton. Imagenet classification with deep convolutional neural networks. In NIPS. NIPS Proceedings, 2012.
    [91] Iwona Kucybała, Zbisław Tabor, Szymon Ciuk, Robert Chrzan, Andrzej Urbanik, and Wadim Wojciechowski. A fast graph-based algorithm for automated segmentation of subcutaneous and visceral adipose tissue in 3d abdominal computed tomography images. Biocybernetics and Biomedical Engineering, 2020.
    [92] Haribalan Kumar, Steve V DeSouza, and Maxim S Petrov. Automated pancreas segmentation from computed tomography and magnetic resonance images: A systematic review. Computer Methods and Programs in Biomedicine, 178:319–328, 2019.
    [93] Genki Kusano, Kenji Fukumizu, and Yasuaki Hiraoka. Kernel method for persistence diagrams via kernel embedding and weight factor. Journal of Machine Learning Research, 18(189):1–41, 2018.
    [94] Saunders Mac Lane. Categories for the Working Mathematician. Graduate Texts in Mathematics book series (GTM, volume 5), Springer-Verlag New York, 1971.
    [95] Serge Lang. Real and Functional Analysis. Graduate Texts in Mathematics. Springer New York, 2012.
    [96] Yann LeCun and Corinna Cortes. MNIST handwritten digit database. http://yann.lecun.com/exdb/mnist/, 2010.
    [97] Hyekyoung Lee, Hyejin Kang, Moo Chung, Bung-Nyun Kim, and Dong Soo Lee. Persistent brain network homology from the perspective of dendrogram. IEEE Transactions on Medical Imaging, 31(12):2267–2277, 2012.
    [98] John M. Lee. Introduction to Riemannian Manifolds. Graduate Texts in Mathematics. Springer International Publishing, 2019.
    [99] Michael Lesnick. Lecture notes for math 840: Multiparameter persistence, September 2019.
    [100] Michael Lesnick and Matthew Wright. Computing minimal presentations and bigraded betti numbers of 2-parameter persistent homology. Arxiv, 2020.
    [101] Michael Levandowsky and David Winter. Distance between sets. Nature, 234(5323):34–35, Nov 1971.
    [102] Laquan Li, Xiangming Zhao, Wei Lu, and Shan Tan. Deep learning for variational multimodality tumor segmentation in pet/ct. Neurocomputing, 392:277–295, 2020.
    [103] Li Li, Wei-Yi Cheng, Benjamin S Glicksberg, Omri Gottesman, Ronald Tamler, Rong Chen, Erwin P Bottinger, and Joel T Dudley. Identification of type 2 diabetes subgroups through topological analysis of patient similarity. Science translational medicine, 7(311):311ra174– 311ra174, 2015.
    [104] Luming Liang, Seng Deng, Lionel Gueguen, Mingqiang Wei, Xinming Wu, and Jing Qin. Convolutional neural network with median layers for denoising salt-and-pepper contaminations. Neurocomputing, 442:26–35, 2021.
    [105] Qing Liu. Algebraic Geometry and Arithmetic Curves. Oxford Graduate Texts in Mathematics, 2006.
    [106] Xiang Liu, Huitao Feng, Jie Wu, and Kelin Xia. Persistent spectral hypergraph based machine learning (PSH-ML) for protein-ligand binding affinity prediction. Briefings in Bioinformatics, 22(5), 04 2021. bbab127.
    [107] Xiang Liu, Xiangjun Wang, Jie Wu, and Kelin Xia. Hypergraph-based persistent cohomology (HPC) for molecular representations in drug design. Briefings in Bioinformatics, 22(5), 01 2021. bbaa411.
    [108] Jonathan Long, Evan Shelhamer, and Trevor Darrell. Fully convolutional networks for semantic segmentation. In Arxiv. arXiv:1411.4038, 2014.
    [109] Petros Maragos. Tropical geometry, mathematical morphology and weighted lattices. In Bernhard Burgeth, Andreas Kleefeld, Benoît Naegel, Nicolas Passat, and Benjamin Perret, editors, Mathematical Morphology and Its Applications to Signal and Image Processing, pages 3–15, Cham, 2019. Springer International Publishing.
    [110] Clément Maria, Jean-Daniel Boissonnat, Marc Glisse, and Mariette Yvinec. The gudhi library: Simplicial complexes and persistent homology. In Mathematical Software – ICMS 2014, pages 167–174, Berlin, Heidelberg, 2014. Springer Berlin Heidelberg.
    [111] Gabriell Máté, Andreas Hofmann, Nicolas Wenzel, and Dieter Heermann. A topological similarity measure for proteins. Biochimica et Biophysica Acta (BBA) - Biomembranes, 1838(4):1180–1190, 2014. Viral Membrane Proteins - Channels for Cellular Networking.
    [112] Michael C. McCord. Singular homology groups and homotopy groups of finite topological spaces. Duke Mathematical Journal, 33:465–474, 1966.
    [113] Zhenyu Meng and Kelin Xia. Persistent spectral-based machine learning (perspect ml) for protein-ligand binding affinity prediction. Science Advances, 7(19):eabc5329, 2021.
    [114] Ezra Miller. Homological algebra of modules over posets, 2020.
    [115] Ezra Miller and Bernd Sturmfels. Combinatorial Commutative Algebra. Graduate Texts in Mathematics. Springer New York, 2004.
    [116] Marie-Louise Montandon, Daniel O Slosman, and Habib Zaidi. Assessment of the impact of model-based scatter correction on [18f]-fdg 3d brain pet in healthy subjects using statistical parametric mapping. Neuroimage, 20(3):1848–1856, 2003.
    [117] James R. Munkres. Elements Of Algebraic Topology. CRC Press, 2018.
    [118] Laurent Najman and Hugues Talbot. Mathematical Morphology. Wiley-ISTE, 1d edition, 2010.
    [119] Vidit Nanda. Perseus, the persistent homology software. http://www.sas.upenn.edu/~vnanda/perseus, 2013.
    [120] Ippei Obayashi, Yasuaki Hiraoka, and Masao Kimura. Persistence diagrams with linear machine learning models. Journal of Applied and Computational Topology, 1(3-4):421–449, 2018.
    [121] Henri Poincaré. Analysis situs. Journal de l’École Polytechnique. (2), 1:1–123, 1895.
    [122] Leonid Polterovich, Daniel Rosen, Karina Samvelyan, and Jun Zhang. Topological Persistence in Geometry and Analysis. University Lecture Series. American Mathematical Society, 2020.
    [123] Chi Seng Pun, Kelin Xia, and Si Xian Lee. Persistent-homology-based machine learning and its applications – a survey. Arxiv, 2018.
    [124] Emily Riehl. Category Theory in Context. Cambridge University Press, 2014.
    [125] Gerhard X. Ritter and Peter Sussner. An introduction to morphological neural networks. In Proceedings of 13th International Conference on Pattern Recognition, volume 4, pages 709–717 vol.4, 1996.
    [126] Michael Robinson. The nyquist theorem for cellular sheaves. Sampling Theory and Applications 2013, Bremen, Germany, 2013.
    [127] Michael Robinson. Topological Signal Processing. Mathematical Engineering. Springer Berlin Heidelberg, 2014.
    [128] Michael Robinson. Hunting for foxes with sheaves. Notices of the American Mathematical Society, page 661, 05 2019.
    [129] Ana Romero, Julio Rubio, and Francis Sergeraert. Effective persistent homology of digital images. CoRR, abs/1412.6154, 2014.
    [130] Olaf Ronneberger, Philipp Fischer, and Thomas Brox. U-net: Convolutional networks for biomedical image segmentation. In Arxiv. arXiv:1505.04597, 2015.
    [131] Walter Rudin. Principles of mathematical analysis. McGraw-Hill New York, 3d edition, 1976.
    [132] Susmita Saha, Alex Pagnozzi, Pierrick Bourgeat, Joanne M George, DanaKai Bradford, Paul B Colditz, Roslyn N Boyd, Stephen E Rose, Jurgen Fripp, and Kerstin Pannek. Predicting motor outcome in preterm infants from very early brain diffusion mri using a deep learning convolutional neural network (cnn) model. NeuroImage, page 116807, 2020.
    [133] David Salomon. Data Compression: The Complete Reference. Molecular biology intelligence unit. Springer London, 2007.
    [134] Amit R. Sawant, Herbert D. Zeman, Diane M. Muratore, Sanjiv S. Samant, and Frank A. DiBianca. Adaptive median filter algorithm to remove impulse noise in X-ray and CT images and speckle in ultrasound images. In Kenneth M. Hanson, editor, Medical Imaging 1999: Image Processing, volume 3661, pages 1263 – 1274. International Society for Optics and Photonics, SPIE, 1999.
    [135] Sara Scaramuccia, Federico Iuricich, Leila De Floriani, and Claudia Landi. Computing multiparameter persistent homology through a discrete morse-based approach. Computational Geometry, 89:101623, 2020.
    [136] Anna Seigal, Heather A. Harrington, and Vidit Nanda. Principal components along quiver representations, 2021.
    [137] Jean Serra. Image Analysis and Mathematical Morphology. Number 1 in Image Analysis and Mathematical Morphology. Academic Press, 1984.
    [138] Igor R. Shafarevich. Basic Algebraic Geometry 2. Springer-Verlag, 1994.
    [139] Igor R. Shafarevich. Basic Algebraic Geometry 1. Springer Berlin Heidelberg, 2013.
    [140] Lavanya Sharan, Ruth Rosenholtz, and Edward H. Adelson. Accuracy and speed of material categorization in real-world images. Journal of Vision, 14(10), 2014.
    [141] Allen Shepard. A Cellular Description of the Derived Category of a Stratified Space. PhD thesis, Brown University PhD Thesis, May 1985.
    [142] Karen Simonyan and Andrew Zisserman. Very deep convolutional networks for large-scale image recognition. In Arxiv. arXiv:1409.1556, 2014.
    [143] Gurjeet Singh, Facundo Mémoli, and Gunnar Carlsson. Topological methods for the analysis of high dimensional data sets and 3d object recognition. In PBG@Eurographics, 2007.
    [144] Pierre Soille. Morphological Image Analysis: Principles and Applications. Springer-Verlag New York, Inc., Secaucus, NJ, USA, 2 edition, 2003.
    [145] Anirudh Som, Hongjun Choi, Karthikeyan Natesan Ramamurthy, Matthew Buman, and Pavan Turaga. Pi-net: A deep learning approach to extract topological persistence images. CoRR, abs/1906.01769, 2019.
    [146] Daniel Spitz, Jürgen Berges, Markus Oberthaler, and Anna Wienhard. Finding universal structures in quantum many-body dynamics via persistent homology. Arxiv, 2020.
    [147] Elias Stein, John Willard Milnor, Michael Spivak, Robert Wells, and John N Mather. Morse Theory. Annals of mathematics studies. Princeton University Press, 1963.
    [148] Takeki Sudo and Kazushi Ahara. Cubicalripser: calculator of persistence pair for 2 dimensional pixel data. https://github.com/CubicalRipser/CubicalRipser_2dim, 2018.
    [149] Akihiro Takiyama, Takashi Teramoto, Hiroaki Suzuki, Katsushige Yamashiro, and Shinya Tanaka. Persistent homology index as a robust quantitative measure of immunohistochemical scoring. Scientific reports, 7(1):1–9, 2017.
    [150] Siddhesh Thakur, Jimit Doshi, Sarthak Pati, Saima Rathore, Chiharu Sako, Michel Bilello, Sung Min Ha, Gaurav Shukla, Adam Flanders, Aikaterini Kotrotsou, et al. Brain extraction on mri scans in presence of diffuse glioma: Multi-institutional performance evaluation of deep learning methods and robust modality-agnostic training. NeuroImage, page 117081, 2020.
    [151] The GUDHI Project. GUDHI User and Reference Manual. GUDHI Editorial Board, 3.4.1 edition, 2021.
    [152] Julien Tierny. Topological data analysis for scientific visualization, volume 3. Springer, 2017.
    [153] Philipp Tschandl, Cliff Rosendahl, and Harald er. The HAM10000 Dataset: A Large Collection of Multi-Source Dermatoscopic Images of Common Pigmented Skin Lesions. Nature Publishing Group, 5:1–9, 2018.
    [154] Loring W. Tu. An Introduction to Manifolds. Universitext. Springer New York, 2007.
    [155] Robin Vandaele, Tijl De Bie, and Yvan Saeys. Local topological data analysis to uncover the global structure of data approaching graph-structured topologies. In Machine Learning and Knowledge Discovery in Databases, pages 19–36, Cham, 2019. Springer International Publishing.
    [156] James W. Vick. Homology Theory, A Introduction to Algebraic Topology. Springer-Verlag Publishing Company, Second Edition, 1973.
    [157] Oliver Vipond. Multiparameter persistence landscapes. Journal of Machine Learning Research, 21(61):1–38, 2020.
    [158] Yi Wang, Hailiang Ye, and Feilong Cao. A novel multi-discriminator deep network for image segmentation. Applied Intelligence, 2021.
    [159] Zhichao Wang, Qian Li, Gang Li, and Guandong Xu. Polynomial representation for persistence diagram. In 2019 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR), pages 6116–6125, 2019.
    [160] Zhou Wang, Alan C. Bovik, Hamid R. Sheikh, and Eero P. Simoncelli. Image quality assessment: from error visibility to structural similarity. IEEE Transactions on Image Processing, 13(4):600–612, 2004.
    [161] JunJie Wee and Kelin Xia. Forman persistent Ricci curvature (FPRC)-based machine learning models for protein-ligand binding affinity prediction. Briefings in Bioinformatics, 22(6), 05 2021. bbab136.
    [162] Miles N Wernick, Yongyi Yang, Jovan G Brankov, Grigori Yourganov, and Stephen C Strother. Machine learning in medical imaging. IEEE signal processing magazine, 27(4):25–38, 2010.
    [163] Richard L. Wheeden and Antoni Zygmund. Measure and Integral: An Introduction to Real Analysis, Second Edition. Chapman & Hall/CRC Pure and Applied Mathematics. CRC Press, 2015.
    [164] Jonathan Woolf. The fundamental category of a stratified space. arXiv: Algebraic Topology, 2008.
    [165] Kelin Xia and Guo-Wei Wei. Multiresolution topological simplification. Journal of Computational Biology, 22(9), 1-5, 2015.
    [166] Yan Xing, Jian Xu, Jieqing Tan, Daolun Li, and Wenshu Zha. Deep cnn for removal of salt and pepper noise. IET Image Processing, 13(9):1550–1560, 2019.
    [167] Ronald R. Yager. On the theory of bags. International Journal of General Systems, 13:23–37, 1986.
    [168] Houwang Zhang, Yuan Zhu, and Hanying Zheng. NAMF: A nonlocal adaptive mean filter for removal of salt-and-pepper noise. Mathematical Problems in Engineering, 2021:1–10, March 2021.
    [169] Kai Zhang, Wangmeng Zuo, Yunjin Chen, Deyu Meng, and Lei Zhang. Beyond a Gaussian denoiser: Residual learning of deep CNN for image denoising. Trans. Img. Proc., 26(7):3142–3155, July 2017.
    [170] Xiaojin Zhu. Persistent homology: An introduction and a new text representation for natural language processing. IJCAI International Joint Conference on Artificial Intelligence, pages 1953–1959, 08 2013.

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