Hierarchical information fusion for decision making in craniofacial superimposition
Tài liệu tham khảo
Yoshino, 2012, Craniofacial superimposition, 238
Wilkinson, 2012
Damas, 2011, Forensic identification by computer-aided craniofacial superimposition: a survey, ACM Comput. Surv., 43, 27, 10.1145/1978802.1978806
Damas, 2015, Study on the performance of different craniofacial superimposition approaches (ii): best practices proposal, Forensic Sci. Int., 257, 504, 10.1016/j.forsciint.2015.07.045
Huete, 2015, Past, present, and future of craniofacial superimposition: literature and international surveys, Legal Med., 17, 267, 10.1016/j.legalmed.2015.02.001
Ibáñez, 2009, An experimental study on the applicability of evolutionary algorithms to craniofacial superimposition in forensic identification, Inf. Sci., 79, 3998, 10.1016/j.ins.2008.12.029
Ibáñez, 2011, Modeling the skull-face overlay uncertainty using fuzzy sets, IEEE Trans. Fuzzy Syst., 16, 946
Ibáñez, 2012, A cooperative coevolutionary approach dealing with the skull-face overlay uncertainty in forensic identification by craniofacial superimposition, Soft Comput., 18, 797, 10.1007/s00500-011-0770-8
Campomanes-Álvarez, 2015, Modeling the facial soft tissue thickness for automatic skull-face overlay, IEEE Trans. Inf. Forensics Secur., 10, 2057, 10.1109/TIFS.2015.2441000
Campomanes-Alvarez, 2016, Design of criteria to assess craniofacial correspondence in forensic identification based on computer vision and fuzzy integrals, Appl. Soft Comput., 46, 596, 10.1016/j.asoc.2015.11.006
Campomanes-Alvarez, 2015, Modeling the consistency between the bony and facial chin outline in craniofacial superimposition
Campomanes-Alvarez, 2016, Experimental study of different aggregation functions for modeling craniofacial correspondence in craniofacial superimposition, 437
Broca, 1875, 2
Bertillon, 1896, The Bertillon System of Identification
Nickerson, 1991, A methodology for near-optimal computational superimposition of two-dimensional digital facial photographs and three-dimensional cranial surface meshes, J. Forensic Sci., 36, 480, 10.1520/JFS13050J
Huang, 2011, The weighted landmark-based algorithm for skull identification, 42
Jin, 2013, Parameter estimation for perspective projection based on camera calibration in skull-face overlay, 317
Campomanes-Álvarez, 2015, Dispersion assessment in the location of facial landmarks on photographs, Int. J. Legal Med., 129, 227, 10.1007/s00414-014-1002-4
Stephan, 2008, Facial soft tissue depths in craniofacial identification (part i): an analytical review of the published adult data, J. Forensic Sci., 53, 1257
Ghosh, 2001, An economised craniofacial identification system, Forensic Sci. Int., 117, 109, 10.1016/S0379-0738(00)00454-0
Campomanes-Álvarez, 2014, Computer vision and soft computing for automatic skull–face overlay in craniofacial superimposition, Forensic Sci. Int., 245, 77, 10.1016/j.forsciint.2014.10.009
Fenton, 2008, Skull-photo superimposition and border deaths: identification through exclusion and the failure to exclude, J. Forensic Sci., 53, 34, 10.1111/j.1556-4029.2007.00624.x
Jayaprakash, 2001, Cranio-facial morphanalysis: a new method for enhancing reliability while identifying skulls by photo superimposition, Forensic Sci. Int., 117, 121, 10.1016/S0379-0738(00)00455-2
Ibáñez, 2016, Study on the criteria for assessing skull-face correspondence in craniofacial superimposition, Legal Med., 23, 59, 10.1016/j.legalmed.2016.09.009
Pesce, 1993, Shape analytical morphometry in computer-aided skull identification via video superimposition
Yoshino, 1997, Computer-assisted skull identification system using video superimposition, Forensic Sci. Int., 90, 231, 10.1016/S0379-0738(97)00168-0
Ricci, 2006, A new experimental approach to computer-aided face/skull identification in forensic anthropology, Am. J. Forensic Med. Pathol., 27, 46, 10.1097/01.paf.0000202809.96283.88
Pappis, 1993, A comparative assessment of measures of similarity of fuzzy values, Fuzzy Sets Syst., 56, 171, 10.1016/0165-0114(93)90141-4
Sugeno, 1974
Clement, 1998
Beliakov, 2007, 221
J.E. Buikstra, D.H. Ubelaker, Standards for data collection from human skeletal remains (1994).
Anderson, 2010, Estimation of adult skeletal age-at-death using the Sugeno fuzzy integral, Am. J. Phys. Anthropol., 142, 30
Imai, 2003, On a modeling of decision making with a twofold integral., 714
Tahani, 1990, Information fusion in computer vision using the fuzzy integral, IEEE Trans. Syst. Man Cybern., 20, 733, 10.1109/21.57289
Artec 3d scanners, www.artec3d.com/3d-scanner/artec-spider/.
Ibáñez, 2015, Ground truth data generation for skull–face overlay, Int. J. Legal Med., 129, 10.1007/s00414-014-1074-1
Friedman, 1940, A comparison of alternative tests of significance for the problem of m rankings, Ann. Math. Stat., 11, 86, 10.1214/aoms/1177731944
Dunn, 1961, Multiple comparisons among means, J. Am. Stat. Assoc., 56, 52, 10.1080/01621459.1961.10482090
Jain, 2005, 1
Austin-Smith, 1994, The reliability of skull/photograph superimposition in individual identification, J. Forensic Sci., 39, 446, 10.1520/JFS13615J
Chai, 1989, A study on the standard for forensic anthropologic identification of skull-image superimposition, J. Forensic Sci., 34, 1343
Gordon, 2012, An investigation into the accuracy and reliability of skull-photo superimposition in a South African sample, Forensic Sci. Int., 216, 10.1016/j.forsciint.2011.09.008
Yoshino, 1995, Evaluation of anatomical consistency in craniofacial superimposition images, Forensic Sci. Int., 74, 125, 10.1016/0379-0738(95)01742-2
Ibáñez, 2015, Study on the performance of different craniofacial superimposition approaches (i), Forensic Sci. Int., 257, 496, 10.1016/j.forsciint.2015.05.030
Ibáñez, 2016, Meprocs framework for craniofacial superimposition: validation study, Legal Med., 23, 99, 10.1016/j.legalmed.2016.10.007
Stephan, 2014, Morphometric comparison of clavicle outlines from 3d bone scans and 2d chest radiographs: a shortlisting tool to assist radiographic identification of human skeletons, J. Forensic Sci., 59, 306, 10.1111/1556-4029.12324
Beliakov, 2003, How to build aggregation operators from data, Int. J. Intell. Syst., 18, 903, 10.1002/int.10120
