Repository logo
Log In(current)
  1. Home
  2. Colleges & Schools
  3. Graduate School
  4. Masters Theses
  5. Automated Fragmentary Bone Matching
Details

Automated Fragmentary Bone Matching

Date Issued
December 1, 2013
Author(s)
Mustafa, Ali Saad  
Advisor(s)
Mohamed R. Mahfouz
Additional Advisor(s)
Richard D. Komistek, William R. Hamel
Permanent URI
https://trace.tennessee.edu/handle/20.500.14382/38613
Abstract

Identification, reconstruction and matching of fragmentary bones are basic tasks required to accomplish quantification and analysis of fragmentary human remains derived from forensic contexts. Appropriate techniques for three-dimensional surface matching have received great attention in computer vision literature, and various methods have been proposed for matching fragmentary meshes; however, many of these methods lack automation, speed and/or suffer from high sensitivity to noise. In addition, reconstruction of fragementary bones along with identification in the presence of reference model to compare with in an automatic scheme have not been addressed. In order to address these issues, we used a multi-stage technique for fragment identification, matching and registration.


The study introduces an automated technique for matching of fragmentary human skeletal remains for improving forensic anthropology practice and policy. The proposed technique involves creation of surfaces models for the fragmentary elements which can be done using computerized tomographic scans followed by segmentation. Upon creation of the fragmentary elements models, the models go through feature extraction technique where the surface roughness map of each model is measured using local shape analysis measures. Adaptive thesholding is then used to extract model features. A multi-stage technique is then used to identify, match and register bone fragments to their corresponding template bone model. First, extracted features are used for matching with different template bone models using iterative closest point algorithm with different positions and orientations. The best match score, in terms of minimum root-mean-square error, is used along with the position and orientation and the resulting transformation to register the fragment bone model with the corresponding template bone model using iterative closest point algorithm.

Disciplines
Other Biomedical Engineering and Bioengineering
Degree
Master of Science
Major
Biomedical Engineering
Embargo Date
December 15, 2014
File(s)
Thumbnail Image
Name

Thesis_v0.8.docx

Size

1.43 MB

Format

Microsoft Word XML

Checksum (MD5)

81ce75ffda8518a3d70b6ae0dc10a3b4

Thumbnail Image
Name

Thesis_v2.0.pdf

Size

3.42 MB

Format

Adobe PDF

Checksum (MD5)

64f12423a14702da9bf4023a1d503ef9

Built with DSpace-CRIS software - Extension maintained and optimized by 4Science

  • Privacy policy
  • End User Agreement
  • Send Feedback
  • Contact
  • Libraries at University of Tennessee, Knoxville
Repository logo COAR Notify