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Segmentation of Hand Bone for Bone Age Assessment (eBook)

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2013 | 2013
XVI, 132 Seiten
Springer Singapore (Verlag)
978-981-4451-66-6 (ISBN)

Lese- und Medienproben

Segmentation of Hand Bone for Bone Age Assessment - Yan Chai Hum
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The objective of this Brief is to provide a solution to the unsolved technical problem in segmentation for the automated bone age assessment system. The task is accomplished by first applying the modified histogram equalized module, then applying the proposed automated anisotropic diffusion technique. It is followed by a novel fuzzy quadruple division scheme to optimize the central segmentation algorithm, and then an additional quality assurance scheme. The designed segmentation framework works without demanding scarce resources such as training sets and skillful operators. The results have shown that the designed framework is capable of separating the soft-tissue and background from the hand bone with high accuracy. This Brief should be especially useful for students and professional researchers in the Biomedical and image processing fields.

Dr. Hum Yan Chai received his PhD in the field of Biomedical Imaging from the Universiti Teknologi Malaysia (UTM). He is currently working as a researcher in the Medical Implant Technology Group (MEDITEG), Materials and Manufacturing Research Alliance. His research interests are: computerized bone age assessment, Digital X-Ray imaging, medical image processing, filter design, fuzzy logic, medical computing and performance optimization. He serves as the member of editorial board for a few international journals in relevant fields. He is also a program committee member and peer reviewer for over 15 international conferences.
The objective of this Brief is to provide a solution to the unsolved technical problem in segmentation for the automated bone age assessment system. The task is accomplished by first applying the modified histogram equalized module, then applying the proposed automated anisotropic diffusion technique. It is followed by a novel fuzzy quadruple division scheme to optimize the central segmentation algorithm, and then an additional quality assurance scheme. The designed segmentation framework works without demanding scarce resources such as training sets and skillful operators. The results have shown that the designed framework is capable of separating the soft-tissue and background from the hand bone with high accuracy. This Brief should be especially useful for students and professional researchers in the Biomedical and image processing fields.

Dr. Hum Yan Chai received his PhD in the field of Biomedical Imaging from the Universiti Teknologi Malaysia (UTM). He is currently working as a researcher in the Medical Implant Technology Group (MEDITEG), Materials and Manufacturing Research Alliance. His research interests are: computerized bone age assessment, Digital X-Ray imaging, medical image processing, filter design, fuzzy logic, medical computing and performance optimization. He serves as the member of editorial board for a few international journals in relevant fields. He is also a program committee member and peer reviewer for over 15 international conferences.

1     Introduction1.1  Introduction1.2  Background of the problem1.3  Problem statements1.4  Objectives of the book/brief1.5   Scopes1.6   Provided information and insights1.7   Book Organization2     The conventional segmentation methods2.1   Introduction2.2   Thresholding     2.2.1  Global Thresholding     2.2.2  Adaptive Thresholding     2.2.3  Dynamic Thresholding     2.2.4  Automated Thresholding     2.2.5  Summary2.3   Edge-based      2.3.1  Edge Detectors      2.3.2  Edge linking      2.3.3  Summary2.4   Region-based       2.4.1  Seeded Region Growing       2.4.2  Region Splitting and Merging       2.4.3  Summary3    The advanced segmentation method3.1  Hybrid-based     3.1.1  Watershed Segmentation     3.1.2  Summary 3.2   Deformable Model      3.2.1 Active Contour Model      3.2.2 Active Shape Model      3.2.3 Active Appearance Model      3.2.4 Summary4    The possible solution 4.1  Introduction4.2  The Proposed Segmentation Framework4.3   Pre-processing      4.3.1  The  Proposed MBOBHE             4.3.1.1 Modeling of  Criteria as Single Modal Objective Beta Function              4.3.1.2 Optimal Solution of the Aggregated Multiple Objectives Function               4.3.1.3 Histogram Decomposition               4.3.1.4 Execution of GHE on Each Sub-Histogram         4.3.2  The Application of Anisotropic Diffusion                4.3.2.1 Parameter-free Diffusion Strength Function                4.3.2.2 Automated Scale Selection4.4   The Proposed Adaptive Crossed Reconstruction (ACR) Algorithm Design       4.4.1  Clustering Algorithm Applied in the Proposed Segmentation Framework       4.4.2  Automated Block Division Scheme in Adaptive Segmentation                4.4.2.1 The Framework of the Proposed Scheme                4.4.2.2 The Mechanism of the Automated Fuzzy Quadruple Division Scheme4.5  Quality Assurance Process       4.5.1  Gray Level Intensity of Interest Identification for Elimination         4.5.2  Hand Bone Edge Detection Technique Using Entropy         4.5.3  The Area Restoration and Elimination Analysis4.6   Summary5    Result analysis and discussion5.1  Introduction5.2  Performance Evaluation of the Proposed MBOBHE5.3  Anisotropic Diffusion in the Proposed Segmentation Framework5.4  Segmentation Evaluation      5.4.1  User-specified parameters               5.4.1.1  Active Appearance Model               5.4.1.2  The Proposed Framework                5.4.1.3  Interpretation       5.4.2  Segmentation Accuracy               5.4.2.1 Evaluation on Automated Fuzzy Quadruple Division Scheme                5.4.2.2 Evaluation on Quality Assurance Process               5.4.2.3 Accuracy Evaluation of the Proposed Segmentation Framework5.5  Summary6 Conclusion and Recommendation6.1 Conclusion6.2  Future works

Erscheint lt. Verlag 25.5.2013
Reihe/Serie SpringerBriefs in Applied Sciences and Technology
SpringerBriefs in Applied Sciences and Technology
Zusatzinfo XVI, 132 p. 51 illus., 27 illus. in color.
Verlagsort Singapore
Sprache englisch
Themenwelt Medizin / Pharmazie Gesundheitsfachberufe
Medizinische Fachgebiete Radiologie / Bildgebende Verfahren Radiologie
Medizin / Pharmazie Physiotherapie / Ergotherapie Orthopädie
Studium 1. Studienabschnitt (Vorklinik) Biochemie / Molekularbiologie
Naturwissenschaften Physik / Astronomie
Technik Bauwesen
Technik Elektrotechnik / Energietechnik
Technik Medizintechnik
Schlagworte Active Contour Model • Automated Anisotropic Diffusion • Bone Age Assessment • Central Segmentation Algorithm • clustering algorithm • Edge Detectors • Fuzzy Quadruple Division • Hand Bone Segmentation • Ossification Development • Region Splitting and Merging • Seeded Region Growing • Thresholding • Watershed Segmentation
ISBN-10 981-4451-66-5 / 9814451665
ISBN-13 978-981-4451-66-6 / 9789814451666
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