- Format
- Inbunden (Hardback)
- Språk
- Engelska
- Antal sidor
- 542
- Utgivningsdatum
- 2015-12-02
- Förlag
- Academic Press
- Illustrationer
- illustrations
- Dimensioner
- 236 x 196 x 33 mm
- Vikt
- Antal komponenter
- 1
- ISBN
- 9780128025819
- 1317 g
Du kanske gillar
-
Sapiens
Yuval Noah Harari
HäftadStolen Focus
Johann Hari
HäftadMedical Image Recognition, Segmentation and Parsing
Machine Learning and Multiple Object Approaches
av S Kevin Zhou1349- Skickas inom 10-15 vardagar.
- Gratis frakt inom Sverige över 199 kr för privatpersoner.
Finns även somPassar bra ihop
De som köpt den här boken har ofta också köpt Dopamine Nation av Dr Anna Lembke (häftad).
Köp båda 2 för 1474 krKundrecensioner
Har du läst boken? Sätt ditt betyg »Fler böcker av S Kevin Zhou
-
Deep Learning for Medical Image Analysis
S Kevin Zhou
-
Deep Network Design for Medical Image Computing
Haofu Liao, S Kevin Zhou, Jiebo Luo
-
Recognition of Humans and Their Activities Using Video
Rama Chellappa, Amit K Roy-Chowdhury, S Kevin Zhou
Övrig information
S. Kevin Zhou, Ph.D. is currently a Principal Key Expert Scientist at Siemens Healthcare Technology Center, leading a team of full time research scientists and students dedicated to researching and developing innovative solutions for medical and industrial imaging products. His research interests lie in computer vision and machine/deep learning and their applications to medical image analysis, face recognition and modeling, etc. He has published over 150 book chapters and peer-reviewed journal and conference papers, registered over 250 patents and inventions, written two research monographs, and edited three books. He has won multiple technology, patent and product awards, including R&D 100 Award and Siemens Inventor of the Year. He is an editorial board member for Medical Image Analysis journal and a fellow of American Institute of Medical and Biological Engineering (AIMBE).
Innehållsförteckning
Preface Chapter 1 Introduction to Medical Image Recognition and Parsing Chapter 2 Discriminative Anatomy Detection: Classification vs. Regression Chapter 3: Information Theoretic Landmark Detection Chapter 4: Submodular Landmark Detection Chapter 5: Random Forests for Anatomy Recognition Chapter 6: Integrated Detection Network for Multiple Object Recognition Chapter 7: Optimal Graph-Based Method for Multi-Object Segmentation Chapter 8: Parsing of Multiple Organs Using Learning Method and Level Sets Chapter 9: Context Integration for Rapid Multiple Organ Parsing Chapter 10: Multi-Atlas Methods and Label Fusion Chapter 11: Multi-Compartment Segmentation Framework Chapter 12: Deformable Segmentation via Sparse Representation and Dictionary Learning Chapter 13: Simultaneous Nonrigid Registration, Segmentation, and Tumor Detection Chapter 14: Whole Brain Anatomical Structure Parsing Chapter 15: Aortic and Mitral Valve Segmentation Chapter 16: Parsing of Heart, Chambers and Coronary Vessels Chapter 17: Spine Segmentation Chapter 18: Parsing of Rib and Knee Bones Chapter 19: Lymph Node Segmentation Chapter 20: Polyp Segmentation from CT Colonoscopy