Essential Computer Graphics Techniques for Modeling,Animating,and Rendering Biomolecules and Cells: A Guide for the Scientist and Artist
by: Giorgio Luciano
Hardcover: 228 pages
Publisher: A K Peters/CRC Press; 1 edition (21 April 2019)
Language: English
ISBN-10: 1498799213
ISBN-13: 9781498799218
Book Description
The book helps readers develop fundamental skills in the field of biomedical illustrations with a training approach based on step-by: -step tutorials with a practical approach. Medical/scientific illustration mainly belongs to professionals in the art field or scientists trying to create artistic visualization. There is not a merging between the two,even if the demand is high. This leads to accurate scientific images with no appeal (or trivial mistakes),or appealing CSI-like images with huge scientific mistakes. This gives the fundamentals to the scientist so they can apply CG techniques that give a more scientific approach creating mistake-free images.
Key Features
This book provides a reference where none exist.
Without overwhelming the reader with software details it teaches basic principles to give readers to fundamentals to create.
Demonstrates professional artistic tools used by: scientists to create better images for their work.
Coverage of lighting and rendering geared specifically for scientific work that is toturoal based with a practical approach.
Included are chapter tutorials,key terms and end of chapter references for Art and Scientific References for each chapter.
Essential Computer Graphics Techniques for Modeling,Animating,and Rendering Biomolecules and Cells: A Guide for the Scientist and Artist
未经允许不得转载:finelybook » Essential Computer Graphics Techniques for Modeling,Animating,and Rendering Biomolecules and Cells: A Guide for the Scientist and Artist
相关推荐
- High Performance Control of AC Drives With Matlab / Simulink Models
- x64 Assembly Language Step-by-Step: Programming with Linux, 4th Edition
- Math Learning Strategies: How Parents and Teachers Can Help Kids Excel in Math
- Model-Based Reinforcement Learning: From Data to Continuous Actions with a Python-based Toolbox
finelybook
