Fr. 40.90

COMPUTER MODEL OF SPECKLE INTERFERENCE PATTERNS OF BIOOBJECTS - Speckle Images Derived From Speckle Interferometry. DE

English · Paperback / Softback

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Description

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In the current phase of advancement in light scattering optics, it can be asserted that the overarching theory of scattering is presently in a satisfactory, though incomplete, condition. However, specific experimental techniques, particularly the requisite measuring apparatus, remain underdeveloped. This circumstance underscores pertinent scientific foundational objectives, notably the meticulous examination of scattering phenomena in tangible entities through mathematical models or direct measurement of matter's optical parameters based on established principles. Nevertheless, these patterns were disregarded in conventional measurement techniques. Consequently, addressing this issue could substantially enhance measurement precision and the reliability of biological object control and diagnostic outcomes.The dissertation scrutinizes existing approximate techniques for computer-simulated scattering, which are rapid and straightforward, yet lack clearly defined applicability boundaries, alongside experimental investigations and the analysis of experimental data from a laboratory setup to assess biological micro-object parameters.Key words: Laser radiation, blood, speckle fields.

Product details

Authors Mohanad Abuamra, Mykola Bogomolov
Publisher LAP Lambert Academic Publishing
 
Languages English
Product format Paperback / Softback
Released 13.06.2024
 
EAN 9786207653959
ISBN 9786207653959
No. of pages 84
Subject Natural sciences, medicine, IT, technology > Biology > Biochemistry, biophysics

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