Change 2D to 3D In Image Processing Biotechnology

Youssef Ali Alhendawi

Abstract


The main tool for scanning is the electron microscope for bio-gauge. On the other hand, Transmission electron microscopy and Atomic-force microscopy (AFM) are increasingly used for minimum size lineaments in medical, agricultural, and bio-scientific samples. It is also noted that, some natural properties, which give its information is poor and mistakes in probability of discussion, will be high. In this paper, the researcher will tackle this problem using different technique in image processing to get more clarification, sufficient information and in depth the researcher will generate it by more methods as texture map and mosaic method. And will make the comparison between the model and the other hardware laboratory. We have got a series of images that willconstrue using the above-mentioned techniques. The filtering depends on the process of replacing devices and numerical methods that help to analyze the image and samples digitally and also get the third dimension of the first and second dimension as well as find the fourth dimension to find the properties and details of the pictures and samples that we will get. We will build code on many files, collect photos,  medical  and  botanical  samples filter images, process and convert images into data files and then work on the data file to execute programs and icons for all filters and analyzes.

Full Text:

PDF

References


KLIPITEOSTUS: GHOLAMREZA ANBARJAFARI ”DIGITAL IMAGE PROCESSING” ,

http://www.uttv.ee/naita?id=20081

http://youtu.be/FPNGPHkXybo?list=UU-ETlxdihAaw8Pn6_Zz10lg.

I.a.ismail, M.A.Ashabrawy, Using Image's Processing Methods in Bio-Technology, Int. J. Open Problems Compt. Math., Vol. 2, No. 2, 2009.

M.A. Ashabrawy, N. M. A. Ayad, “Using Grid Model for Nano measurements images”, International Journal of Latest Research in Science and Technology, pp.228–233, 2014.

M. A. Ashabrawy, “Using Gradient Model to Compare Between Treatment Samples and Non-Treatment Samples”, IEEE Xplore Digital Library, London, pp.1440–1449, 2015.

Erik Smistad, Thomas L. Falch, Mohammadmehdi Bozorgi, Anne C. Elster and Frank Lindseth “Medical Image Segmentation for Improved Surgical Navigation “, Medical Image Analysis, volume 20, February 2015, pages 1-18. Elsevier B.V.

Ender GunesYegin, KorkutYegin & Osman CavitOzdogan“Digital image analysis in liver fibrosis : basic requirements and clinical implementations ”,Pages 653-660 | Received 31 Jan 2016, Accepted 20 Apr 2016, Published online: 12 May 2016. To link to this article: http://dx.doi.org/10.1080/13102818.2016.1181989.

M. Schwier, T. Chitiboi, T. Hülnhagen, H.K. Hahn “Automated spine and vertebrae detection in CT images using object-based image analysis “, Institute for Medical Image Computing, Fraunhofer MEVIS, Bremen, Germany. First published: 14 August 2013.

Matthew S. Simpson, Dina Demner-Fushman, Sameer K. Antani, George R. Thoma “Multimodal biomedical image indexing and retrieval using descriptive text and global feature mapping“, June 2014, Volume 17, Issue 3, pp 229–264.

AminTermehYousefi (ChECAIKohza),Samiraagheri (Nanotechnology & Catalysis Research Centre (NANOCAT), NahrizulAdib “Integration of biosensors based on microfluidic: a review“, (2015) "Integration of biosensors based on microfluidic: a review", Sensor Review, Vol. 35 Issue: 2, pp.190-199, doi: 10.1108/SR-09-2014-697

http://dx.doi.org/10.1108/SR-09-2014-697

Denis Vadlja ,Martin Koller Email author, Mario Novak ,Gerhart Braunegg, Predrag Horvat “Footprint area analysis of binary imaged Cupriavidusnectar cells to study PHB production at balanced, transient, and limited growth conditions in a cascade process “,ApplMicrobiol Biotechnol. 2016 Dec;100(23):10065-10080. Epub 2016 Oct 3.

Esmael Hamuda, , Martin Glavin, Edward Jones“A survey of image processing techniques for plant extraction and segmentation in the field“,Computers and Electronics in Agriculture archive Volume 125 Issue C, July 2016.

Sachin D. Khirade, A. B. Patil “Plant Disease Detection Using Image Processing”, 2015 International Conference on Computing Communication Control and Automation.

A. Camargo, J.S. Smith, “An image-processing based algorithm to automatically identify plant disease visual symptoms”, Jun 08, 2016.


Refbacks

  • There are currently no refbacks.


Abava   MSU conference 2018

ISSN: 2307-8162