Parallel Processing of Images in Mobile Devices using BOINC

Medical image processing helps health professionals make decisions for the diagnosis and treatment of patients. Since some algorithms for processing images require substantial amounts of resources, one could take advantage of distributed or parallel computing. A mobile grid can be an adequate comput...

Full description

Bibliographic Details
Main Authors: Curiel Mariela, Calle David F., Santamaría Alfredo S., Suarez David F., Flórez Leonardo
Format: Article
Language:English
Published: De Gruyter 2018-04-01
Series:Open Engineering
Subjects:
itk
Online Access:https://doi.org/10.1515/eng-2018-0012
Description
Summary:Medical image processing helps health professionals make decisions for the diagnosis and treatment of patients. Since some algorithms for processing images require substantial amounts of resources, one could take advantage of distributed or parallel computing. A mobile grid can be an adequate computing infrastructure for this problem. A mobile grid is a grid that includes mobile devices as resource providers. In a previous step of this research, we selected BOINC as the infrastructure to build our mobile grid. However, parallel processing of images in mobile devices poses at least two important challenges: the execution of standard libraries for processing images and obtaining adequate performance when compared to desktop computers grids. By the time we started our research, the use of BOINC in mobile devices also involved two issues: a) the execution of programs in mobile devices required to modify the code to insert calls to the BOINC API, and b) the division of the image among the mobile devices as well as its merging required additional code in some BOINC components. This article presents answers to these four challenges.
ISSN:2391-5439