Image data model optimization method based on cloud computing

Abstract In the current age of data explosion, the amount of data has reached incredible proportions. Digital image data constitute most of these data. With the development of science and technology, the demand for networked work and life continues to grow. Cloud computing technology plays an increa...

Full description

Bibliographic Details
Main Authors: Jingyu Liu, Jing Wu, Linan Sun, Hailong Zhu
Format: Article
Language:English
Published: SpringerOpen 2020-06-01
Series:Journal of Cloud Computing: Advances, Systems and Applications
Subjects:
Online Access:http://link.springer.com/article/10.1186/s13677-020-00178-7
id doaj-1acfc1c062bd4fa49e9992c8d878eeaf
record_format Article
spelling doaj-1acfc1c062bd4fa49e9992c8d878eeaf2020-11-25T03:14:56ZengSpringerOpenJournal of Cloud Computing: Advances, Systems and Applications2192-113X2020-06-019111010.1186/s13677-020-00178-7Image data model optimization method based on cloud computingJingyu Liu0Jing Wu1Linan Sun2Hailong Zhu3Harbin Normal UniversityZhengZhou Preschool education collegeHeihe UniversityHarbin Normal UniversityAbstract In the current age of data explosion, the amount of data has reached incredible proportions. Digital image data constitute most of these data. With the development of science and technology, the demand for networked work and life continues to grow. Cloud computing technology plays an increasingly important role in life and work. This paper studies the optimization methods for cloud computing image data recognition models. The parallelization and task scheduling of the remote-sensing image classification model SCSRC based on spatial correlation regularization and sparse representation are studied in a cloud computing platform. First, cloud detection technology, combined with the dynamic features of the edge overlap region, is implemented in cloud computing mode. For image edge overlap region detection, the SCSRC method is implemented on a single machine, and the time performance of the method is analysed experimentally, which provides a basis for parallelization research under the cloud computing platform. Finally, the speedup and expansion ratio of the SK-SCSRC algorithm are determined by experiment, and MR-SCSRC and SK-SCSRC are compared. The simulation results show that, compared to previous methods, the method of image edge overlap detection is more accurate and the image fusion is better, which improves the image recognition ability in the overlap region and demonstrates the performance improvement of the MR-SCSRC algorithm under scheduling. This method addresses the shortcomings of Hadoop’s existing scheduler and can be integrated into remote-sensing cloud computing systems in the future.http://link.springer.com/article/10.1186/s13677-020-00178-7Cloud computingData modelImage processingOptimization method
collection DOAJ
language English
format Article
sources DOAJ
author Jingyu Liu
Jing Wu
Linan Sun
Hailong Zhu
spellingShingle Jingyu Liu
Jing Wu
Linan Sun
Hailong Zhu
Image data model optimization method based on cloud computing
Journal of Cloud Computing: Advances, Systems and Applications
Cloud computing
Data model
Image processing
Optimization method
author_facet Jingyu Liu
Jing Wu
Linan Sun
Hailong Zhu
author_sort Jingyu Liu
title Image data model optimization method based on cloud computing
title_short Image data model optimization method based on cloud computing
title_full Image data model optimization method based on cloud computing
title_fullStr Image data model optimization method based on cloud computing
title_full_unstemmed Image data model optimization method based on cloud computing
title_sort image data model optimization method based on cloud computing
publisher SpringerOpen
series Journal of Cloud Computing: Advances, Systems and Applications
issn 2192-113X
publishDate 2020-06-01
description Abstract In the current age of data explosion, the amount of data has reached incredible proportions. Digital image data constitute most of these data. With the development of science and technology, the demand for networked work and life continues to grow. Cloud computing technology plays an increasingly important role in life and work. This paper studies the optimization methods for cloud computing image data recognition models. The parallelization and task scheduling of the remote-sensing image classification model SCSRC based on spatial correlation regularization and sparse representation are studied in a cloud computing platform. First, cloud detection technology, combined with the dynamic features of the edge overlap region, is implemented in cloud computing mode. For image edge overlap region detection, the SCSRC method is implemented on a single machine, and the time performance of the method is analysed experimentally, which provides a basis for parallelization research under the cloud computing platform. Finally, the speedup and expansion ratio of the SK-SCSRC algorithm are determined by experiment, and MR-SCSRC and SK-SCSRC are compared. The simulation results show that, compared to previous methods, the method of image edge overlap detection is more accurate and the image fusion is better, which improves the image recognition ability in the overlap region and demonstrates the performance improvement of the MR-SCSRC algorithm under scheduling. This method addresses the shortcomings of Hadoop’s existing scheduler and can be integrated into remote-sensing cloud computing systems in the future.
topic Cloud computing
Data model
Image processing
Optimization method
url http://link.springer.com/article/10.1186/s13677-020-00178-7
work_keys_str_mv AT jingyuliu imagedatamodeloptimizationmethodbasedoncloudcomputing
AT jingwu imagedatamodeloptimizationmethodbasedoncloudcomputing
AT linansun imagedatamodeloptimizationmethodbasedoncloudcomputing
AT hailongzhu imagedatamodeloptimizationmethodbasedoncloudcomputing
_version_ 1724641408670760960