Image noise Detection and Removal based on Enhanced GridLOF Algorithm

Abstract

Image noise removal is a major task in image processing where noise can harness any information inferred from the image especially when the noise level is high. Although there exists many outlier detection approaches used for this task, more enhancements are needed to achieve better performance specifically in terms of time. This paper proposes a new algorithm to detect and remove noise from images depending on an enhanced version of GridLOF algorithm. The enhancement aims to reduce the time and complexity of the algorithm while attaining comparable accuracy. Simulation results on a set of different images proved that proposed algorithm achieves the standard accuracy.

Authors and Affiliations

Ahmed M. Elmogy, Eslam Mahmoud, Fahd A. Turki

Keywords

Related Articles

Comparison of Workflow Scheduling Algorithms in Cloud Computing 

Cloud computing has gained popularity in recent times. Cloud computing is internet based computing, whereby shared resources, software and information are provided to computers and other devices on demand, like a public...

Efficient Smart Emergency Response System for Fire Hazards using IoT

The Internet of Things pertains to connecting currently unconnected things and people. It is the new era in transforming the existed systems to amend the cost effective quality of services for the society. To support Sma...

Content based Document Classification using Soft Cosine Measure

Document classification is a deep-rooted issue in information retrieval and assumed to be an imperative part of an assortment of applications for effective management of text documents and substantial volumes of unstruct...

Parallel Architecture for Face Recognition using MPI

The face recognition applications are widely used in different fields like security and computer vision. The recognition process should be done in real time to take fast decisions. Princi-ple Component Analysis (PCA) con...

Performance Comparison of Detection, Recognition and Tracking Rates of the different Algorithms

This article discusses the approach of human detection and tracking in a homogeneous domain using surveillance cameras. This is a vast area in which significant research has been taking place from more than a decade and...

Download PDF file
  • EP ID EP259620
  • DOI 10.14569/IJACSA.2017.081260
  • Views 86
  • Downloads 0

How To Cite

Ahmed M. Elmogy, Eslam Mahmoud, Fahd A. Turki (2017). Image noise Detection and Removal based on Enhanced GridLOF Algorithm. International Journal of Advanced Computer Science & Applications, 8(12), 454-462. https://europub.co.uk/articles/-A-259620