An Efficient Texture Feature Selection and Classification of Mammographic Image using AQPSO

Abstract

 In computer-aided diagnosis systems, Image processing algorithms can be used to extract features directly from digitized mammograms. In general, two classes of features are extracted from mammograms with these algorithms, such as morphological and non-morphological features. Image texture analysis is one of an important technique that represents gray level properties of images used to illustrate non-morphological features. This technique has made known to be a promising technique in analyzing mammographic lesions caused by masses. The texture descriptor namely entropy, energy, sum average, sum variance, and cluster tendency has been analyzed for texture pattern ROI. These textures features are derived from co-occurrence matrices, wavelet and ridgelet transforms of mammographic images. Earlier work used Genetic algorithm and Random Forest algorithm for selection and classification of these features. In order to improve the performance, proposed system uses Adaptive Quantum-behaved Particle swarm optimization for feature selection process. Comparison of AQPSO with Genetic Algorithm can be done experimentally and proves that the proposed system provides better result when compare with existing work

Authors and Affiliations

Varsha Baby

Keywords

Related Articles

PROPERTIES OF CONCRETE WITH RED MUD AS PARTIAL REPLACEMENT OF CEMENT WITH HYDRATED LIME AND SUPERPLASTICIZER

In this research an attempt has been made to produce different grades of concrete using huge industrial waste such as red mud as a partial replacement of cement with the hydrated lime. This project presents the results...

 A STUDY ON BRAIN–MACHINE INTERFACE (BMI)

 A brain–machine interface (BMI), sometimes called a mind-machine interface (MMI), or sometimes called a direct neural interface (DNI), synthetic telepathy interface (STI) or a brain–machine interface (BMI), is a d...

 Private Information Retrieval from Cloud in a Distributed Location

 Cloud computing a big buzzword now-a-days and IT Industry talks about it a lot and they started to move to Cloud. Cloud is mainly for Storage, Elasticity, Sharing, and Fast Access. Mainly for storage purpose Priva...

 Dynamic Neighbour Discovery on Manet Through Efficient Hello Messaging Scheme Using OSPF Protocol

 In Mobile Ad hoc Networks (MANETs), nodes are capable of frequently changing their location. For effective routing, each and every node is expected to keep track of its moving neighborhood. So whenever the neighb...

 Research on Analysis of Hindi language Graphical user Interface

 The interface between humans and computers is an ever critical issue due to the increased complexity of computerized systems and the wide variety of problems they solve. Controlled natural languages might prove a...

Download PDF file
  • EP ID EP95442
  • DOI -
  • Views 62
  • Downloads 0

How To Cite

Varsha Baby (30).  An Efficient Texture Feature Selection and Classification of Mammographic Image using AQPSO. International Journal of Engineering Sciences & Research Technology, 3(3), 1698-1702. https://europub.co.uk/articles/-A-95442