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Mammogram Image Retrieval using Ipso Optimized Anfis Classifier
Author(s) -
Sonia Jenifer Rayen,
R. Subhashini,
Kanchan Lata Kashyap,
Manish Bajpai,
Pritee Khanna,
Prakash Vibhav,
Ashim Singh,
Shubham Gupta,
Rajeev Singh,
Srivastava,
Lazaros Tsochatzidis,
Konstantinos Zagoris,
Nikolaos Arikidis,
Anna Karahaliou,
Lena Costaridou,
Ioannis Pratikakis,
Sami Dhahbi,
Walid Barhoumi,
Ezzeddine Zagrouba,
Marcos Vinicius,
Naves Bedo,
Davi Pereira Dos Santos,
Marcelo Ponciano-Silva,
Paulo Mazzoncini De Azevedo-Marques,
Caetano Traina,
Fradj Ben Lamine,
Karim Kalti,
Lotfi Ben Romdhane,
Shobha Jose,
D Chandy,
Devang Kulshreshtha,
Prakash Vibhav,
Ayush Singh,
Arpit Shrivastava,
Rajeev Chaudhary,
Srivastava,
Thenkalvi Boomilingam,
Murugavalli Subramaniam,
K Vaidehi,
T Subashini,
Juan Wang,
Yongyi Yang,
D Abraham Chandy,
A Hepzibah,
Alwyn Christinal,
John Theodore,
S Selvan,
Ramzi Chaieb,
Karim Kalti,
Menglin Jiang,
Shaoting Zhang,
Hongsheng Li,
Dimitris Metaxas,
Liliana Losurdo,
Annarita Fanizzi,
Teresa Basile,
Roberto Bellotti,
Ubaldo Bottigli,
Rosalba Dentamaro,
Vittorio Didonna,
Vibhav Prakash Singh,
Rajeev Srivastava,
A Mugahed,
Mohammed Al-Antari,
Sung-Un Al-Masni,
Junhyeok Park,
Mohamed Park,
Metwally,
M Yasser,
Seung-Moo Kadah,
Tae-Seong Han,
Kim,
Syed Jamal,
Safdar Gardezi,
Ibrahima Faye,
Jose Sanchez Bornot,
Nidal Kamel,
Mohammad Hussain,
Birmohan Singh,
Manpreet Kaur,
Ardalan Ghasemzadeh,
Saeed Sarbazi Azad,
Elham Esmaeili,
Chisako Muramatsu,
M Saravanan,
S Sukanya,
Dr Rajesh Kannan,
Gandhi,
V Nirmalrani,
P Saravanan,
P Sakthivel
Publication year - 2019
Publication title -
international journal of innovative technology and exploring engineering
Language(s) - English
Resource type - Journals
ISSN - 2278-3075
DOI - 10.35940/ijitee.i1165.0789s219
Subject(s) - artificial intelligence , pattern recognition (psychology) , computer science , euclidean distance , image retrieval , classifier (uml) , feature extraction , feature vector , content based image retrieval , particle swarm optimization , local binary patterns , segmentation , computer vision , image (mathematics) , histogram , machine learning
Content-based image retrieval (CBIR) is an research area over the past years that has attracted research. In various medical applications like mammogram analysis CBIR techniques helps the medical team to get similar set of images from a large medical records to help in diagnosis of a disease. This paper proposes an efficient Content-Based Mammogram Image Retrieval method by using an Optimized Classifier. Initially, the input dataset is preprocessed, in which noise removal and contrast enhancement are done. Next, pectoral muscles of the mammogram images are removed using Single Sided Edge Marking (SSEM). Now, feature extraction is done, in which GLCM features, Gabor features and the Local Pattern with Binary features are being removed. The features that are being removed are classified into three classes namely benign, malignant and normal. An optimized classifier named as Adaptive Neuro Fuzzy Inference System (ANFIS), which is optimized by using the Improved Particle Swarm Optimization (IPSO) technique, is used for classification purpose. Finally, similarity is assessed between the trained feature distance vectors and the feature distance vectors of the input query image. Similarity assessment is done using Euclidean Distance metric and the image that has the lowest distance compared with the query is retrieved. The experimental results are obtained for the proposed system and they are compared with the existing techniques.

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