Efficient Segmentation of Tumor and Edema MR Images Using Optimized FFNN Algorithm

被引:0
作者
Kalam, Rehna [1 ]
Rahiman, M. Abdul [1 ]
机构
[1] Kerala Univ, Thiruvananthapuram, Kerala, India
来源
COMPUTATIONAL VISION AND BIO-INSPIRED COMPUTING ( ICCVBIC 2021) | 2022年 / 1420卷
关键词
Segmentation; Feature extraction; Optimization; Filtering; Skull stripping; Classification;
D O I
10.1007/978-981-16-9573-5_56
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Brain tumor categorization and segmentation play a crucial in the existing healthcare domain In this research study, an effective technique for brain magnetic resonance imaging (MRI) image segmentation and classification is demonstrated in order to improve accurate brain tumor segmentation. The anticipated brain tumor segmentation technique includes five phases, namely preprocessing, filtering, feature extraction, and classification along with segmentation. In the preprocessing stage, from the MRI database, the input MRI image is primarily fetched, and additionally, it is exposed to the skull stripping in order to remove the unwanted zone from the image. Skull stripped image is refined by utilizing a filter recognized as the adaptive median filter. However, the constituents of discrete wavelet transform (DWT), probability, skewness, and kurtosis are detached from the filtered images. Cuckoo search optimized feedforward neural network (FFNN) classifier categorizes the brain images like normal and also abnormal concerning the extracted features. Finally, the gray matter (GM), white matter (WM) along with cerebrospinal fluid (CSF) are apportioned as of the normal images through k-means clustering, and later, the cancer is segmented by utilizing EM algorithm, and the edema region is apportioned by utilizing watershed algorithm from the anomalous images, respectively. Henceforth, the outcomes will be investigated for exhibiting the accomplishment of the recommended classification and also segmentation techniques.
引用
收藏
页码:779 / 794
页数:16
相关论文
共 17 条
[1]  
Ali H, 2018, IEEE ENER CONV, P1, DOI 10.1109/ECCE.2018.8558269
[2]  
Bauer S, 2014, I S BIOMED IMAGING, P862, DOI 10.1109/ISBI.2014.6868007
[3]   MRI segmentation fusion for brain tumor detection [J].
Cabria, Ivan ;
Gondra, Iker .
INFORMATION FUSION, 2017, 36 :1-9
[4]   Brain Tumour Detection using Unsupervised Learning based Neural Network [J].
Goswami, Suchita ;
Bhaiya, Lalit Kumar P. .
2013 INTERNATIONAL CONFERENCE ON COMMUNICATION SYSTEMS AND NETWORK TECHNOLOGIES (CSNT 2013), 2013, :573-577
[5]  
Gupta S., 2010, PATTERN RECOGN, V43, P3548
[6]   Localized active contour model with background intensity compensation applied on automatic MR brain tumor segmentation [J].
Ilunga-Mbuyamba, Elisee ;
Gabriel Avina-Cervantes, Juan ;
Garcia-Perez, Arturo ;
de Jesus Romero-Troncoso, Rene ;
Aguirre-Ramos, Hugo ;
Cruz-Aceves, Ivan ;
Chalopin, Claire .
NEUROCOMPUTING, 2017, 220 :84-97
[7]   A low cost approach for brain tumor segmentation based on intensity modeling and 3D Random Walker [J].
Kanas, Vasileios G. ;
Zacharaki, Evangelia I. ;
Davatzikos, Christos ;
Sgarbas, Kyriakos N. ;
Megalooikonomou, Vasileios .
BIOMEDICAL SIGNAL PROCESSING AND CONTROL, 2015, 22 :19-30
[8]  
Karuppathal R., 2014, ARPN J ENG APPL SCI, V9
[9]  
Mohsen Heba, 2018, Future Computing and Informatics Journal, V3, P68, DOI 10.1016/j.fcij.2017.12.001
[10]  
Murali E.., 2018, INT J SIMUL SYST SCI, V19