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UEU » Journal » Teknik Informatika
Posted by [email protected] at 23/08/2021 01:26:41  •  425 Views


OPTIMIZING ALEXNET USING SWARM INTELLIGENCE FOR CERVICAL CANCER CLASSIFICATION

Created by :
Habibullah Akbar ( 0315108201 )
Nizirwan Anwar ; Siti Rohajawati ; Alivia Yulfitri ; Hafizah Safira Kaurani



SubjectKANKER
KLASIFIKASI
Alt. Subject PARTICLE SWARM OPTIMIZATION
MEDICAL IMAGE PROCESSING
CANCER CLASSIFICATION
KeywordCITRA MEDIS
DATASET

Alt. Description

Abstract � In this study, we optimized a convolutional neural network model i.e. AlexNet to classify images of cervical cancer cells. Although having canonical CNN architecture, AlexNet is only equipped with few hidden layers and thus makes it less efficient for complex objects such as cervical images. To overcome this limitation, we optimized AlexNet using a swarmbased approach (particle swarm optimization). The dataset used is the Intel & MobileODT Cervical Cancer Screening dataset. Firstly, we optimize standard AlexNet based on epoch, data subsets during training (minibatch), learning rate, input image resolution, and training-testing ratio. After having the best parameter values, we derive 3 models of AlexNet based on the number of convolutional layers. Using this approach, AlexNet with a double convolutional layer produces 60.14%, almost as good as the standard residual network on cervical images. However, when AlexNet optimized by swarm-based intelligence (particle swarm optimization) and an additional dropout layer, the accuracy can attain about 67% which is can surpass the standard residual network by 6.22%.

Date Create:23/08/2021
Type:Text
Format:pdf
Language:Indonesian
Identifier:UEU-Journal-11_1826
Collection ID:11_1826


Source :
IEEE, 2021

Relation Collection:
Civitas Akademika Universitas Esa Unggul

Coverage :
Fakultas Ilmu Komputer

Rights :
@2021 Perpustakaan Universitas Esa Unggul


Publication URL :
https://digilib.esaunggul.ac.id/optimizing-alexnet-using-swarm-intelligence-for-cervical-cancer-classification-21250.html




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