|
UPT. PERPUSTAKAAN
Universitas Esa Unggul
Kampus Emas UEU - Jakarta Barat
|
Phone |
: |
021-5674223, ext 282 |
Fax |
: |
|
E-mail |
: |
[email protected] |
Website |
: |
http://library.esaunggul.ac.id
|
Support (Customer Service) :
|
[email protected] |
|
|
Welcome..guys!
|
Have a problem with your access?
Please, contact our technical support below:
|
LIVE SUPPORT
Astrid Chrisafi
|
! ATTENTION !
To facilitate the activation process, please fill out the member application form correctly and completely
Registration activation of our members will process up to max 24 hours (confirm by email). Please wait patiently
Still Confuse?
Please read our User Guide
|
|
UEU » Journal » Teknik Informatika Posted by [email protected] at 23/08/2021 01:26:41 • 417 Views
OPTIMIZING ALEXNET USING SWARM INTELLIGENCE FOR CERVICAL CANCER CLASSIFICATIONCreated by :
Habibullah Akbar ( 0315108201 ) Nizirwan Anwar ; Siti Rohajawati ; Alivia Yulfitri ; Hafizah Safira Kaurani
Subject: | KANKER KLASIFIKASI | Alt. Subject : | PARTICLE SWARM OPTIMIZATION MEDICAL IMAGE PROCESSING CANCER CLASSIFICATION | Keyword: | CITRA 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
[ Free Download - Free for All ]
- UEU-Journal-21250-11_1826.pdf - 1141 KB
[ FullText Content - Please, register first ]
...No Files...
10 Similar Document...
No similar subject found !
10 Related Document...
No related subject found !
|
POLLINGBagaimana pendapat Anda tentang repository kami ?
Visitors Today : 1
Total Visitor : 1970008
Hits Today : 10390
Total Hits : 154615223
Visitors Online: 1
Calculated since 16 May 2012
You are connected from 172.17.121.29 using Mozilla/5.0 AppleWebKit/537.36 (KHTML, like Gecko; compatible; ClaudeBot/1.0; [email protected])
|