Fish Species Recognition with Faster R-CNN Inception-v2 using QUT FISH Dataset

Fish species conservation had a big impact on the natural ecosystems balanced. The existence of efficient technology in identifying fish species could help fish conservation. The most recent research related to was a classification of fish species using the Deep Learning method. Most of the deep lea...

Full description

Bibliographic Details
Main Authors: Yonatan Adiwinata, Akane Sasaoka, I Putu Agung Bayupati, Oka Sudana
Format: Article
Language:Indonesian
Published: Universitas Udayana 2020-12-01
Series:Lontar Komputer
Online Access:https://ojs.unud.ac.id/index.php/lontar/article/view/66597
id doaj-7e32f816ec924b37bb9e397f8b7b9f7d
record_format Article
spelling doaj-7e32f816ec924b37bb9e397f8b7b9f7d2021-01-22T14:30:40ZindUniversitas UdayanaLontar Komputer2088-15412541-58322020-12-0111314415410.24843/LKJITI.2020.v11.i03.p0366597Fish Species Recognition with Faster R-CNN Inception-v2 using QUT FISH DatasetYonatan Adiwinata0Akane Sasaoka1I Putu Agung Bayupati2Oka Sudana3Department of Information Technology, Faculty of Engineering, Udayana UniversityElectrical Engineering and Computer Sciense, Kanazawa UniversityDepartment of Information Technology, Faculty of Engineering, Udayana UniversityDepartment of Information Technology, Faculty of Engineering, Udayana UniversityFish species conservation had a big impact on the natural ecosystems balanced. The existence of efficient technology in identifying fish species could help fish conservation. The most recent research related to was a classification of fish species using the Deep Learning method. Most of the deep learning methods used were Convolutional Layer or Convolutional Neural Network (CNN). This research experimented with using object detection method based on deep learning like Faster R-CNN, which possible to recognize the species of fish inside of the image without more image preprocessing. This research aimed to know the performance of the Faster R-CNN method against other object detection methods like SSD in fish species detection. The fish dataset used in the research reference was QUT FISH Dataset. The accuracy of the Faster R-CNN reached 80.4%, far above the accuracy of the Single Shot Detector (SSD) Model with an accuracy of 49.2%.https://ojs.unud.ac.id/index.php/lontar/article/view/66597
collection DOAJ
language Indonesian
format Article
sources DOAJ
author Yonatan Adiwinata
Akane Sasaoka
I Putu Agung Bayupati
Oka Sudana
spellingShingle Yonatan Adiwinata
Akane Sasaoka
I Putu Agung Bayupati
Oka Sudana
Fish Species Recognition with Faster R-CNN Inception-v2 using QUT FISH Dataset
Lontar Komputer
author_facet Yonatan Adiwinata
Akane Sasaoka
I Putu Agung Bayupati
Oka Sudana
author_sort Yonatan Adiwinata
title Fish Species Recognition with Faster R-CNN Inception-v2 using QUT FISH Dataset
title_short Fish Species Recognition with Faster R-CNN Inception-v2 using QUT FISH Dataset
title_full Fish Species Recognition with Faster R-CNN Inception-v2 using QUT FISH Dataset
title_fullStr Fish Species Recognition with Faster R-CNN Inception-v2 using QUT FISH Dataset
title_full_unstemmed Fish Species Recognition with Faster R-CNN Inception-v2 using QUT FISH Dataset
title_sort fish species recognition with faster r-cnn inception-v2 using qut fish dataset
publisher Universitas Udayana
series Lontar Komputer
issn 2088-1541
2541-5832
publishDate 2020-12-01
description Fish species conservation had a big impact on the natural ecosystems balanced. The existence of efficient technology in identifying fish species could help fish conservation. The most recent research related to was a classification of fish species using the Deep Learning method. Most of the deep learning methods used were Convolutional Layer or Convolutional Neural Network (CNN). This research experimented with using object detection method based on deep learning like Faster R-CNN, which possible to recognize the species of fish inside of the image without more image preprocessing. This research aimed to know the performance of the Faster R-CNN method against other object detection methods like SSD in fish species detection. The fish dataset used in the research reference was QUT FISH Dataset. The accuracy of the Faster R-CNN reached 80.4%, far above the accuracy of the Single Shot Detector (SSD) Model with an accuracy of 49.2%.
url https://ojs.unud.ac.id/index.php/lontar/article/view/66597
work_keys_str_mv AT yonatanadiwinata fishspeciesrecognitionwithfasterrcnninceptionv2usingqutfishdataset
AT akanesasaoka fishspeciesrecognitionwithfasterrcnninceptionv2usingqutfishdataset
AT iputuagungbayupati fishspeciesrecognitionwithfasterrcnninceptionv2usingqutfishdataset
AT okasudana fishspeciesrecognitionwithfasterrcnninceptionv2usingqutfishdataset
_version_ 1724327598395228160