Document of bibliographic reference 347596

BibliographicReference record

Type
Bibliographic resource
Type of document
Journal article
BibLvlCode
AS
Title
Cephalopod species identification using integrated analysis of machine learning and deep learning approaches
Abstract

Background

Despite the high commercial fisheries value and ecological importance as prey item for higher marine predators, very limited taxonomic work has been done on cephalopods in Malaysia. Due to the soft-bodied nature of cephalopods, the identification of cephalopod species based on the beak hard parts can be more reliable and useful than conventional body morphology. Since the traditional method for species classification was time-consuming, this study aimed to develop an automated identification model that can identify cephalopod species based on beak images.

Methods

A total of 174 samples of seven cephalopod species were collected from the west coast of Peninsular Malaysia. Both upper and lower beaks were extracted from the samples and the left lateral views of upper and lower beak images were acquired. Three types of traditional morphometric features were extracted namely grey histogram of oriented gradient (HOG), colour HOG, and morphological shape descriptor (MSD). In addition, deep features were extracted by using three pre-trained convolutional neural networks (CNN) models which are VGG19, InceptionV3, and Resnet50. Eight machine learning approaches were used in the classification step and compared for model performance.

Results

The results showed that the Artificial Neural Network (ANN) model achieved the best testing accuracy of 91.14%, using the deep features extracted from the VGG19 model from lower beak images. The results indicated that the deep features were more accurate than the traditional features in highlighting morphometric differences from the beak images of cephalopod species. In addition, the use of lower beaks of cephalopod species provided better results compared to the upper beaks, suggesting that the lower beaks possess more significant morphological differences between the studied cephalopod species. Future works should include more cephalopod species and sample size to enhance the identification accuracy and comprehensiveness of the developed model.

WebOfScience code
https://www.webofscience.com/wos/woscc/full-record/WOS:000683839700001
Bibliographic citation
Tan, H.Y.; Goh, Z.Y.; Loh, K-H.; Then, A.Y.-H.; Omar, H.; Chang, S.-W. (2021). Cephalopod species identification using integrated analysis of machine learning and deep learning approaches. PeerJ 9: e11825. https://dx.doi.org/10.7717/peerj.11825
Topic
Marine
Is peer reviewed
true
Access rights
open access
Is accessible for free
true

Authors

author
Name
Hui Yuan Tan
author
Name
Zhi Yun Goh
author
Name
Kar-Hoe Loh
author
Name
Amy Yee-Hui Then
author
Name
Hasmahzaiti Omar
author
Name
Siow-Wee Chang

Links

referenced creativework
type
DOI
accessURL
https://dx.doi.org/10.7717/peerj.11825

taxonomic terms

taxonomic terms associated with this publication
Cephalopoda

Document metadata

date created
2021-11-25
date modified
2021-11-29