Fish Classification using Saliency Detection Depending on Shape and Texture



Document title: Fish Classification using Saliency Detection Depending on Shape and Texture
Journal: Computación y sistemas
Database:
System number: 000560654
ISSN: 1405-5546
Authors: 1
1
2
Institutions: 1Bangabandhu Sheikh Mujibur Rahman Science and Technology University, Computer Science and Engineering, Bangladés
2Chittagong University of Engineering and Technology, Computer Science and Engineering, Chittagong Division. Bangladés
Year:
Season: Ene-Mar
Volumen: 26
Number: 1
Pages: 303-310
Country: México
Language: Inglés
English abstract Classification of fishes becomes important after the advancement of machine learning. As fishes play a vital role in the economy of Bangladesh, a proper monitoring system will maximize the cultivation. It will also contribute to the overall economy. Therefore, here introduce a system that can detect the fishes and compare various methods with explanations to understand the selected methods. This paper have considered 5 categories of local fishes of Bangladesh in the dataset. The technique consists of preprocessing with segmentation, feature descriptor, and ensembles to produce the final result. U2-net is used in the preprocessing layer to obtain two types of features namely shaped images and colored images with removed backgrounds. To get the features, we have used a histogram of oriented gradient (HOG) and an ensemble layer is used for classification purposes. Experimental results illustrate the accuracy of 99.77% for the first ensemble and 100% for the second ensemble layer on our dataset of 2678 fishes of 5 distinguishing classes. Various layers were used to compare the predicted results using different performance metrics.
Keyword: U2-net,
Hog,
Knn,
SVM,
Logistic regression,
Decision tree,
Fish classification,
Segmentation,
Salient object detection
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