Dwarf Mongoose Optimization with Transfer Learning-Based Fish Behavior Classification Model

IF 0.8 Q4 COMPUTER SCIENCE, SOFTWARE ENGINEERING
B. Samhitha, R. Subhashini
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引用次数: 0

Abstract

Behavioral monitoring can be used to monitor aquatic ecosystems and water quality over time. Using precise and rapid fish performance detection, fishermen may make educated management decisions on recirculating aquaculture systems while decreasing labor. Sensors and procedures for recognizing fish behavior are often developed and prepared by researchers in big numbers. Deep learning (DL) techniques have revolutionized the capability to automatically analyze videos, which were utilized for behavior analysis, live fish detection, biomass estimation, water quality monitoring, and species classification. The benefit of DL is that it could automatically study the extraction of image features and reveals brilliant performance in identifying sequential actions. This paper focuses on the design of Dwarf Mongoose Optimization with Transfer Learning-based fish behavior classification (DMOTLB-FBC) model. The presented DMOTLB-FBC technique intends to effectively monitor and classify fish behaviors. Initially, the DMOTLB-FBC technique follows Gaussian filtering (GFI) technique for noise removal process. Besides, a transfer learning (TL)-based neural architectural search network (NASNet) model is used to produce a collection of feature vectors. For fish behavior classification, graph convolution network (GCN) model is employed in this work. To improve the fish behavior classification results of the DMOTLB-FBC technique, the DWO algorithm is applied as a hyperparameter optimizer of the GCN model. The experimentation analysis of the DMOTLB-FBC technique is tested on fish video dataset and the widespread comparison study reported the enhancements of the DMOTLB-FBC technique over other recent approaches.
利用基于迁移学习的鱼类行为分类模型优化矮獴
行为监测可用于长期监测水生生态系统和水质。利用精确、快速的鱼类行为检测,渔民可以对循环水产养殖系统做出明智的管理决策,同时减少劳动力。识别鱼类行为的传感器和程序通常由研究人员大量开发和准备。深度学习(DL)技术彻底改变了自动分析视频的能力,可用于行为分析、活鱼检测、生物量估算、水质监测和物种分类。DL 的优势在于它可以自动研究图像特征的提取,并在识别连续动作方面表现出色。本文的重点是设计基于迁移学习的矮獴优化鱼类行为分类模型(DMOTLB-FBC)。所提出的 DMOTLB-FBC 技术旨在对鱼类行为进行有效监控和分类。最初,DMOTLB-FBC 技术采用高斯滤波(GFI)技术来去除噪声。此外,还使用了基于迁移学习(TL)的神经架构搜索网络(NASNet)模型来生成特征向量集合。在鱼类行为分类方面,本研究采用了图卷积网络(GCN)模型。为了改善 DMOTLB-FBC 技术的鱼类行为分类结果,采用了 DWO 算法作为 GCN 模型的超参数优化器。在鱼类视频数据集上对 DMOTLB-FBC 技术进行了实验分析和广泛的比较研究,结果表明 DMOTLB-FBC 技术比其他最新方法有所提高。
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来源期刊
International Journal of Image and Graphics
International Journal of Image and Graphics COMPUTER SCIENCE, SOFTWARE ENGINEERING-
CiteScore
2.40
自引率
18.80%
发文量
67
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