Mathematics division, School of Advanced Sciences and Languages, VIT Bhopal University, Kothrikalan, Sehore, 466116, M.P., India.
School of Computing Science and Engineering, VIT Bhopal University, Kothrikalan, Sehore, 466116, M.P., India.
Chem Biodivers. 2023 Aug;20(8):e202201123. doi: 10.1002/cbdv.202201123. Epub 2023 Jul 26.
The most significant groupings of cold-blooded creatures are the fish family. It is crucial to recognize and categorize the most significant species of fish since various species of seafood diseases and decay exhibit different symptoms. Systems based on enhanced deep learning can replace the area's currently cumbersome and sluggish traditional approaches. Although it seems straightforward, classifying fish images is a complex procedure. In addition, the scientific study of population distribution and geographic patterns is important for advancing the field's present advancements. The goal of the proposed work is to identify the best performing strategy using cutting-edge computer vision, the Chaotic Oppositional Based Whale Optimization Algorithm (CO-WOA), and data mining techniques. Performance comparisons with leading models, such as Convolutional Neural Networks (CNN) and VGG-19, are made to confirm the applicability of the suggested method. The suggested feature extraction approach with Proposed Deep Learning Model was used in the research, yielding accuracy rates of 100 %. The performance was also compared to cutting-edge image processing models with an accuracy of 98.48 %, 98.58 %, 99.04 %, 98.44 %, 99.18 % and 99.63 % such as Convolutional Neural Networks, ResNet150V2, DenseNet, Visual Geometry Group-19, Inception V3, Xception. Using an empirical method leveraging artificial neural networks, the Proposed Deep Learning model was shown to be the best model.
冷血动物中最重要的群体是鱼类家族。识别和分类最重要的鱼类物种非常重要,因为各种海鲜疾病和腐烂表现出不同的症状。基于增强深度学习的系统可以替代该地区目前繁琐和缓慢的传统方法。虽然看起来很简单,但对鱼类图像进行分类是一个复杂的过程。此外,对人口分布和地理模式的科学研究对于推进该领域目前的进展非常重要。拟议工作的目标是使用最先进的计算机视觉、混沌对立鲸鱼优化算法(CO-WOA)和数据挖掘技术来确定最佳执行策略。与领先模型(如卷积神经网络(CNN)和 VGG-19)进行性能比较,以确认所提出方法的适用性。该研究采用了基于深度学习模型的建议特征提取方法,准确率达到 100%。还将性能与最先进的图像处理模型进行了比较,准确率分别为 98.48%、98.58%、99.04%、98.44%、99.18%和 99.63%,如卷积神经网络、ResNet150V2、DenseNet、视觉几何组-19、Inception V3、Xception。使用基于人工神经网络的经验方法,证明所提出的深度学习模型是最佳模型。