A Robust Feature Construction for Fish Classification Using Grey Wolf Optimizer

IF 1.2 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS
P. Santosa, R. A. Pramunendar
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引用次数: 0

Abstract

Abstract The low quality of the collected fish image data directly from its habitat affects its feature qualities. Previous studies tended to be more concerned with finding the best method rather than the feature quality. This article proposes a new fish classification workflow using a combination of Contrast-Adaptive Color Correction (NCACC) image enhancement and optimization-based feature construction called Grey Wolf Optimizer (GWO). This approach improves the image feature extraction results to obtain new and more meaningful features. This article compares the GWO-based and other optimization method-based fish classification on the newly generated features. The comparison results show that GWO-based classification had 0.22% lower accuracy than GA-based but 1.13 % higher than PSO. Based on ANOVA tests, the accuracy of GA and GWO were statistically indifferent, and GWO and PSO were statistically different. On the other hand, GWO-based performed 0.61 times faster than GA-based classification and 1.36 minutes faster than the other.
基于灰狼优化器的鱼类分类鲁棒特征构建
摘要直接从鱼类栖息地采集的图像数据质量较低,影响了图像的特征质量。以往的研究更倾向于寻找最佳方法,而不是特征质量。本文提出了一种结合对比自适应色彩校正(NCACC)图像增强和基于优化的特征构建的新的鱼类分类工作流程,称为灰狼优化器(GWO)。该方法改进了图像特征提取结果,获得了新的、更有意义的特征。本文在新生成的特征上比较了基于gwo和其他基于优化方法的鱼类分类。对比结果表明,基于gwo的分类准确率比基于ga的分类准确率低0.22%,比基于PSO的分类准确率高1.13%。经方差分析,GA和GWO的准确率无统计学差异,GWO和PSO的准确率有统计学差异。另一方面,基于gwo的分类比基于ga的分类快0.61倍,比基于ga的分类快1.36分钟。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Cybernetics and Information Technologies
Cybernetics and Information Technologies COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
3.20
自引率
25.00%
发文量
35
审稿时长
12 weeks
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