Efficiency in Orchid Species Classification: A Transfer Learning-Based Approach

IF 0.8 Q4 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Jianhua Wang, Haozhan Wang
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引用次数: 0

Abstract

Orchid is a type of plant that grows on land. It is highly valued for its beauty and is cherished by many because of its graceful flower shape, delicate fragrance, vibrant colors, and noble symbolism. Although there are various types of orchids, some of them look similar in appearance and color, making it challenging for people to distinguish them quickly and accurately. The existing methods for classifying orchid species face issues with accuracy due to the similarities between different species and the differences within the same species. This affects their practical use. To address these challenges, this paper introduces an efficient method for classifying orchid species using transfer learning. The main achievement of this study is the successful utilization of transfer learning to achieve accurate orchid species classification. This approach reduces the need for large datasets, minimizes overfitting, cuts down on training time and costs, and enhances classification accuracy. Specifically, the proposed approach involves four phases. First, we gathered a collection of 12 orchid image sets, totaling 12,227 images, through a combination of network sources and field photography. Next, we analyzed the distinctive features present in the collected orchid image sets. We identified certain connections between the acquired orchid datasets and other datasets. Finally, we employed transfer learning technology to create an efficient classification function for orchid species based on these relationships. As a result, our proposed method effectively addresses the challenges highlighted. Experimental results demonstrate that our classification algorithm, which utilizes transfer learning, achieves a classification accuracy rate of 96.16% compared to not using the transfer learning method. This substantial improvement in accuracy greatly enhances the efficiency of orchid classification.
兰花物种分类效率:基于迁移学习的方法
兰花是一种生长在陆地上的植物。它因其美丽而受到高度重视,因其优雅的花型,细腻的香味,鲜艳的色彩和高贵的象征意义而受到许多人的珍视。虽然兰花种类繁多,但有些在外观和颜色上看起来很相似,这给人们快速准确地区分它们带来了挑战。现有的兰花种类分类方法由于不同种间的相似性和同一种内的差异性而面临准确性问题。这影响了它们的实际使用。为了解决这些问题,本文介绍了一种利用迁移学习进行兰花种类分类的有效方法。本研究的主要成果是成功地利用迁移学习实现了兰科植物的准确分类。这种方法减少了对大数据集的需求,最大限度地减少了过拟合,减少了训练时间和成本,提高了分类精度。具体来说,拟议的方法包括四个阶段。首先,我们通过网络资源和实地摄影相结合,收集了12组兰花图像,共计12227幅图像。接下来,我们分析了所收集的兰花图像集中存在的显著特征。我们确定了所获得的兰花数据集与其他数据集之间的某些联系。最后,利用迁移学习技术建立了一个有效的兰花种类分类函数。因此,我们提出的方法有效地解决了突出的挑战。实验结果表明,采用迁移学习方法的分类算法与未采用迁移学习方法的分类准确率相比达到96.16%。准确度的大幅提高大大提高了兰花分类的效率。
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
CiteScore
2.90
自引率
0.00%
发文量
25
期刊介绍: The International Journal of Computational Intelligence and Applications, IJCIA, is a refereed journal dedicated to the theory and applications of computational intelligence (artificial neural networks, fuzzy systems, evolutionary computation and hybrid systems). The main goal of this journal is to provide the scientific community and industry with a vehicle whereby ideas using two or more conventional and computational intelligence based techniques could be discussed. The IJCIA welcomes original works in areas such as neural networks, fuzzy logic, evolutionary computation, pattern recognition, hybrid intelligent systems, symbolic machine learning, statistical models, image/audio/video compression and retrieval.
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