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一种基于樽海鞘群算法的植物病害检测新特征选择策略

A Novel Feature Selection Strategy Based on Salp Swarm Algorithm for Plant Disease Detection.

作者信息

Xie Xiaojun, Xia Fei, Wu Yufeng, Liu Shouyang, Yan Ke, Xu Huanliang, Ji Zhiwei

机构信息

College of Artificial Intelligence, Nanjing Agricultural University, Nanjing, Jiangsu 210095, China.

Center for Data Science and Intelligent Computing, Nanjing Agricultural University, Nanjing, Jiangsu 210095, China.

出版信息

Plant Phenomics. 2023 May 11;5:0039. doi: 10.34133/plantphenomics.0039. eCollection 2023.

Abstract

Deep learning has been widely used for plant disease recognition in smart agriculture and has proven to be a powerful tool for image classification and pattern recognition. However, it has limited interpretability for deep features. With the transfer of expert knowledge, handcrafted features provide a new way for personalized diagnosis of plant diseases. However, irrelevant and redundant features lead to high dimensionality. In this study, we proposed a swarm intelligence algorithm for feature selection [salp swarm algorithm for feature selection (SSAFS)] in image-based plant disease detection. SSAFS is employed to determine the ideal combination of handcrafted features to maximize classification success while minimizing the number of features. To verify the effectiveness of the developed SSAFS algorithm, we conducted experimental studies using SSAFS and 5 metaheuristic algorithms. Several evaluation metrics were used to evaluate and analyze the performance of these methods on 4 datasets from the UCI machine learning repository and 6 plant phenomics datasets from PlantVillage. Experimental results and statistical analyses validated the outstanding performance of SSAFS compared to existing state-of-the-art algorithms, confirming the superiority of SSAFS in exploring the feature space and identifying the most valuable features for diseased plant image classification. This computational tool will allow us to explore an optimal combination of handcrafted features to improve plant disease recognition accuracy and processing time.

摘要

深度学习已在智慧农业的植物病害识别中得到广泛应用,并已被证明是图像分类和模式识别的强大工具。然而,它对深度特征的可解释性有限。通过转移专家知识,手工制作的特征为植物病害的个性化诊断提供了一种新方法。然而,不相关和冗余的特征会导致高维性。在本研究中,我们提出了一种用于基于图像的植物病害检测的特征选择群体智能算法[用于特征选择的樽海鞘群算法(SSAFS)]。SSAFS用于确定手工制作特征的理想组合,以在最小化特征数量的同时最大化分类成功率。为了验证所开发的SSAFS算法的有效性,我们使用SSAFS和5种元启发式算法进行了实验研究。使用了几个评估指标来评估和分析这些方法在来自UCI机器学习库的4个数据集和来自PlantVillage的6个植物表型组学数据集上的性能。实验结果和统计分析验证了SSAFS与现有最先进算法相比的出色性能,证实了SSAFS在探索特征空间和识别患病植物图像分类中最有价值特征方面的优越性。这种计算工具将使我们能够探索手工制作特征的最佳组合,以提高植物病害识别的准确性和处理时间。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1d14/10204742/3bae1e4f5845/plantphenomics.0039.fig.001.jpg

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