害虫分类:可解释的少量学习与卷积神经网络与迁移学习

IF 3.7 Q2 MULTIDISCIPLINARY SCIENCES Scientific African Pub Date : 2025-03-01 Epub Date: 2024-12-21 DOI:10.1016/j.sciaf.2024.e02512
Nitiyaa Ragu , Jason Teo
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引用次数: 0

摘要

害虫严重威胁植物产量和整体农业生产力,导致农业产量下降。农作物害虫的准确、自动化检测是有效防治害虫和优化利用农业资源的关键。本研究通过探索可解释的少量学习(FSL)的潜力来解决害虫检测中数据集有限的问题,FSL是一种机器学习方法,不仅可以从少量数据中学习,还可以为决策过程提供可解释的见解。与传统的依赖于大型标记数据集或黑箱模型的害虫检测研究不同,本研究引入了一种先进的方法,将可解释性技术(如gradi - cam)集成到FSL模型中,特别是原型网络和暹罗网络。这种双重方法确保了以最少的训练数据实现高精度,同时识别影响预测的关键图像特征,从而提高透明度和信任度。使用全害虫图像、半害虫图像和马来西亚害虫图像对卷积神经网络(CNN)和迁移学习模型进行了比较分析。本研究发现,Explainable FSL在包括9路1枪、3枪、5枪和10枪配置的各种场景下的准确率最高,达到99.81%,优于CNN和迁移学习模型。这些发现表明,即使数据有限,可解释的FSL模型也可以显著提高害虫检测系统的准确性、透明度和效率。通过提高人工智能(AI)系统的检测能力和可解释性,本研究为智能农业做出了新的贡献,使强大的害虫检测系统能够适应现实世界中数据稀缺的场景。
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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Pest classification: Explainable few-shot learning vs. convolutional neural networks vs. transfer learning
Pests significantly threaten plant yield and overall agricultural productivity, leading to reduced output in the farming industry. Accurate and automated detection of crop insect pests is crucial for effective pest control and optimal utilization of agricultural resources. This study addresses the problem of limited datasets in pest detection by exploring the potential of Explainable Few-Shot Learning (FSL), a machine learning approach that not only enables learning from a small amount of data but also provides interpretable insights into the decision-making process. Unlike traditional pest detection studies that rely on large labeled datasets or black-box models, this research introduces an advanced methodology by integrating explainability techniques such as Grad-CAM into FSL models, specifically Prototypical Network and Siamese Network. This dual approach ensures high accuracy with minimal training data while identifying key image features influencing predictions, thereby enhancing transparency and trust. A comparative analysis was conducted against Convolutional Neural Network (CNN) and transfer learning models using full pest images, half pest images, and Malaysian pest images. This study found that Explainable FSL achieved the highest accuracy of 99.81 % in various scenarios, including 9-way 1-shot, 3-shot, 5-shot, and 10-shot configurations, outperforming both CNN and transfer learning models. These findings demonstrate that Explainable FSL models can significantly improve the accuracy, transparency, and efficiency of pest detection systems, even with limited data. By advancing both the detection capabilities and interpretability of Artificial Intelligence (AI) systems, this research provides a novel contribution to smart agriculture, enabling robust pest detection systems tailored to real-world, data-scarce scenarios.
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来源期刊
Scientific African
Scientific African Multidisciplinary-Multidisciplinary
CiteScore
5.60
自引率
3.40%
发文量
332
审稿时长
10 weeks
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