番茄斑病病毒检测和强度分类的新曙光:CNN和LSTM集成模型

Rishabh Sharma, V. Kukreja, Satvik Vats
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引用次数: 0

摘要

番茄斑点枯萎病毒(TSWV)是一种严重的植物病害,给全球番茄生产造成重大经济损失。tswv侵染番茄植株的早期检测和强度分级是有效防治的关键。本文提出了一种基于卷积神经网络(CNN)和长短期记忆(LSTM)网络集成模型的TSWV检测和强度分类方法。收集了包含30,000张感染TSWV的番茄植株图像的数据集,并按6个强度级别进行了注释,从0(表示无症状)到5(表示严重症状)。开发了一种框架方法,旨在提高模型的性能,所提出的方法在测试集上的总体准确率达到97.37%,优于几种最先进的方法。我们还对分类准确率的强度等级间变异性进行了统计分析,发现准确率随着强度等级的增加而增加。结果表明,该方法可用于TSWV感染番茄植株的早期检测和强度分类,有助于及时采取预防措施,减少TSWV造成的经济损失。
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A New Dawn for Tomato-spotted wilt virus Detection and Intensity Classification: A CNN and LSTM Ensemble Model
Tomato-spotted wilt virus (TSWV) is a severe plant disease that causes significant economic losses in tomato production worldwide. Early detection and intensity classification of TSWV-infected tomato plants is critical for effective disease management. This study proposes a novel TSWV detection and intensity classification approach based on a convolutional neural network (CNN) and a long short-term memory (LSTM) network ensemble model. A dataset comprising 30,000 images of tomato plants infected with TSWV was gathered and annotated with six intensity levels, ranging from 0 (indicating no symptoms) to 5 (indicating severe symptoms). A framework approach was developed, with aiming to enhancing the model’s performance r proposed approach achieved an overall accuracy of 97.37% on the test set, outperforming several state-of-the-art approaches. We also performed a statistical analysis of the inter-intensity level variability of the classification accuracy and found that the accuracy increased with the intensity level. Our results suggest that the proposed approach has the potential to be used in the early detection and intensity classification of TSWV-infected tomato plants, which could aid in the timely application of preventive measures and reduce the economic losses caused by TSWV.
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