利用CNN识别番茄植物病害的比较综述

Rishabh Mudgil, Nidhi Garg, Preeti Singh, C. Madhu
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引用次数: 2

摘要

背景:番茄作为蔬菜或水果在全国许多地区被广泛种植,在番茄的整个生命周期中会遇到多种形式的番茄病虫害;因此,及早发现和诊断这些疾病至关重要。近年来,几种深度学习方法在植物病害识别中的应用越来越受欢迎,并在不同病害上取得了令人鼓舞的结果。问题:基于卷积神经网络(CNN)的架构的进步通过使用番茄叶片图像大大提高了番茄疾病的诊断准确性。CNN在农业部门的整合确保了以可持续的方式增加番茄作物的产量。然而,CNN技术的复杂性和执行时间是值得关注的问题。目的:在大多数深度学习模型中,各层生成的所有特征都被赋予相同的权重。需要学习重要的特征,并将其转移到网络的更高层,以便进行更精确的分类。为了提高CNN的性能,图像(大数据集)的重用和共享是提高番茄病害检测准确率的重要工作。方法:本文对近年来应用cnn技术检测番茄病害的研究进展进行了综述。以精度为度量标准,对这些工作进行了比较分析。结果:本研究采用cnn对细菌性溃疡病和斑点病、黄叶卷曲病、褐果病、冠腐病和根腐病、早疫病、束顶病、Stolbur病的鉴定研究进行了全面评估。结论:在训练数据充足的情况下,CNN扫描识别疾病的准确率较高。我们期望我们的研究将为农业疾病研究人员利用技术进行疾病早期诊断和管理提供有用的资源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of Tomato Plant Diseases Using CNN- A Comparative Review
Background: Tomatoes are extensively farmed as a vegetable or fruit in many regions of the country, and many forms of tomato pests and diseases are met over the whole life cycle of tomatoes; thus, early identification and diagnosis of these diseases is critical. The application of several deep learning approaches for identification of plant diseases has recently gained popularity, with encouraging results obtained for different diseases. Problem: The advancement of architectures based on Convolutional Neural Network (CNN) has considerably improved diagnostic accuracy of tomato diseases by using images of tomato leaves. The integration of CNN in the agricultural sector ensures an increased produce of tomato crop in a sustainable manner. However, complexity and performance time of CNN technique is a significant concern. Objective: In most deep learning models, all characteristics generated at various layers are given equal weighting. Significant characteristics should be learned and transferred to higher layers of the network for more exact classification. To improve the CNN performance, reuse and sharing of images (large dataset) is a great work required for tomato disease detection to get high accuracy. Methods: In this paper, we have presented a comprehensive review of twenty recent and notable works which employ CNN-based detection of tomato plant diseases. A comparative analysis of these works is given, taking accuracy as the metric. Results: A complete assessment of Bacterial Canker and Speck, Yellow Leaf Curl, Brown Rugose Fruit, Crown and Root Rot, Early Blight, Bunchy Top, Stolbur disease identification studies employing CNNs in this study. Conclusion: It is observed that CNN scan identify diseases with high accuracy when enough training data is provided. We anticipate that our study will be a useful resource for agricultural disease researchers employing technology for early disease diagnosis and management.
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