Improved Convolutional Network With Transfer Learning and Texture Feature Extractor for Plant Disease Detection

IF 1.1 4区 农林科学 Q3 PLANT SCIENCES
Tushar V. Kafare, Nirmal Sharma, Anil L. Wanare
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引用次数: 0

Abstract

Global agriculture is seriously threatened by plant diseases, which have an effect on output and food security. For disease care to be effective, prompt detection and precise diagnosis are essential. Traditional methods reliant on the visual inspection are labour-intensive and subjective. Recent technological advances in computer vision and machine learning offer promising solutions. This paper introduces the Transfer Learning-based Plant Disease Detection (TL-PDD) framework, which integrates preprocessing, segmentation, feature extraction and disease prediction stages. Initial preprocessing employs median filtering for data refinement. Segmentation, utilising the Adaptive Pixel Integration in Joint Segmentation (APIJS) approach, isolates disease-affected regions in plant images through a variant of DJS. Feature extraction includes the extraction of critical attributes such as Multi-texton, PHOG and Niblack's Method Assisted in Local Gabor Increasing Pattern (NMA-LGIP). Disease prediction employs a novel Double Convolutional Activation in Convolutional Neural Network-Transfer Learning (DCA-CNN-TL) model, facilitating disease classification and severity assessment based on extracted features. The efficiency and precision of plant disease detection systems can be improved by this framework, supporting efforts to ensure global food security and sustainable agriculture.

基于迁移学习和纹理特征提取的改进卷积网络用于植物病害检测
全球农业受到植物病害的严重威胁,影响产量和粮食安全。要使疾病护理有效,及时发现和准确诊断至关重要。依靠目视检查的传统方法是劳动密集型和主观的。计算机视觉和机器学习的最新技术进步提供了有前途的解决方案。介绍了基于迁移学习的植物病害检测(TL-PDD)框架,该框架集成了预处理、分割、特征提取和病害预测四个阶段。初始预处理采用中值滤波进行数据细化。分割,利用联合分割中的自适应像素集成(APIJS)方法,通过DJS的一种变体分离植物图像中的疾病影响区域。特征提取包括多文本、PHOG和Niblack的局部Gabor增加模式辅助方法(NMA-LGIP)等关键属性的提取。疾病预测采用了一种新颖的卷积神经网络迁移学习(DCA-CNN-TL)模型中的双卷积激活,便于基于提取的特征进行疾病分类和严重程度评估。该框架可提高植物病害检测系统的效率和精度,支持确保全球粮食安全和可持续农业的努力。
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
Journal of Phytopathology
Journal of Phytopathology 生物-植物科学
CiteScore
2.90
自引率
0.00%
发文量
88
审稿时长
4-8 weeks
期刊介绍: Journal of Phytopathology publishes original and review articles on all scientific aspects of applied phytopathology in agricultural and horticultural crops. Preference is given to contributions improving our understanding of the biotic and abiotic determinants of plant diseases, including epidemics and damage potential, as a basis for innovative disease management, modelling and forecasting. This includes practical aspects and the development of methods for disease diagnosis as well as infection bioassays. Studies at the population, organism, physiological, biochemical and molecular genetic level are welcome. The journal scope comprises the pathology and epidemiology of plant diseases caused by microbial pathogens, viruses and nematodes. Accepted papers should advance our conceptual knowledge of plant diseases, rather than presenting descriptive or screening data unrelated to phytopathological mechanisms or functions. Results from unrepeated experimental conditions or data with no or inappropriate statistical processing will not be considered. Authors are encouraged to look at past issues to ensure adherence to the standards of the journal.
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