Water Wheel Plant Dingo Optimizer enabled Deep Convolutional Neural Network for disease detection using hyperspectral leaf image

IF 3.1 3区 物理与天体物理 Q2 INSTRUMENTS & INSTRUMENTATION
S. Swaraj, S. Aparna
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引用次数: 0

Abstract

Problem

In many countries, agriculture is the main source of people’s livelihood and satisfies their nutritional needs. Early detection of plant diseases through agricultural remote monitoring is important to prevent the disease’s spread. The traditional methods require sampling and can damage the plant, but hyperspectral imaging is non-destructive.

Aim

The major aim of this research is to devise a Water Wheel Plant Dingo Optimizer_Deep Convolutional Neural Network (WWPDO_Deep CNN) for disease detection using a hyperspectral leaf image.

Methods

Initially, the input leaf image is given into the leaf segmentation phase, which is done using the proposed Water Wheel Plant Dingo Optimizer (WWPDO), which is the amalgamation of the Water Wheel Plant Algorithm (WWPA) and Dingo Optimizer (DOX). The selected bands’ outputs are subjected to leaf segmentation and which is carried out by employing Bayesian Fuzzy Clustering (BFC). Thereafter, leaf segmented outputs are fussed using the majority voting method. Fused output and individual leaf segmentation output are given into the feature extraction process to extract features, such as local binary patterns and Weber local descriptors. Finally, leaf disease detection is performed using a deep Convolutional Neural Network (Deep CNN) for normal and abnormal cases. The hyperparameters of the Deep CNN are fine-tuned based on the proposed WWPADO.

Results

The proposed WWPDO_Deep CNN achieved an excellent performance with an accuracy of 91.35 %, a True Positive Rate (TPR) of 93.13 % and a True Negative Rate (TNR) of 90.76 %.

Conclusion

The WWPDO_Deep CNN is applicable for early diagnosis under the new classification system and provides a new direction for early diagnosis based on hyperspectral images. Also, the devised model provides an accurate diagnosis of plant diseases. Early and accurate detection allows targeted treatment, reduces the need for widespread pesticide application and promotes more sustainable farming practices.

启用深度卷积神经网络的水轮植物鼎优化器,利用高光谱叶片图像进行病害检测
问题在许多国家,农业是人们生活的主要来源,也是满足人们营养需求的主要手段。通过农业遥感监测及早发现植物病害对于防止病害蔓延非常重要。本研究的主要目的是设计一种利用高光谱叶片图像进行病害检测的水轮植物鼎鼎彩票手机APP安装优化器_深度卷积神经网络(WWPDO_Deep CNN)。方法首先,输入的叶片图像进入叶片分割阶段,该阶段使用所提出的水轮植物丁戈优化器(WWPDO)完成,该优化器是水轮植物算法(WWPA)和丁戈优化器(DOX)的混合体。选定波段的输出将进行叶片分割,并采用贝叶斯模糊聚类(BFC)技术。之后,使用多数投票法对叶片分割输出进行细分。融合后的输出和单个叶片分割输出将进入特征提取流程,以提取局部二进制模式和韦伯局部描述符等特征。最后,使用深度卷积神经网络(Deep CNN)对正常和异常情况进行叶片病害检测。结论 WWPDO_Deep CNN 适用于新分类系统下的早期诊断,为基于高光谱图像的早期诊断提供了新的方向。此外,所设计的模型还能准确诊断植物病害。早期准确的检测可实现有针对性的治疗,减少大面积施用农药的需要,促进更可持续的农业实践。
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来源期刊
CiteScore
5.70
自引率
12.10%
发文量
400
审稿时长
67 days
期刊介绍: The Journal covers the entire field of infrared physics and technology: theory, experiment, application, devices and instrumentation. Infrared'' is defined as covering the near, mid and far infrared (terahertz) regions from 0.75um (750nm) to 1mm (300GHz.) Submissions in the 300GHz to 100GHz region may be accepted at the editors discretion if their content is relevant to shorter wavelengths. Submissions must be primarily concerned with and directly relevant to this spectral region. Its core topics can be summarized as the generation, propagation and detection, of infrared radiation; the associated optics, materials and devices; and its use in all fields of science, industry, engineering and medicine. Infrared techniques occur in many different fields, notably spectroscopy and interferometry; material characterization and processing; atmospheric physics, astronomy and space research. Scientific aspects include lasers, quantum optics, quantum electronics, image processing and semiconductor physics. Some important applications are medical diagnostics and treatment, industrial inspection and environmental monitoring.
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