使用基于元启发式的加权特征选择和 LSTM 模型对芒果树进行多病分类

IF 0.8 Q4 COMPUTER SCIENCE, SOFTWARE ENGINEERING
S. Veling, T. B. Mohite-Patil
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引用次数: 0

摘要

全球粮食安全可能会受到作物病害的影响,因为多种病害会直接影响谷物、蔬菜、水果等的质量,进而影响农业生产率。与其他植物一样,芒果树也会受到多种病害的影响,而且单片叶片的多种病害分类识别较为复杂,也无法通过肉眼发现病害。在其他植物的基础上,芒果树也会受到多种病害的影响,裸眼检测病害更加困难。它容易出错、不连贯、不可靠。在这里,芒果树在生产过程中会受到影响,也会因多种病害影响植物健康。当植物受到病害影响时,可能会导致产量下降,从而影响经济效益。然而,对于种类繁多的树木和植物来说,检测植物病害更为关键。有关深度学习方法的各种研究任务都侧重于识别植物(包括叶片和果实)的病害。因此,本文的主要目的是通过果实和叶片图像,实施一种诊断芒果树病害及其症状的有效而适当的技术。因此,这项工作的主要目的是采用一种高效、合适的技术,通过果实和叶片图像来诊断芒果树的病害并确定其症状。为了克服现有的挑战,有必要建立一个适当的系统,以实现成本效益,并创建一个早期解决方案来解决这一问题。本文旨在介绍用于芒果树多种疾病分类的新型深度学习模型。首先,通过收集芒果树的叶片和果实图像来收集患病部位的数据。然后,通过 "对比度限制自适应直方图均衡化(CLAHE)"对图像进行对比度增强。在对树叶图像和果实图像进行深度特征提取时,采用了卷积神经网络(CNN),并将两个输入的特征串联起来进行进一步处理。此外,还采用了加权特征选择,通过自适应松鼠-灰狼搜索优化(AS-GWSO)来选择最重要的特征。增强型 "长短期记忆(LSTM)"应用于分类部分,并使用相同的 AS-GWSO 进行参数优化,以提高分类精度。最后,所设计的系统对各种芒果树病害的处理结果证实,在对传统方法进行评估后,所设计的方法获得了最高的准确率。因此,它还能准确缓解和治疗芒果叶片的病害。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-disease Classification of Mango Tree Using Meta-heuristic-based Weighted Feature Selection and LSTM Model
Global food security can be influenced by the diseases in crop plants as several diseases straightforwardly influence the quality of the grains, vegetables, fruits, etc., which also results in affecting of agricultural productivity. Like other plants, the mango tree is also affected by several diseases, and also the identification of multi-disease classification with a single leaf is more complex, and also it is impossible to detect diseases with bare eyes. Based on the other plants, the mango tree is also affected by various diseases, which is more difficult to detect the disorders with bare eyes. It is error-prone, inconsistent, and unreliable. Here, the mango trees are affected during the production, and also affect the plant health regarding multi-diseases. When the plants are affected by the diseases, it may cause fewer amounts of productivity, as a result, impacting the economy. However, it is more critical to detect plant diseases with the large varieties of trees and plants. Various research tasks on deep learning approaches focus on identifying the diseases in plants including leaves and fruits. Thus, the main objective of this paper is to implement an effective and appropriate technique for diagnosing mango tree diseases and their symptoms through fruit and leaf images, and thus, there is a need for an appropriate system for cost-effective and early solutions to this problem. Hence, the main intention of this work is to implement an efficient and suitable technique for diagnosing mango tree diseases and also identify the symptoms through fruit and leaf images. Intending to overcome the existing challenges, there is a need for an appropriate system for achieving cost-effectiveness and also creating an early solution to resolve this problem. This paper intends to present novel deep learning models for mango tree multi-disease classification. Initially, the data collection is done for gathering the diseased parts of the mango tree in terms of leaf and fruit images. Then, the contrast enhancement of the images is performed by the “Contrast-Limited Adaptive Histogram Equalization (CLAHE)”. For the deep feature extraction of leaf images, and fruit images, Convolutional Neural Network (CNN) is employed, and the features from both inputs are concatenated for further processing. Further, the weighted feature selection is adopted for selecting the most significant features by the Adaptive Squirrel-Grey Wolf Search Optimization (AS-GWSO). Enhanced “Long Short Term Memory (LSTM)” is applied in the classification part with parameter optimization using the same AS-GWSO for enhancing classification accuracy. At last, the results of the designed system on various mango tree diseases verify that the designed approach has yielded the highest accuracy by evaluating conventional approaches. Therefore, it would also alleviate and treat the affected mango leaf diseases accurately.
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来源期刊
International Journal of Image and Graphics
International Journal of Image and Graphics COMPUTER SCIENCE, SOFTWARE ENGINEERING-
CiteScore
2.40
自引率
18.80%
发文量
67
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