Sine tangent search algorithm enabled LeNet for cotton crop classification using satellite image

IF 0.6 Q4 COMPUTER SCIENCE, THEORY & METHODS
Devyani Jadhav Bhamare, Ramesh Pudi, Garigipati Rama Krishna
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引用次数: 0

Abstract

Economic growth of country largely depends on crop production quantity and quality. Among various crops, cotton is one of the major crops in India, where 23 percent of cotton gets exported to various other countries. To classify these cotton crops, farmers consume much time, and this remains inaccurate most probably. Hence, to eradicate this issue, cotton crops are classified using deep learning model, named LeNet in this research paper. Novelty of this paper lies in utilization of hybrid optimization algorithm, named proposed sine tangent search algorithm for training LeNet. Initially, hyperspectral image is pre-processed by anisotropic diffusion, and then allowed for further processing. Also, SegNet is deep learning model that is used for segmenting pre-processed image. For perfect and clear details of pre-processed image, feature extraction is carried out, wherein vegetation index and spectral spatial features of image are found accurately. Finally, cotton crop is classified from segmented image and features extracted, using LeNet that is trained by sine tangent search algorithm. Here, sine tangent search algorithm is formed by hybridization of sine cosine algorithm and tangent search algorithm. Then, performance of sine tangent search algorithm enabled LeNet is assessed with evaluation metrics along with Receiver Operating Characteristic (ROC) curve. These metrics showed that sine tangent search algorithm enabled LeNet is highly effective for cotton crop classification with superior values of accuracy of 91.7%, true negative rate of 92%, and true positive rate of 92%.
利用卫星图像对棉花作物分类的正切搜索算法启用 LeNet
国家的经济增长在很大程度上取决于农作物的产量和质量。在各种农作物中,棉花是印度的主要农作物之一,印度 23% 的棉花出口到其他国家。为了对这些棉花作物进行分类,农民们耗费了大量时间,而这很可能仍然是不准确的。因此,为了解决这个问题,本文使用名为 LeNet 的深度学习模型对棉花作物进行分类。本文的新颖之处在于利用混合优化算法(即拟议的正弦切线搜索算法)来训练 LeNet。最初,高光谱图像通过各向异性扩散进行预处理,然后进行进一步处理。此外,SegNet 是一种深度学习模型,用于分割预处理后的图像。为了使预处理后的图像细节更加完美清晰,需要进行特征提取,从而准确找到图像的植被指数和光谱空间特征。最后,利用正弦切线搜索算法训练的 LeNet,从分割的图像和提取的特征中对棉花作物进行分类。正弦正切搜索算法由正弦余弦算法和正切搜索算法混合而成。然后,通过评价指标和接收者工作特性曲线(ROC)评估了启用 LeNet 的正弦切线搜索算法的性能。这些指标表明,采用正弦切线搜索算法的 LeNet 在棉花作物分类方面非常有效,准确率达到 91.7%,真阴性率达到 92%,真阳性率达到 92%。
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来源期刊
Multiagent and Grid Systems
Multiagent and Grid Systems COMPUTER SCIENCE, THEORY & METHODS-
CiteScore
1.50
自引率
0.00%
发文量
13
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