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A multi-division convolutional neural network-based plant identification system

机译:基于多分行卷积神经网络的工厂识别系统

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Background Plants have an important place in the life of all living things. Today, there is a risk of extinction for many plant species due to climate change and its environmental impact. Therefore, researchers have conducted various studies with the aim of protecting the diversity of the planet’s plant life. Generally, research in this area is aimed at determining plant species and diseases, with works predominantly based on plant images. Advances in deep learning techniques have provided very successful results in this field, and have become widely used in research studies to identify plant species. Methods In this paper, a Multi-Division Convolutional Neural Network (MD-CNN)-based plant recognition system was developed in order to address an agricultural problem related to the classification of plant species. In the proposed system, we divide plant images into equal nxn-sized pieces, and then deep features are extracted for each piece using a Convolutional Neural Network (CNN). For each part of the obtained deep features, effective features are selected using the Principal Component Analysis (PCA) algorithm. Finally, the obtained effective features are combined and classification conducted using the Support Vector Machine (SVM) method. Results In order to test the performance of the proposed deep-based system, eight different plant datasets were used: Flavia, Swedish, ICL, Foliage, Folio, Flower17, Flower102, and LeafSnap. According to the results of these experimental studies, 100% accuracy scores were achieved for the Flavia, Swedish, and Folio datasets, whilst the ICL, Foliage, Flower17, Flower102, and LeafSnap datasets achieved results of 99.77%, 99.93%, 97.87%, 98.03%, and 94.38%, respectively.
机译:背景技术植物在所有生物的生活中有一个重要的地方。如今,由于气候变化及其环境影响,许多植物物种都存在灭绝的风险。因此,研究人员进行了各种研究,目的是保护地球植物寿命的多样性。通常,该领域的研究旨在确定植物物种和疾病,主要基于植物图像。深度学习技术的进步在该领域提供了非常成功的结果,并且已广泛用于研究植物物种的研究。方法在本文中,开发了一种多分型卷积神经网络(MD-CNN)的工厂识别系统,以解决与植物物种分类有关的农业问题。在所提出的系统中,我们将植物图像分成相等的NXN大小的碎片,然后使用卷积神经网络(CNN)为每个部件提取深度特征。对于所获得的深度特征的每个部分,使用主成分分析(PCA)算法选择有效特征。最后,使用支持向量机(SVM)方法进行所获得的有效特征和进行分类。结果为了测试所提出的基于深度的系统的性能,使用了八种不同的植物数据集:Flavia,瑞典,ICL,叶子,对开,花朵,花朵102和叶子。根据这些实验研究的结果,对于Flavia,瑞典语和Folio数据集,实现了100%的精度分数,而ICL,叶子,花朵17,Flower102和Leafsnap Datasets达到99.77%,99.93%,97.87%, 98.03%和94.38%。

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