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Plant Species Identification using Leaf Image Retrieval: A Study

机译:使用叶图像检索的植物物种鉴定:一项研究

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Human beings along with other living beings and their ecological system are completely inter-dependent. In the past few decades, the technological development has affected the environment more radically than ever before. It has posed grave threats to the natural resources including habitat loss and degradation, over-exploitation of resources and change in climatic condition. Most of plant species are on the verge of extinction. In the present circumstances, it is essential to conserve ecological system. Plant identification is a crucial step towards ecosystem diversity conservation. It is time consuming and requires lots of efforts, specialized knowledge and in-depth training. Recent technological advancement in the field of imaging, data analysis, and plant morphology has improved the decision such as yield prediction, crop management, veterinary diet, improving climate and many more. This has also made it possible to develop plant species identification system. In this paper, we present a comprehensive study about plant species identification methods based on various feature extraction methods, classification and other challenges. Furthermore, the performance of two widely used classifiers viz. Support Vector Machine (SVM) and Probabilistic Neural Network (PNN) on Flavia dataset is examined in terms of Precision, Recall and F-Score. It is observed that SVM performs better than PNN for plant species identification..
机译:人类以及其他生物及其生态系统完全相互依赖。在过去的几十年里,技术发展比以往任何时候都更加根本地影响了环境。它对自然资源构成了严重威胁,包括栖息地丧失和退化,过度利用资源和气候条件的变化。大多数植物物种都在濒临灭绝的临时。在目前的情况下,必须保护生态系统至关重要。植物识别是迈向生态系统多样性保护的关键步骤。它是耗时的,需要很多努力,专业知识和深入培训。最近的成像,数据分析和植物形态领域的技术进步改善了产量预测,作物管理,兽医饮食,改善气候等决策。这也使得可以开发植物物种识别系统。本文基于各种特征提取方法,分类和其他挑战,对植物物种鉴定方法进行了综合研究。此外,两个广泛使用的分类器viz的性能。在精度,召回和F分的方面,检查了Flavia数据集上的支持向量机(SVM)和PNN)。观察到SVM对植物物种鉴定的PNN进行更好。

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