Plant Leaf Recognition: Comparing Contour-Based and Region-Based Feature Extraction

S. Donesh, U. Piumi Ishanka
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引用次数: 2

Abstract

Plants play a vital role in the environment. Identifying them and classifying them is an important task for botanists. This study briefly points out- how to recognize plant species using image processing techniques that can help botanists and scientists, the appropriate features for plant species recognition in feature extraction, how can a classification help to increase the accuracy of the plant leaf classification. There are four major phases used in here for the recognition, and they are image input, image pre-processing, feature extraction, and SVM classification. This automatic recognition system is developed using python with Jupyter Notebook environment gives higher accuracy for the plant recognition for the botanists and comparing the feature extractions such as Contour-based and Region-based to get down more accurate results than previous researches is the main purpose of the proposed study. Contour-based and Region-based features were calculated through equations. SVM classification is used for both feature extraction methods. For individual feature extraction the Contour-based feature extraction is more efficient with 72.25% accuracy than Region-based feature extraction with 70.41% accuracy, and for combining both feature extraction SVM classification gives 68.58% accuracy. Contour-based feature is the most appropriate feature for a plant species recognition.
植物叶片识别:基于轮廓和基于区域的特征提取的比较
植物在环境中起着至关重要的作用。鉴别和分类是植物学家的一项重要工作。本研究简要指出-如何利用图像处理技术识别植物物种,可以帮助植物学家和科学家,在特征提取中适当的特征进行植物物种识别,如何有助于提高植物叶片分类的准确性。这里的识别主要分为四个阶段,分别是图像输入、图像预处理、特征提取和SVM分类。该自动识别系统是在Jupyter Notebook环境下使用python开发的,为植物学家提供了更高的植物识别精度,并比较了基于contourt和基于region的特征提取,得到了比以往研究更准确的结果。通过方程计算基于轮廓和基于区域的特征。两种特征提取方法均采用SVM分类。对于单个特征提取,基于contourd的特征提取准确率为72.25%,高于基于region的特征提取准确率为70.41%;对于两者相结合的特征提取,SVM分类准确率为68.58%。基于轮廓的特征是最适合植物物种识别的特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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