Imaging system for classification of local flora of Uttarakhand region

Rachana Panwar, Kusha Goyal, Nilay Pandey, N. Khanna
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引用次数: 6

Abstract

Many plants are facing the risk of extinction due to unplanned urbanization and over growth of population. Digital databases of plants should be maintained for proper tracking of local flora and making data-driven policies/decisions for their preservation. Plant identification is important for medical as well as educational purposes but maintaining an exhaustive digital database is a challenging task due to the presence of large number of plant species. This paper proposes a system for building a digital database of local flora and recognizing different plants using their leaf images. The system proposed in this paper involves four steps: 1) image acquisition, 2) image preprocessing, 3) feature extraction, and 4) classification. Images are acquired using commonly available general purpose desktop scanner with white paper as a background. In the image-preprocessing module, the system applies several image-processing techniques to prepare a leaf image for the feature extraction process. Then twelve leaf-shape based features are estimated and IBI classifier is used to classify the plant species. The proposed system was used to build a dataset of local flora of Uttarakhand region, consisting of 1684 images of thirty-two different plant species. The database contains around fifty leaves of each plant species. The proposed system gives promising results with an average classification accuracy of 79% for these thirty species of plants.
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北阿坎德邦地区植物区系分类的成像系统
由于无计划的城市化和人口的过度增长,许多植物正面临灭绝的危险。应保持植物的数字数据库,以便适当地跟踪当地植物区系,并根据数据制定保护它们的政策/决策。植物鉴定对于医学和教育目的都很重要,但由于存在大量植物物种,维护一个详尽的数字数据库是一项具有挑战性的任务。本文提出了一种利用植物叶片图像建立本地植物区系数字数据库并识别不同植物的系统。本文提出的系统包括四个步骤:1)图像采集,2)图像预处理,3)特征提取,4)分类。图像是使用常用的通用桌面扫描仪以白纸为背景获取的。在图像预处理模块中,系统应用了多种图像处理技术,为特征提取过程准备叶片图像。然后估计出12个基于叶片形状的特征,并使用IBI分类器对植物进行分类。利用该系统建立了Uttarakhand地区植物区系数据集,该数据集包含32种不同植物的1684张图像。该数据库包含每种植物的大约50片叶子。该系统对这30种植物的平均分类准确率为79%,结果令人满意。
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