基于野花的级联前向神经网络在荒漠植物种类识别中的应用

M. Thilagavathi, S. Abirami
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引用次数: 1

摘要

花图像描述的巨大进步引起了人们对基于图像的植物物种识别的兴趣。荒漠植物的珍稀物种处于濒危状态,有必要对其进行生存记录,这可以通过图像处理技术进行物象分类来实现。本文主要研究了索诺兰沙漠地区植物种类的花卉图像自动识别技术。该数据集包含25个物种的609个个体。图像预处理从中值滤波开始,去除噪声。从花朵图像中提取颜色和纹理特征进行分类。利用HSV颜色空间提取颜色特征,利用CS-LBP提取纹理特征。将提取的特征与级联前向神经网络相结合进行物种分类,准确率达到96.8%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cascade-Forward Neural Network in Identification of Plant Species of Desert Based on Wild Flowers
Tremendous improvements in Flower image description induced much interest in image based plant species identification. Rare species of desert plants are at risk and it is necessary to maintain record for their existence, which can be done by applying image processing techniques for object classification. This paper focuses on the automatic recognition of plant species from Sonoran desert regions through their flower images. The dataset contains 609 individuals of 25 species. The image preprocessing begins with median filter to remove the noise. The color and texture features are obtained from the flower images for classification. HSV color space is used to extract the color features and Center-Symmetric Local Binary Pattern (CS-LBP) for texture features. The extracted features are incorporated in Cascade-Forward Neural Network to classify the species which outperforms an accuracy of 96.8%.
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