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Cascade-Forward Neural Network in Identification of Plant Species of Desert Based on Wild Flowers

机译:基于野花的沙漠植物种类级联前进神经网络

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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%.
机译:巨大改进花卉图像描述诱导了对基于图像的植物物种鉴定的兴趣很大。罕见的沙漠植物均处于危险之中,有必要通过应用用于对象分类的图像处理技术来维持其存在的记录。本文侧重于通过其花图像自动识别来自Sonoran Desert地区的植物物种。数据集包含25种的609个。图像预处理以中值滤波器开始,以消除噪声。从花图像获得颜色和纹理特征以进行分类。 HSV颜色空间用于提取纹理特征的颜色特征和中心对称本地二进制模式(CS-LBP)。提取的特征结合在级联前进神经网络中,以分类到优于96.8%的精度的物种。

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