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Real-Time Identification of Medicinal Plants using Machine Learning Techniques

机译:采用机器学习技术实时识别药用植物

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The lighting condition of the environment are uncontrolled, so the segmentation of a leaf from the background is considered as a complex task. Here we propose a system which can identify the plant species based on the input leaf sample. An improved vegetation index, ExG-ExR is used to obtain more vegetative information from the images. The reason here is, it fixes a built-in zero threshold and hence there is no need to use otsu or any threshold value selected by the user. Inspite of the existence of more vegetative information in ExG with otsu method, our ExG-ExR index works well irrespective of the lighting background. Therefore, the ExG-ExR index identifies a binary plant region of interest. The original color pixel of the binary image serves as the mask which isolates leaves as sub-images. The plant species are classified by the color and texture features on each extracted leaf using Logistic Regression classifier with the accuracy of 93.3%.
机译:环境的照明条件是不受控制的,因此从背景中的叶子的分割被认为是一个复杂的任务。在这里,我们提出了一种系统,其可以基于输入叶样品识别植物物种。改进的植被指数,EXG-EXR用于从图像中获得更多营养信息。这里的原因是,它修复了内置的零阈值,因此不需要使用用户选择的OTSU或任何阈值。对于exg与oteu方法,exg-exr指数的存在性是在exg中的存在,而不管照明背景如何运作。因此,EXG-EXR指数识别出兴趣的二进制植物区域。二进制图像的原始颜色像素用作将叶子作为子图像隔离的掩模。植物物种通过使用逻辑回归分类器的每个提取叶上的颜色和纹理特征进行分类,精度为93.3%。

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