Prediction of Herbs with its Benefits using Deep Learning Techniques

M. Begum, R. Haris, V. Vetrimaran, P. Raj
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Abstract

Automated plant identification is a very promising solution for bridging the taxonomic gap, which is receiving much attention from botany and computer science. As machine learning technology advances, more complex models have been proposed to automate crop identification. Herbal remedies are considered in the pharmaceutical industry due to fewer harmful side effects and less expensive than modern medicine. Based on these data, many researchers have shown great interest in studying the recognition of natural herbal medicines. There are various possibilities for moving towards solid phase production capable of accurately discriminating medicinal plants in real time. In this project, efficient and reliable machine learning algorithms for plant catalogues using leaf images used in recent years are being studied. The review covers image processing techniques used to locate leaves and extract important leaf features from other machine learning steps. These deep learning stages are classified according to their function when it comes to discriminating leaf images based on common plant characteristics, i.e. shapes, ridges, textures and combinations of many elements. Then you get results using herbs with improved accuracy. The test results indicate that the proposed system provides an improved level of accuracy.
使用深度学习技术预测草药及其益处
植物自动鉴定是一种很有前途的弥合分类差距的解决方案,受到植物学和计算机科学的广泛关注。随着机器学习技术的进步,人们提出了更复杂的模型来自动识别作物。草药在制药行业被认为是由于有害的副作用更少,而且比现代药物更便宜。基于这些数据,许多研究人员对研究天然草药的识别表现出极大的兴趣。向能够实时准确鉴别药用植物的固相生产方向发展有多种可能性。在本项目中,我们正在研究利用近年来使用的叶片图像进行高效可靠的植物目录机器学习算法。这篇综述涵盖了用于定位叶子和从其他机器学习步骤中提取重要叶子特征的图像处理技术。当涉及到基于常见植物特征(即形状、脊、纹理和许多元素的组合)来区分叶子图像时,这些深度学习阶段根据它们的功能进行分类。然后,使用草药得到的结果准确性更高。测试结果表明,所提出的系统提供了更高的精度水平。
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