基于不同显微镜物镜的模型识别效果

Geng Tian, Xiaohang Li, Yi Wu, Ao Liu, Y. Zhang, Yifei Ma, Wenhui Guo, Xiaoli Sun, Bangze Fu, Da Li
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引用次数: 0

摘要

金银花是临床上常用的中药,在中成药中被广泛用于治疗发烧、咳嗽、流感等各种疾病。金银花花粉颗粒的显微特征与其药用效果有显著的相关性。本研究将基于人工智能的深度学习与中药显微图像交叉结合,提出了一种基于YOLO v5的金银花花粉颗粒显微图像智能识别方法。针对不同的微观物镜,验证了不同放大倍率模型的微观特征识别的可扩展性。基于YOLO v5的金银花花粉粒模型能够快速、准确地识别花粉粒显微图像,可为中药材质量改进和质量标准化提供参考,具有良好的应用前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recognition effect of models based on different microscope objectives
Lonicerae japonicae flos, a common clinical Chinese medicine, is widely used in proprietary traditional Chinese medicine for the treatment of various conditions, such as fever, cough, and influenza. The microscopic features of honeysuckle pollen grains significantly correlate with their medicinal effects. In this study, deep learning using artificial intelligence was cross-combined with microscopic images of Chinese herbal medicines, and we proposed microscopic identification through an intelligent recognition method of honeysuckle pollen grains using microscopic images based on YOLO v5. The expandability of the microscopic feature recognition of different magnification models was verified based on different microscopic objectives. The honeysuckle pollen grains model based on YOLO v5 can quickly and accurately identify the microscopic images of pollen grains, which can provide a reference for the quality improvement and quality standardization of traditional Chinese herbs and has good application prospects.
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