Chen Yifan, Yang Xichen, Yan Hui, Liu Jia, Jiang Jian, Mao Zhongyuan, Wang Tianshu
School of Computer and Electronic Information/School of Artificial Intelligence, Nanjing Normal University, Nanjing, Jiangsu, China.
Nanjing University of Chinese Medicine, National and Local Collaborative Engineering Center of Chinese Medicinal Resources Industrialization and Formulae Innovative Medicine, Nanjing, China.
Front Plant Sci. 2025 Jan 21;15:1463113. doi: 10.3389/fpls.2024.1463113. eCollection 2024.
Chrysanthemum morifolium Ramat (hereinafter referred to as Chrysanthemum) is one of the most beloved and economically valuable Chinese herbal crops, which contains abundant medicinal ingredients and wide application prospects. Therefore, identifying the classification and origin of Chrysanthemum is important for producers, consumers, and market regulators. The existing Chrysanthemum classification methods mostly rely on visual subjective identification, are time-consuming, and always need high equipment costs.
A novel method is proposed to accurately identify the Chrysanthemum classification in a swift, non-invasive, and non-contact way. The proposed method is based on the fusion of deep visual features of both the front and back sides. Firstly, the different Chrysanthemums images are collected and labeled with origins and classifications. Secondly, the background area with less available information is removed by image preprocessing. Thirdly, a two-stream feature extraction network is designed with two inputs which are the preprocessed front and back Chrysanthemum images. Meanwhile, the incorporation of single-stream residual connections and cross-stream residual connections is employed to extend the receptive field of the network and fully fusion the features from both the front and back sides.
Experimental results demonstrate that the proposed method achieves an accuracy of 93.8%, outperforming existing methods and exhibiting superior stability.
The proposed method provides an effective and dependable solution for identifying Chrysanthemum classification and origin while offering practical benefits for quality assurance in production, consumer markets, and regulatory processes. Code and data are available at https://github.com/dart-into/CCMIFB.
杭菊(以下简称菊花)是最受欢迎且具有经济价值的中草药作物之一,其含有丰富的药用成分且应用前景广阔。因此,对菊花的分类和产地进行鉴定对生产者、消费者和市场监管者而言都很重要。现有的菊花分类方法大多依赖视觉主观鉴定,耗时且设备成本高昂。
提出了一种新颖的方法,以快速、非侵入性和非接触的方式准确鉴定菊花的分类。该方法基于正面和背面深度视觉特征的融合。首先,收集不同的菊花图像并标注其产地和分类。其次,通过图像预处理去除信息较少的背景区域。第三,设计一个双流特征提取网络,其两个输入分别是预处理后的菊花正面和背面图像。同时,采用单流残差连接和跨流残差连接来扩展网络的感受野,并充分融合正面和背面的特征。
实验结果表明,所提方法的准确率达到93.8%,优于现有方法且稳定性更佳。
所提方法为鉴定菊花的分类和产地提供了有效且可靠的解决方案,同时为生产、消费市场及监管流程中的质量保证带来实际益处。代码和数据可在https://github.com/dart-into/CCMIFB获取。