State Key Laboratory of Southwestern Chinese Medicine Resources, School of Ethnic Medicine, Chengdu University of Traditional Chinese Medicine, Chengdu, China.
Center for Computational Sciences, College of Physics and Electronic Engineering, Sichuan Normal University, Chengdu, China.
J Food Sci. 2024 Nov;89(11):7372-7379. doi: 10.1111/1750-3841.17440. Epub 2024 Oct 9.
Pinelliae Rhizoma is a key ingredient in botanical supplements and is often adulterated by Rhizoma Pinelliae Pedatisectae, which is similar in appearance but less expensive. Accurate identification of these materials is crucial for both scientific and commercial purposes. Traditional morphological identification relies heavily on expert experience and is subjective, while chemical analysis and molecular biological identification are typically time consuming and labor intensive. This study aims to employ a simpler, faster, and non-invasive image recognition technique to distinguish between these two highly similar plant materials. In the realm of image recognition, we aimed to utilize the vision transformer (ViT) algorithm, a cutting-edge image recognition technology, to differentiate these materials. All samples were verified using DNA molecular identification before image analysis. The result demonstrates that the ViT algorithm achieves a classification accuracy exceeding 94%, significantly outperforming the convolutional neural network model's 60%-70% accuracy. This highlights the efficiency of this technology in identifying plant materials with similar appearances. This study marks the pioneer work of the ViT algorithm to such a challenging task, showcasing its potential for precise botanical material identification and setting the stage for future advancements in the field.
半夏是植物性补充剂的关键成分,常被形似但价格较低的天南星科半夏伪充。准确识别这些材料对于科学和商业目的都至关重要。传统的形态学鉴定严重依赖专家经验,主观性强,而化学分析和分子生物学鉴定通常耗时耗力。本研究旨在采用一种更简单、快速、非侵入性的图像识别技术来区分这两种高度相似的植物材料。在图像识别领域,我们旨在利用视觉转换器(ViT)算法这一先进的图像识别技术来区分这些材料。在进行图像分析之前,所有样本都经过 DNA 分子鉴定验证。结果表明,ViT 算法的分类准确率超过 94%,明显优于卷积神经网络模型的 60%-70%准确率。这凸显了该技术在识别外观相似的植物材料方面的高效性。本研究标志着 ViT 算法在如此具有挑战性的任务中的先驱工作,展示了其在精确植物材料鉴定方面的潜力,并为该领域的未来发展奠定了基础。