Identification of Philippine Therapeutic Leave using Deep Learning

Julie Ann B. Susa, Rhowel M. Dellosa, Jo Ann D. Doculan, Roldan D. Jallorina, R. S. Evangelista, Godofredo S. Zapanta, Jennalyn N. Mindoro
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Abstract

Despite the advancements in many chemical medications used to treat diseases, medicinal plants have also been very effective in doing so. The global use of herbal products is increasing due to the growing contribution of science and technology to its ethical and scientific growth. In the Philippines, medicinal plants or herbs are popular in treating illness. Although the traditional identification method is effective and requires the expertise of skilled practitioners, it is time-consuming and prone to mistakes. Studies identifying the therapeutic use of naturally occurring plant chemicals have now been publicly disclosed that automatically detect the species of medicinal plants and leaves using machine vision and deep learning. This led to the first phase of this work, which used the readily available Philippine medicinal plants to identify the leaves automatically. With transfer learning using YOLOv3, this study seeks to identify Philippine medicinal plants in real-time. Only segmented leaves of Basella alba (alugbati), Mentha (mint), Moringa oleifera (malungay), Nerium oleander (adelfa), and Psidium guajava (bayabas) are used in the identification of medicinal leaves. The identification of the images utilized an inference approach in the real-time application based on the extracted features using YOLOv3. The result of the test performed illustrates an optimal outcome in the detection of different medicinal leaves. The optimal model performance results to mAP 98.63%. The test summary demonstrates a high detection accuracy and produces results at a fast speed. Thus, various model inferences using input images, live feed, and video inputs exemplify the model’s effectiveness in detecting the inputs medical leaves classes.
使用深度学习识别菲律宾治疗假
尽管许多用于治疗疾病的化学药物取得了进步,但药用植物在治疗疾病方面也非常有效。由于科学技术对其伦理和科学发展的贡献越来越大,全球草药产品的使用正在增加。在菲律宾,药用植物或草药在治疗疾病中很受欢迎。虽然传统的识别方法是有效的,但需要熟练的从业者的专业知识,但它耗时且容易出错。确定天然植物化学物质治疗用途的研究现已公开披露,该研究使用机器视觉和深度学习自动检测药用植物和叶子的种类。这导致了这项工作的第一阶段,它使用现成的菲律宾药用植物来自动识别叶子。通过使用YOLOv3进行迁移学习,本研究旨在实时识别菲律宾药用植物。只有Basella alba (alugbati), Mentha(薄荷),Moringa oleifera (malungay), Nerium oleander (adelfa)和Psidium guajava (bayabas)的分节叶被用于药用叶子的鉴定。在实时应用中,基于YOLOv3提取的特征,采用推理方法对图像进行识别。试验结果说明了不同药材叶的最佳检测结果。最优模型性能结果为mAP 98.63%。测试总结表明,该方法具有较高的检测精度和快速的结果生成速度。因此,使用输入图像、实时feed和视频输入的各种模型推断证明了该模型在检测输入医疗叶片类别方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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