基于粉末显微图像的印度草本植物的迁移学习分类

Rohan Marwaha, B. Fataniya
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引用次数: 4

摘要

本文的目的是熟练地对印度草本植物粉末显微图像进行分类。由于它们在医药行业中具有重要意义,并且它们的鉴定只能由专家对粉末形式进行,因此我们通过自动化过程避免了专家的需要,产生了不错的结果。虽然,已经尝试执行这项任务,但所使用的方法不能提供高精度的结果。受最先进的深度学习技术的启发,我们通过微调Keras库提供的4个预训练模型来执行分类,这些模型在ImageNet数据集上提供了很好的结果。在使用的4个模型中,VGG16提供了最高的准确性,精度,召回率和F1分数,但训练速度最慢。MobileNet是最快的,但在其他参数上表现一般,而Xception是第二快,但精度最低,而InceptionV3的结果一般。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Indian Herbal Plants based on powder microscopic images using Transfer Learning
The objective of this paper is to proficiently classify the microscopic images of powder of Indian Herbal plants. Since they hold great importance in medicine industry and their identification is only done by experts for the powdered form, we have eluded the need for an expert by automating the process, yielding decent results. Although, attempts have been made to perform this task but the methodologies used do not provide the results with high accuracy. Inspired from the state-of-the-art deep learning techniques we have performed the classification by fine-tuning 4 pre-trained models provided by the Keras library which have provided with great results on ImageNet dataset. Out of the 4 models used, VGG16 provides the highest accuracy, Precision, Recall and F1 score but is the slowest to train. MobileNet is fastest but is mediocre in other parameters while Xception is 2nd fastest but with lowest accuracy and InceptionV3 with mediocre results.
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