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首页> 外文期刊>Weed Technology: A journal of the Weed Science Society of America >Discrimination of Common Ragweed (Ambrosia artemisiifolia) and Mugwort (Artemisia vulgaris) Based on Bag of Visual Words Model
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Discrimination of Common Ragweed (Ambrosia artemisiifolia) and Mugwort (Artemisia vulgaris) Based on Bag of Visual Words Model

机译:基于视觉词组模型的常见豚草(Ambrosia Artemisiifolia)和Mugwort(Astemisia ventgaris)的歧视

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摘要

Common ragweed is a plant species causing allergic and asthmatic symptoms in humans. To control its propagation, an early identification system is needed. However, due to its similar appearance with mugwort, proper differentiation between these two weed species is important. Therefore, we propose a method to discriminate common ragweed and mugwort leaves based on digital images using bag of visual words (BoVW). BoVW is an object-based image classification that has gained acceptance in many areas of science. We compared speeded-up robust features (SURF) and grid sampling for keypoint selection. The image vocabulary was built using K-means clustering. The image classifier was trained using support vector machines. To check the robustness of the classifier, specific model runs were conducted with and without damaged leaves in the trainings dataset. The results showed that the BoVW model allows the discrimination between common ragweed and mugwort leaves with high accuracy. Based on SURF keypoints with 50% of 788 images in total as training data, we achieved a 100% correct recognition of the two plant species. The grid sampling resulted in slightly less recognition accuracy (98 to 99%). In addition, the classification based on SURF was up to 31 times faster.
机译:常见的豚草是一种植物物种,导致人类过敏和哮喘症状。为了控制其传播,需要早期识别系统。然而,由于其与Mugwort类似的外观,这两个杂草物种之间的适当差异很重要。因此,我们提出了一种基于使用袋子(BOVW)的数字图像来区分常见的豚草和Mugwort叶子的方法。 BOVW是一种基于对象的图像分类,在许多科学领域获得了接受。我们比较了快速的强大功能(冲浪)和网格采样,以进行关键点选择。图像词汇表是使用K-means群集构建的。使用支持向量机接受图像分类器。为了检查分类器的稳健性,在培训数据集中使用损坏叶片进行特定模型运行。结果表明,BOVW模型允许高精度的常见豚草和Mugwort叶之间的歧视。基于Surf关键点,总共50%的788张图像作为培训数据,我们实现了100%的正确识别两种植物物种。网格采样导致识别准确度略微较小(98至99%)。此外,基于冲浪的分类速度快31倍。

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