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Efficient Deep Learning Models for Categorizing Chenopodiaceae in the Wild

机译:高效的深度学习模型,用于在野外进行分类的藜

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摘要

The Chenopodiaceae species are ecologically and financially important, and play a significant role in biodiversity around the world. Biodiversity protection is critical for the survival and sustainability of each ecosystem and since plant species recognition in their natural habitats is the first process in plant diversity protection, an automatic species classification in the wild would greatly help the species analysis and consequently biodiversity protection on earth. Computer vision approaches can be used for automatic species analysis. Modern computer vision approaches are based on deep learning techniques. A standard dataset is essential in order to perform a deep learning algorithm. Hence, the main goal of this research is to provide a standard dataset of Chenopodiaceae images. This dataset is called ACHENY and contains 27030 images of 30 Chenopodiaceae species in their natural habitats. The other goal of this study is to investigate the applicability of ACHENY dataset by using deep learning models. Therefore, two novel deep learning models based on ACHENY dataset are introduced: First, a lightweight deep model which is trained from scratch and is designed innovatively to be agile and fast. Second, a model based on the EfficientNet-B1 architecture, which is pre-trained on ImageNet and is fine-tuned on ACHENY. The experimental results show that the two proposed models can do Chenopodiaceae fine-grained species recognition with promising accuracy. To evaluate our models, their performance was compared with the well-known VGG-16 model after fine-tuning it on ACHENY. Both VGG-16 and our first model achieved about 80% accuracy while the size of VGG-16 is about 16x larger than the first model. Our second model has an accuracy of about 90% and outperforms the other models where its number of parameters is 5x than the first model but it is still about one-third of the VGG-16 parameters.
机译:Chenopodiaceae物种在生态上和经济上重要性,并在世界各地的生物多样性中发挥着重要作用。生物多样性保护对于每种生态系统的生存和可持续性至关重要,因为植物物种在自然栖息地的识别是植物多样性保护中的第一个过程,野外的自动种类分类将极大地帮助物种分析以及因此地球上的生物多样性保护。计算机视觉方法可用于自动种类分析。现代计算机视觉方法基于深度学习技术。标准数据集是必不可少的,以便执行深度学习算法。因此,该研究的主要目标是提供Chenopodiaceae图像的标准数据集。该数据集被称为AcnEny,并包含其自然栖息地的30个Chenopodiaceae物种的27030个图像。本研究的另一个目标是通过使用深度学习模型来研究Acheny DataSet的适用性。因此,介绍了基于Aceny DataSet的两种新型深度学习模型:首先,一款轻量级深层模型,由划痕培训,并创新设计敏捷和快速。其次,基于高效网络B1架构的模型,该模型在想象中预先培训并且在Acheny上进行了微调。实验结果表明,两种拟议的模型可以通过有前途的精度进行脑内模型进行细粒粒细粒识别。为了评估我们的模型,将其性能与众所周知的VGG-16模型进行比较,然后在acheny上进行微调。 VGG-16和我们的第一个模型都实现了约80%的精度,而VGG-16的尺寸大约比第一个模型大约16倍。我们的第二种模型的准确性约为90%,优于其参数数量比第一个模型为5倍的其他模型,但它仍然是VGG-16参数的三分之一。

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