Identification of Papilionidae Species in Yunnan Province Based on Deep Learning

Min Fan, Ying Lu, Q. Xu, Han-Qing Zhang, Jumei Chang, Weijie Deng
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引用次数: 1

Abstract

Yunnan is known as the "Hometown of Butterflies" in China. The colorful and morphological diversity of the Papilioidae in Yunnan province is the subject of insect ecology and evolution research. At the same time, the Yunnan Papilio has great ornamental value. It is of great significance to accurately identify the species of Papilionidae in Yunnan Province. At present, Yunnan Papilio has not been classified in the related research on butterfly identification using deep learning methods, and there is a situation that the sample data set between species is small and the number is unbalanced, which may cause the model to fail to learn the morphological characteristics of butterflies. In response to the above problems, this study established a data set consisting of 12,956 original images of papilionidae from Yunnan Province, including two subfamilies, 12 genera and 80 species. Five deep learning network models (VGG-19, ResNet-34, ResNet-50, ResNet-101 and DenseNet-121) were explored from the perspective of prediction accuracy and loss value by transfer learning method. And modeling effects of SGD, Adam, Adamax and RMsprop optimization algorithms. The final data set adopts balanced sampling and 11 data enhancement methods for data fusion to expand the data set to 16,000 images. The ResNet-50 network structure optimized by Adamax algorithm is selected to achieve the optimal effect. The experimental results show that the recognition accuracy of ResNet-50 in the constructed model reaches 87.47%. The study provides a basis for constructing a visual recognition model of Papilioidae in Yunnan and applying it to the mobile terminal, and provides a fast and efficient new method for species identification of Papillidae in Yunnan. (Abstract)
基于深度学习的云南省凤蝶科物种鉴定
云南被誉为中国的“蝴蝶之乡”。云南凤蝶科的丰富多彩和形态多样性是昆虫生态学和进化研究的主题。同时,云南凤蝶具有很高的观赏价值。准确鉴定云南省凤蝶科昆虫种类具有重要意义。目前,在利用深度学习方法进行蝴蝶识别的相关研究中,云南凤蝶尚未进行分类,并且存在种间样本数据集较小且数量不平衡的情况,这可能导致模型无法学习到蝴蝶的形态特征。针对上述问题,本研究建立了一个由云南省凤蝶科12956张原始图像组成的数据集,包括2个亚科12属80种。利用迁移学习方法从预测精度和损失值的角度探讨了5种深度学习网络模型(VGG-19、ResNet-34、ResNet-50、ResNet-101和DenseNet-121)。以及SGD、Adam、Adamax和RMsprop优化算法的建模效果。最终的数据集采用均衡采样和11种数据增强方法进行数据融合,将数据集扩展到16000张图像。选择经Adamax算法优化的ResNet-50网络结构,达到最优效果。实验结果表明,构建的模型中ResNet-50的识别准确率达到87.47%。本研究为构建云南凤蝶科视觉识别模型并应用于移动终端提供了基础,为云南凤蝶科物种识别提供了一种快速高效的新方法。(抽象)
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