Image-based taxonomic classification of bulk insect biodiversity samples using deep learning and domain adaptation

IF 4.7 1区 农林科学 Q1 ENTOMOLOGY
Tomochika Fujisawa, Víctor Noguerales, Emmanouil Meramveliotakis, Anna Papadopoulou, Alfried P. Vogler
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引用次数: 2

Abstract

Complex bulk samples of insects from biodiversity surveys present a challenge for taxonomic identification, which could be overcome by high-throughput imaging combined with machine learning for rapid classification of specimens. These procedures require that taxonomic labels from an existing source data set are used for model training and prediction of an unknown target sample. However, such transfer learning may be problematic for the study of new samples not previously encountered in an image set, for example, from unexplored ecosystems, and require methods of domain adaptation that reduce the differences in the feature distribution of the source and target domains (training and test sets). We assessed the efficiency of domain adaptation for family-level classification of bulk samples of Coleoptera, as a critical first step in the characterization of biodiversity samples. Neural network models trained with images from a global database of Coleoptera were applied to a biodiversity sample from understudied forests in Cyprus as the target. Within-dataset classification accuracy reached 98% and depended on the number and quality of training images, and on dataset complexity. The accuracy of between-datasets predictions (across disparate source–target pairs that do not share any species or genera) was at most 82% and depended greatly on the standardization of the imaging procedure. An algorithm for domain adaptation, domain adversarial training of neural networks (DANN), significantly improved the prediction performance of models trained by non-standardized, low-quality images. Our findings demonstrate that existing databases can be used to train models and successfully classify images from unexplored biota, but the imaging conditions and classification algorithms need careful consideration.

Abstract Image

利用深度学习和领域自适应对大量昆虫生物多样性样本进行基于图像的分类
生物多样性调查中复杂的昆虫大宗样本对分类学鉴定提出了挑战,可以通过高通量成像与机器学习相结合来快速分类标本来克服这一挑战。这些程序要求来自现有源数据集的分类标签用于未知目标样本的模型训练和预测。然而,这种迁移学习对于研究图像集中以前没有遇到的新样本来说可能是有问题的,例如,来自未探索的生态系统的样本,并且需要减少源域和目标域(训练集和测试集)的特征分布差异的域适配方法。我们评估了鞘翅目大样本家族级分类的领域适应效率,这是生物多样性样本表征的关键第一步。使用鞘翅目全球数据库中的图像训练的神经网络模型被应用于塞浦路斯研究不足森林的生物多样性样本作为目标。数据集内分类准确率达到98%,这取决于训练图像的数量和质量以及数据集的复杂性。数据集之间预测的准确性(在不共享任何物种或属的不同源-目标对之间)最高为82%,并且在很大程度上取决于成像程序的标准化。一种用于领域自适应的算法,即神经网络的领域对抗性训练(DANN),显著提高了由非标准化、低质量图像训练的模型的预测性能。我们的研究结果表明,现有的数据库可以用于训练模型,并成功地对未探索生物群的图像进行分类,但成像条件和分类算法需要仔细考虑。
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来源期刊
Systematic Entomology
Systematic Entomology 生物-进化生物学
CiteScore
10.50
自引率
8.30%
发文量
49
审稿时长
>12 weeks
期刊介绍: Systematic Entomology publishes original papers on insect systematics, phylogenetics and integrative taxonomy, with a preference for general interest papers of broad biological, evolutionary or zoogeographical relevance.
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