Department of Entomology, Kansas State University, Manhattan, KS, USA.
Department of Entomology, University of Wiscosin - Madison, Madison, WI, USA.
Sci Rep. 2021 Apr 7;11(1):7580. doi: 10.1038/s41598-021-87210-1.
Pollinators are undergoing a global decline. Although vital to pollinator conservation and ecological research, species-level identification is expensive, time consuming, and requires specialized taxonomic training. However, deep learning and computer vision are providing ways to open this methodological bottleneck through automated identification from images. Focusing on bumble bees, we compare four convolutional neural network classification models to evaluate prediction speed, accuracy, and the potential of this technology for automated bee identification. We gathered over 89,000 images of bumble bees, representing 36 species in North America, to train the ResNet, Wide ResNet, InceptionV3, and MnasNet models. Among these models, InceptionV3 presented a good balance of accuracy (91.6%) and average speed (3.34 ms). Species-level error rates were generally smaller for species represented by more training images. However, error rates also depended on the level of morphological variability among individuals within a species and similarity to other species. Continued development of this technology for automatic species identification and monitoring has the potential to be transformative for the fields of ecology and conservation. To this end, we present BeeMachine, a web application that allows anyone to use our classification model to identify bumble bees in their own images.
传粉媒介正在全球范围内减少。虽然对传粉媒介的保护和生态研究至关重要,但物种级别的鉴定既昂贵又耗时,且需要专门的分类学培训。然而,深度学习和计算机视觉正在通过图像的自动识别来提供突破这种方法学瓶颈的途径。我们专注于熊蜂,比较了四个卷积神经网络分类模型,以评估预测速度、准确性,以及这项技术在自动蜜蜂识别方面的潜力。我们收集了超过 89000 张熊蜂的图像,代表了北美的 36 个物种,用于训练 ResNet、Wide ResNet、InceptionV3 和 MnasNet 模型。在这些模型中,InceptionV3 在准确性(91.6%)和平均速度(3.34 毫秒)方面表现出了很好的平衡。具有更多训练图像的物种的物种水平错误率通常较小。然而,错误率也取决于物种内个体之间的形态变异性水平和与其他物种的相似性。这项自动物种鉴定和监测技术的持续发展有可能对生态学和保护领域产生变革性的影响。为此,我们提出了 BeeMachine,这是一个网络应用程序,允许任何人使用我们的分类模型来识别自己图像中的熊蜂。