利用图像数据的深度神经网络识别林孔虫物种和新类别检测

Li Xu, Yili Hong, Eric P. Smith, David S. McLeod, Xinwei Deng, Laura J. Freeman
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引用次数: 0

摘要

正如许多复杂的任务一样,发现、描述和理解地球上生命多样性的工作(即生物系统学和分类学)需要许多工具。其中有些工作可以按照过去的方法完成,但有些方面则面临着传统知识和工具无法充分解决的挑战。其中一个挑战是物种复合体,由于群体成员形态上的相似性,很难可靠地识别已知物种和发现新物种。为了应对这一挑战,我们利用机器学习原理开发了新工具,以解决与物种复合体有关的两个具体问题。第一个问题是统计学和机器学习中的分类问题,第二个问题是分布外(OOD)检测问题。我们将这些工具应用于由东南亚溪蛙(Limnonectes kuhlii complex)组成的物种群,并采用一种传统上定性处理的形态特征(后肢皮肤纹理),以一种定量和客观的方式进行处理。我们证明,深度神经网络可以成功地将图像自动分类到已知的物种组中,并为此进行了训练。我们进一步证明,如果图像不属于现有类别,该算法也能成功地将图像归入新类别。此外,我们还使用了更大的 MNIST 数据集来测试我们的 OOD 检测算法的性能。最后,我们对这些方法在物种群中的应用以及我们为记录真正的生物多样性所做的努力做了总结。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Neural Network Identification of Limnonectes Species and New Class Detection Using Image Data
As is true of many complex tasks, the work of discovering, describing, and understanding the diversity of life on Earth (viz., biological systematics and taxonomy) requires many tools. Some of this work can be accomplished as it has been done in the past, but some aspects present us with challenges which traditional knowledge and tools cannot adequately resolve. One such challenge is presented by species complexes in which the morphological similarities among the group members make it difficult to reliably identify known species and detect new ones. We address this challenge by developing new tools using the principles of machine learning to resolve two specific questions related to species complexes. The first question is formulated as a classification problem in statistics and machine learning and the second question is an out-of-distribution (OOD) detection problem. We apply these tools to a species complex comprising Southeast Asian stream frogs ( Limnonectes kuhlii complex) and employ a morphological character (hind limb skin texture) traditionally treated qualitatively in a quantitative and objective manner. We demonstrate that deep neural networks can successfully automate the classification of an image into a known species group for which it has been trained. We further demonstrate that the algorithm can successfully classify an image into a new class if the image does not belong to the existing classes. Additionally, we use the larger MNIST dataset to test the performance of our OOD detection algorithm. We finish our paper with some concluding remarks regarding the application of these methods to species complexes and our efforts to document true biodiversity.
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