使用迁移学习和计算机视觉对非洲牛部落进行分类。

IF 4.1 3区 综合性期刊 Q1 MULTIDISCIPLINARY SCIENCES Annals of the New York Academy of Sciences Pub Date : 2023-10-07 DOI:10.1111/nyas.15067
Manuel Domínguez-Rodrigo, Juliet Brophy, Gregory J. Mathews, Marcos Pizarro-Monzo, Enrique Baquedano
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引用次数: 0

摘要

在古生物科学的实践中,客观分析鉴定方法仍然是少数。对化石及其修饰的主观解释仍然是一项无法重复的专家努力。非洲牛的鉴定是重建古景观、有蹄类古生态以及最终人类适应和生态系统重建的关键因素。最近的分析工作利用傅里叶函数分析和应用于牙齿咬合面的判别方法,为正确分类非洲牛部落和分类群提供了一个高度准确的框架。人工智能工具,如计算机视觉,也显示出其潜力,在客观上比人类专家更准确地识别密码机构。出于这个原因,我们在这里实现了一些最成功的计算机视觉方法,使用迁移学习和集成分析,对非洲牛牙齿的二维图像进行分类,并表明所分析的非洲牛部落图像的大型测试集中92%可以被正确分类。这为古生态解释提供了一个客观的工具,可以更自信地进行牛的鉴定和古生态解释。
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African bovid tribe classification using transfer learning and computer vision

Objective analytical identification methods are still a minority in the praxis of paleobiological sciences. Subjective interpretation of fossils and their modifications remains a nonreplicable expert endeavor. Identification of African bovids is a crucial element in the reconstruction of paleo-landscapes, ungulate paleoecology, and, eventually, hominin adaptation and ecosystemic reconstruction. Recent analytical efforts drawing on Fourier functional analysis and discrimination methods applied to occlusal surfaces of teeth have provided a highly accurate framework to correctly classify African bovid tribes and taxa. Artificial intelligence tools, like computer vision, have also shown their potential to be objectively more accurate in the identification of taphonomic agency than human experts. For this reason, here we implement some of the most successful computer vision methods, using transfer learning and ensemble analysis, to classify bidimensional images of African bovid teeth and show that 92% of the large testing set of images of African bovid tribes analyzed could be correctly classified. This brings an objective tool to paleoecological interpretation, where bovid identification and paleoecological interpretation can be more confidently carried out.

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来源期刊
Annals of the New York Academy of Sciences
Annals of the New York Academy of Sciences 综合性期刊-综合性期刊
CiteScore
11.00
自引率
1.90%
发文量
193
审稿时长
2-4 weeks
期刊介绍: Published on behalf of the New York Academy of Sciences, Annals of the New York Academy of Sciences provides multidisciplinary perspectives on research of current scientific interest with far-reaching implications for the wider scientific community and society at large. Each special issue assembles the best thinking of key contributors to a field of investigation at a time when emerging developments offer the promise of new insight. Individually themed, Annals special issues stimulate new ways to think about science by providing a neutral forum for discourse—within and across many institutions and fields.
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