Deep learning detects subtle facial expressions in a multilevel society primate.

IF 3.5 1区 生物学 Q1 ZOOLOGY
Gu Fang, Xianlin Peng, Penglin Xie, Jun Ren, Shenglin Peng, Xiaoyi Feng, Xin Tian, Mingzhu Zhou, Zhibo Li, Jinye Peng, Tetsuro Matsuzawa, Zhaoqiang Xia, Baoguo Li
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引用次数: 0

Abstract

Facial expressions in nonhuman primates are complex processes involving psychological, emotional, and physiological factors, and may use subtle signals to communicate significant information. However, uncertainty surrounds the functional significance of subtle facial expressions in animals. Using artificial intelligence (AI), this study found that nonhuman primates exhibit subtle facial expressions that are undetectable by human observers. We focused on the golden snub-nosed monkeys (Rhinopithecus roxellana), a primate species with a multilevel society. We collected 3427 front-facing images of monkeys from 275 video clips captured in both wild and laboratory settings. Three deep learning models, EfficientNet, RepMLP, and Tokens-To-Token ViT, were utilized for AI recognition. To compare the accuracy of human performance, two groups were recruited: one with prior animal observation experience and one without any such experience. The results showed human observers to correctly detect facial expressions (32.1% for inexperienced humans and 45.0% for experienced humans on average with a chance level of 33%). In contrast, the AI deep learning models achieved significantly higher accuracy rates. The best-performing model achieved an accuracy of 94.5%. Our results provide evidence that golden snub-nosed monkeys exhibit subtle facial expressions. The results further our understanding of animal facial expressions and also how such modes of communication may contribute to the origin of complex primate social systems.

深度学习检测多层次社会灵长类动物的细微面部表情。
非人灵长类动物的面部表情是一个复杂的过程,涉及心理、情感和生理因素,可能利用微妙的信号来传达重要信息。然而,动物微妙面部表情的功能意义尚不确定。本研究利用人工智能(AI)发现,非人灵长类动物会表现出人类观察者无法察觉的微妙面部表情。我们重点研究了金丝猴(Rhinopithecus roxellana),这是一种多层次社会的灵长类动物。我们从野生和实验室环境中捕获的 275 个视频片段中收集了 3427 张猴子的正面图像。人工智能识别采用了三种深度学习模型:EfficientNet、RepMLP 和 Tokens-To-Token ViT。为了比较人类表现的准确性,研究人员招募了两组人员:一组具有动物观察经验,另一组没有此类经验。结果显示,人类观察者能正确检测出面部表情(无经验者平均为 32.1%,有经验者平均为 45.0%,概率水平为 33%)。相比之下,人工智能深度学习模型的准确率要高得多。表现最好的模型达到了 94.5% 的准确率。我们的研究结果为金丝猴表现出微妙的面部表情提供了证据。这些结果进一步加深了我们对动物面部表情的理解,同时也加深了我们对这种交流方式可能有助于复杂灵长类社会系统起源的理解。
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来源期刊
CiteScore
6.40
自引率
12.10%
发文量
81
审稿时长
>12 weeks
期刊介绍: The official journal of the International Society of Zoological Sciences focuses on zoology as an integrative discipline encompassing all aspects of animal life. It presents a broader perspective of many levels of zoological inquiry, both spatial and temporal, and encourages cooperation between zoology and other disciplines including, but not limited to, physics, computer science, social science, ethics, teaching, paleontology, molecular biology, physiology, behavior, ecology and the built environment. It also looks at the animal-human interaction through exploring animal-plant interactions, microbe/pathogen effects and global changes on the environment and human society. Integrative topics of greatest interest to INZ include: (1) Animals & climate change (2) Animals & pollution (3) Animals & infectious diseases (4) Animals & biological invasions (5) Animal-plant interactions (6) Zoogeography & paleontology (7) Neurons, genes & behavior (8) Molecular ecology & evolution (9) Physiological adaptations
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