使用人工智能分析非人类绘画:猩猩制作公司迈出的第一步。

PsycCritiques Pub Date : 2022-10-14 DOI:10.3390/ani12202761
Benjamin Beltzung, Marie Pelé, Julien P Renoult, Masaki Shimada, Cédric Sueur
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摘要

绘画被广泛用作心灵之窗;因此,绘画可以揭示能够创作绘画的其他动物的认知和情感世界的某些方面。然而,对非人类图画的研究受到人类感知的限制,这可能会使研究方法和结果的解释产生偏差。人工智能可以自动、客观地选择用于分析图画的特征,从而规避这一问题。在本研究中,我们利用人工智能研究了雌性猩猩莫莉绘画作品的季节性变化,莫莉在 2006 年至 2011 年期间在日本多摩动物公园创作了超过 1299 幅绘画作品。我们对 VGG19 模型进行了训练,首先根据画作产生的季节对画作进行分类。结果表明,深度学习能够识别莫莉图画中细微但显著的季节变化,分类准确率高达 41.6%。我们使用 VGG19 来研究影响这种季节性变化的特征。我们分别分析了与颜色和图案相关的简单和复杂特征,以及与绘画内容和风格相关的特征。内容和风格分类在中度复杂、高度复杂和整体特征中分别显示出最高性能。我们还表明,颜色和图案都是季节性变化的驱动因素,而后者比前者更重要。这项研究展示了深度学习如何用于客观分析非具象绘画,并呼吁将其应用于非灵长类物种和人类幼儿的涂鸦。
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Using Artificial Intelligence to Analyze Non-Human Drawings: A First Step with Orangutan Productions.

Drawings have been widely used as a window to the mind; as such, they can reveal some aspects of the cognitive and emotional worlds of other animals that can produce them. The study of non-human drawings, however, is limited by human perception, which can bias the methodology and interpretation of the results. Artificial intelligence can circumvent this issue by allowing automated, objective selection of features used to analyze drawings. In this study, we use artificial intelligence to investigate seasonal variations in drawings made by Molly, a female orangutan who produced more than 1299 drawings between 2006 and 2011 at the Tama Zoological Park in Japan. We train the VGG19 model to first classify the drawings according to the season in which they are produced. The results show that deep learning is able to identify subtle but significant seasonal variations in Molly's drawings, with a classification accuracy of 41.6%. We use VGG19 to investigate the features that influence this seasonal variation. We analyze separate features, both simple and complex, related to color and patterning, and to drawing content and style. Content and style classification show maximum performance for moderately complex, highly complex, and holistic features, respectively. We also show that both color and patterning drive seasonal variation, with the latter being more important than the former. This study demonstrates how deep learning can be used to objectively analyze non-figurative drawings and calls for applications to non-primate species and scribbles made by human toddlers.

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