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Assessing the potential information content of multicomponent visual signals: a machine learning approach

机译:评估多分量视觉信号的潜在信息内容:一种机器学习方法

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摘要

Careful investigation of the form of animal signals can offer novel insights into their function. Here, we deconstruct the face patterns of a tribe of primates, the guenons (Cercopithecini), and examine the information that is potentially available in the perceptual dimensions of their multicomponent displays. Using standardized colour-calibrated images of guenon faces, we measure variation in appearance both within and between species. Overall face pattern was quantified using the computer vision ‘eigenface’ technique, and eyebrow and nose-spot focal traits were described using computational image segmentation and shape analysis. Discriminant function analyses established whether these perceptual dimensions could be used to reliably classify species identity, individual identity, age and sex, and, if so, identify the dimensions that carry this information. Across the 12 species studied, we found that both overall face pattern and focal trait differences could be used to categorize species and individuals reliably, whereas correct classification of age category and sex was not possible. This pattern makes sense, as guenons often form mixed-species groups in which familiar conspecifics develop complex differentiated social relationships but where the presence of heterospecifics creates hybridization risk. Our approach should be broadly applicable to the investigation of visual signal function across the animal kingdom.
机译:仔细研究动物信号的形式可以提供有关其功能的新颖见解。在这里,我们解构了一个灵长类部落(人参)(Cercopithecini)的面部图案,并检查了在其多分量显示器的感知维度上可能可用的信息。通过使用标准的经过颜色校正的牛脸图像,我们可以测量物种内部和物种之间的外观变化。使用计算机视觉“特征脸”技术对整体脸部图案进行量化,并使用计算图像分割和形状分析来描述眉毛和鼻斑的重点特征。判别函数分析确定了这些感知维度是否可以用于可靠地对物种身份,个体身份,年龄和性别进行分类,如果可以,则确定承载此信息的维度。在研究的12个物种中,我们发现总体的面部模式和焦点特征差异都可用于可靠地对物种和个体进行分类,而年龄和性别的正确分类是不可能的。这种模式是有道理的,因为琴牛通常形成混合物种组,其中熟悉的种群会发展复杂的差异化社会关系,但是异种群的存在会带来杂交风险。我们的方法应广泛应用于整个动物界的视觉信号功能研究。

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