首页> 美国卫生研究院文献>PLoS Computational Biology >Insect Bio-inspired Neural Network Provides New Evidence on How Simple Feature Detectors Can Enable Complex Visual Generalization and Stimulus Location Invariance in the Miniature Brain of Honeybees
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Insect Bio-inspired Neural Network Provides New Evidence on How Simple Feature Detectors Can Enable Complex Visual Generalization and Stimulus Location Invariance in the Miniature Brain of Honeybees

机译:昆虫生物神经网络为简单的特征检测器如何实现蜜蜂微型大脑中复杂的视觉泛化和刺激位置不变性提供了新证据。

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摘要

The ability to generalize over naturally occurring variation in cues indicating food or predation risk is highly useful for efficient decision-making in many animals. Honeybees have remarkable visual cognitive abilities, allowing them to classify visual patterns by common features despite having a relatively miniature brain. Here we ask the question whether generalization requires complex visual recognition or whether it can also be achieved with relatively simple neuronal mechanisms. We produced several simple models inspired by the known anatomical structures and neuronal responses within the bee brain and subsequently compared their ability to generalize achromatic patterns to the observed behavioural performance of honeybees on these cues. Neural networks with just eight large-field orientation-sensitive input neurons from the optic ganglia and a single layer of simple neuronal connectivity within the mushroom bodies (learning centres) show performances remarkably similar to a large proportion of the empirical results without requiring any form of learning, or fine-tuning of neuronal parameters to replicate these results. Indeed, a model simply combining sensory input from both eyes onto single mushroom body neurons returned correct discriminations even with partial occlusion of the patterns and an impressive invariance to the location of the test patterns on the eyes. This model also replicated surprising failures of bees to discriminate certain seemingly highly different patterns, providing novel and useful insights into the inner workings facilitating and limiting the utilisation of visual cues in honeybees. Our results reveal that reliable generalization of visual information can be achieved through simple neuronal circuitry that is biologically plausible and can easily be accommodated in a tiny insect brain.
机译:概括提示食物或捕食风险的自然变化线索的能力对于许多动物的有效决策非常有用。蜜蜂具有非凡的视觉认知能力,尽管大脑相对较小,但它们仍可以通过常见特征对视觉模式进行分类。在这里,我们问一个问题:泛化是否需要复杂的视觉识别,或者是否也可以通过相对简单的神经元机制来实现。我们根据蜜蜂大脑中已知的解剖结构和神经元反应激发了几个简单的模型,随后将它们将消色差模式泛化的能力与蜜蜂在这些线索上的行为表现进行了比较。仅来自视神经节的八个大视野方向敏感输入神经元和蘑菇体(学习中心)内单层简单神经元连通性的神经网络,其性能与大部分实验结果非常相似,而无需任何形式的学习或微调神经元参数以复制这些结果。确实,仅将两只眼睛的感觉输入组合到单个蘑菇形体神经元上的模型就可以返回正确的辨别力,即使部分遮挡了模式,并且测试模式在眼睛上的位置也令人印象深刻。该模型还复制了蜜蜂令人惊讶的失败,以区别某些看似高度不同的模式,从而为内部工作提供了新颖而有用的见解,从而促进并限制了蜜蜂视觉线索的利用。我们的研究结果表明,视觉信息的可靠概括可以通过简单的神经元电路来实现,该电路在生物学上是合理的,并且可以轻松地容纳在微小的昆虫大脑中。

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