Dipartimento di Ingegneria Elettrica, Elettronica e Informatica, University of Catania, Italy.
Neural Netw. 2013 May;41:202-11. doi: 10.1016/j.neunet.2012.11.013. Epub 2012 Dec 3.
Despite their small brains, insects show advanced capabilities in learning and task solving. Flies, honeybees and ants are becoming a reference point in neuroscience and a main source of inspiration for autonomous robot design issues and control algorithms. In particular, honeybees demonstrate to be able to autonomously abstract complex associations and apply them in tasks involving different sensory modalities within the insect brain. Mushroom Bodies (MBs) are worthy of primary attention for understanding memory and learning functions in insects. In fact, even if their main role regards olfactory conditioning, they are involved in many behavioral achievements and learning capabilities, as has been shown in honeybees and flies. Owing to the many neurogenetic tools, the fruit fly Drosophila became a source of information for the neuroarchitecture and biochemistry of the MBs, although the MBs of flies are by far simpler in organization than their honeybee orthologs. Electrophysiological studies, in turn, became available on the MBs of locusts and honeybees. In this paper a novel bio-inspired neural architecture is presented, which represents a generalized insect MB with the basic features taken from fruit fly neuroanatomy. By mimicking a number of different MB functions and architecture, we can replace and improve formerly used artificial neural networks. The model is a multi-layer spiking neural network where key elements of the insect brain, the antennal lobes, the lateral horn region, the MBs, and their mutual interactions are modeled. In particular, the model is based on the role of parts of the MBs named MB-lobes, where interesting processing mechanisms arise on the basis of spatio-temporal pattern formation. The introduced network is able to model learning mechanisms like olfactory conditioning seen in honeybees and flies and was found able also to perform more complex and abstract associations, like the delayed matching-to-sample tasks known only from honeybees. A biological basis of the proposed model is presented together with a detailed description of the architecture. Simulation results and remarks on the biological counterpart are also reported to demonstrate the possible applications of the designed computational model. Such neural architecture, able to autonomously learn complex associations is envisaged to be a suitable basis for an immediate implementation within an robot control architecture.
尽管昆虫的大脑很小,但它们在学习和解决任务方面表现出了高级的能力。果蝇、蜜蜂和蚂蚁正在成为神经科学的参考点,也是自主机器人设计问题和控制算法的主要灵感来源。特别是,蜜蜂表现出能够自主抽象复杂的关联,并将其应用于昆虫大脑中不同感觉模态的任务中。蘑菇体(MBs)是理解昆虫记忆和学习功能的首要关注点。事实上,即使它们的主要作用是嗅觉条件反射,但正如在蜜蜂和果蝇中所显示的那样,它们也参与了许多行为成就和学习能力。由于有许多神经遗传学工具,果蝇成为了 MB 神经结构和生物化学的信息来源,尽管果蝇的 MB 在组织上远不如它们的蜜蜂同源物复杂。反过来,对蝗虫和蜜蜂的 MB 进行了电生理学研究。在本文中,提出了一种新颖的基于生物启发的神经架构,它代表了一种具有从果蝇神经解剖学中提取的基本特征的广义昆虫 MB。通过模拟许多不同的 MB 功能和架构,我们可以替换和改进以前使用的人工神经网络。该模型是一个多层尖峰神经网络,其中模拟了昆虫大脑的关键元素,如触角叶、侧角区域、MB 及其相互作用。特别是,该模型基于 MB 部分的作用,即 MB 叶,有趣的处理机制基于时空模式形成而产生。所提出的网络能够模拟在蜜蜂和果蝇中看到的嗅觉条件反射等学习机制,并且被发现还能够执行更复杂和抽象的关联,例如只有在蜜蜂中才知道的延迟匹配样本任务。同时还提出了所提出模型的生物学基础,并详细描述了其架构。还报告了仿真结果和对生物学对应物的评论,以展示所设计计算模型的可能应用。这种能够自主学习复杂关联的神经架构,有望成为机器人控制架构中直接实现的合适基础。