Dalgaty Thomas, Miller John P, Vianello Elisa, Casas Jérôme
CEA-LETI, Université Grenoble Alpes, Grenoble, France.
Department of Microbiology and Immunology, Montana State University, Bozeman, MT, United States.
Front Neurosci. 2021 Feb 23;15:612359. doi: 10.3389/fnins.2021.612359. eCollection 2021.
We propose a neural network model for the jumping escape response behavior observed in the cricket cercal sensory system. This sensory system processes low-intensity air currents in the animal's immediate environment generated by predators, competitors, and mates. Our model is inspired by decades of physiological and anatomical studies. We compare the performance of our model with a model derived through a universal approximation, or a generic deep learning, approach, and demonstrate that, to achieve the same performance, these models required between one and two orders of magnitude more parameters. Furthermore, since the architecture of the bio-inspired model is defined by a set of logical relations between neurons, we find that the model is open to interpretation and can be understood. This work demonstrates the potential of incorporating bio-inspired architectural motifs, which have evolved in animal nervous systems, into memory efficient neural network models.
我们提出了一种神经网络模型,用于模拟蟋蟀尾须感觉系统中观察到的跳跃逃逸反应行为。该感觉系统处理由捕食者、竞争者和配偶在动物周围环境中产生的低强度气流。我们的模型受到了数十年生理和解剖学研究的启发。我们将我们模型的性能与通过通用逼近或通用深度学习方法得出的模型进行了比较,并证明,要达到相同的性能,这些模型所需的参数要多一到两个数量级。此外,由于受生物启发的模型架构由神经元之间的一组逻辑关系定义,我们发现该模型易于解释且能够被理解。这项工作展示了将在动物神经系统中进化而来的受生物启发的架构模式纳入内存高效神经网络模型的潜力。