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首页> 外文期刊>Adaptive Behavior >From retina to behavior: prey-predator recognition by convolutional neural networks and their modulation by classical conditioning
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From retina to behavior: prey-predator recognition by convolutional neural networks and their modulation by classical conditioning

机译:从视网膜到行为:卷积神经网络识别捕食者并通过经典条件对其进行调制

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摘要

Visual object-recognition plays a crucial role in animals that utilize visual information. In this study, we address the prey-predator recognition problem by optimizing artificial convolutional neural networks, based on neuroethological studies on toads. After the optimization of the overall network by supervised learning, the network showed a reasonable performance, even though various types of image noise existed. Also, we modulated the network after the optimization process based on the computational theory of classical conditioning and the reinforcement learning algorithm for the adaptation to environmental changes. This adaptation was implemented by separated modules that implement the "innate" term and "acquired" term of outputs. The modulated network exhibited behaviors that were similar to those of real toads. The neural basis of the amphibian visual information processing and the behavioral modulation mechanism have been substantially studied by biologists. Recent advances in parallel distributed processing technologies may enable us to develop fully autonomous, adaptive artificial agents with high-dimensional input spaces through end-to-end training methodology.
机译:视觉对象识别在利用视觉信息的动物中起着至关重要的作用。在这项研究中,我们基于对蟾蜍的神经行为学研究,通过优化人工卷积神经网络解决了捕食者-捕食者的识别问题。通过监督学习对整个网络进行优化后,即使存在各种类型的图像噪声,该网络也表现出合理的性能。此外,我们在优化过程之后基于经典条件的计算理论和用于适应环境变化的强化学习算法对网络进行了调制。通过实现输出的“固有”项和“获得”项的独立模块来实现这种调整。调制网络表现出与真实蟾蜍相似的行为。两栖动物视觉信息处理的神经基础和行为调节机制已被生物学家大量研究。并行分布式处理技术的最新进展可能使我们能够通过端到端的培训方法来开发具有高维输入空间的完全自主的自适应人工代理。

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