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Neural networks and perceptual learning

机译:神经网络与知觉学习

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Sensory perception is a learned trait. The brain strategies we use to perceive the world are constantly modified by experience. With practice, we subconsciously become better at identifying familiar objects or distinguishing fine details in our environment. Current theoretical models simulate some properties of perceptual learning, but neglect the underlying cortical circuits. Future neural network models must incorporate the top-down alteration of cortical function by expectation or perceptual tasks. These newly found dynamic processes are challenging earlier views of static and feedforward processing of sensory information.
机译:感官知觉是学习的特质。我们用来感知世界的大脑策略不断地被经验所改变。通过实践,我们可以在意识上更好地识别周围的物体或区分环境中的细节。当前的理论模型模拟了知觉学习的某些属性,但忽略了潜在的皮层回路。未来的神经网络模型必须通过期望或知觉任务来整合皮质功能的自上而下的变化。这些新发现的动态过程正在挑战较早的静态和前馈感官信息处理的观点。

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