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Self-organization of head-centered visual responses under ecological training conditions

机译:在生态训练条件下以头为中心的视觉反应的自组织

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We have studied the development of head-centered visual responses in an unsupervised self-organizing neural network model which was trained under ecological training conditions. Four independent spatio-temporal characteristics of the training stimuli were explored to investigate the feasibility of the self-organization under more ecological conditions. First, the number of head-centered visual training locations was varied over a broad range. Model performance improved as the number of training locations approached the continuous sampling of head-centered space. Second, the model depended on periods of time where visual targets remained stationary in head-centered space while it performed saccades around the scene, and the severity of this constraint was explored by introducing increasing levels of random eye movement and stimulus dynamics. Model performance was robust over a range of randomization. Third, the model was trained on visual scenes where multiple simultaneous targets where always visible. Model self-organization was successful, despite never being exposed to a visual target in isolation. Fourth, the duration of fixations during training were made stochastic. With suitable changes to the learning rule, it self-organized successfully. These findings suggest that the fundamental learning mechanism upon which the model rests is robust to the many forms of stimulus variability under ecological training conditions.
机译:我们已经研究了在生态训练条件下训练的无监督自组织神经网络模型中以头部为中心的视觉反应的发展。探索了训练刺激的四个独立的时空特征,以研究在更多生态条件下自组织的可行性。首先,以头部为中心的视觉训练位置的数量在很大范围内变化。随着训练位置数量接近以头部为中心的空间的连续采样,模型性能得到了改善。其次,该模型依赖于视觉目标在围绕头部进行观察时在头部中心空间中保持静止的时间段,并且通过引入不断增加的随机眼动和刺激动力学水平来探索这种约束的严重性。在一系列随机范围内,模型的性能均很稳定。第三,该模型是在视觉场景上训练的,在视觉场景中多个同时出现的目标始终可见。模型自组织成功,尽管从未孤立地暴露于视觉目标。第四,使训练期间的注视时间是随机的。通过适当地更改学习规则,它可以成功地自组织。这些发现表明,该模型所依赖的基本学习机制对于生态训练条件下的多种形式的刺激变异性是鲁棒的。

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