Smith M A, Crawford J D
Centre for Vision Research, and Department of Psychology, York University, Toronto, Ontario, Canada.
J Comput Neurosci. 2001 Mar-Apr;10(2):127-50. doi: 10.1023/a:1011264913465.
The goal of this study was to train an artificial neural network to generate accurate saccades in Listing's plane and then determine how the hidden units performed the visuomotor transformation. A three-layer neural network was successfully trained, using back-prop, to take in oculocentric retinal error vectors and three-dimensional eye orientation and to generate the correct head-centric motor error vector within Listing's plane. Analysis of the hidden layer of trained networks showed that explicit representations of desired target direction and eye orientation were not employed. Instead, the hidden-layer units consistently divided themselves into four parallel modules: a dominant "vector-propagation" class (approximately 50% of units) with similar visual and motor tuning but negligible position sensitivity and three classes with specific spatial relations between position, visual, and motor tuning. Surprisingly, the vector-propagation units, and only these, formed a highly precise and consistent orthogonal coordinate system aligned with Listing's plane. Selective "lesions" confirmed that the vector-propagation module provided the main drive for saccade magnitude and direction, whereas a balance between activity in the other modules was required for the correct eye-position modulation. Thus, contrary to popular expectation, error-driven learning in itself was sufficient to produce a "neural" algorithm with discrete functional modules and explicit coordinate systems, much like those observed in the real saccade generator.
本研究的目标是训练一个人工神经网络,使其在利斯廷平面上生成准确的扫视运动,然后确定隐藏单元是如何执行视觉运动转换的。使用反向传播算法成功训练了一个三层神经网络,该网络接收以眼为中心的视网膜误差向量和三维眼位方向,并在利斯廷平面内生成正确的以头为中心的运动误差向量。对训练好的网络隐藏层的分析表明,并未采用期望目标方向和眼位方向的显式表示。相反,隐藏层单元始终分为四个并行模块:一个占主导的“向量传播”类(约占单元的50%),具有相似的视觉和运动调谐,但位置敏感性可忽略不计,以及另外三个在位置、视觉和运动调谐之间具有特定空间关系的类。令人惊讶的是,只有向量传播单元形成了一个与利斯廷平面对齐的高度精确且一致的正交坐标系。选择性“损伤”证实,向量传播模块为扫视幅度和方向提供了主要驱动力,而其他模块的活动之间保持平衡对于正确的眼位调制是必需的。因此,与普遍预期相反,误差驱动学习本身足以产生一种具有离散功能模块和显式坐标系的“神经”算法,这与在实际扫视发生器中观察到的情况非常相似。