从阴影表面图像中确定表面曲率的视觉皮层神经网络模型。

S R Lehky, T J Sejnowski
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引用次数: 90

摘要

视觉系统可以从物体表面明暗阴影的模式中提取形状信息。人们对这是如何实现的知之甚少。我们使用一种学习算法构建了一个神经网络模型,该模型可以独立于光照方向计算椭圆抛物面的主曲率和方向。我们的主要发现是,由这种模型网络单元开发的感受野与在视觉皮层中发现的一些感受野惊人地相似。似乎可以利用连续渐变阴影的神经元具有类似于先前解释为处理轮廓的接受野。“条形”检测器或“边缘”检测器)。这项研究说明了仅从接受野推断神经网络内神经元功能的困难。考虑神经元与后续阶段的连接模式也很重要,我们称之为“投影场”。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural network model of visual cortex for determining surface curvature from images of shaded surfaces.

The visual system can extract information about shape from the pattern of light and dark surface shading on an object. Very little is known about how this is accomplished. We have used a learning algorithm to construct a neural network model that computes the principal curvatures and orientation of elliptic paraboloids independently of the illumination direction. Our chief finding is that receptive fields developed by units of such model network are surprisingly similar to some found in the visual cortex. It appears that neurons that can make use of the continuous gradations of shading have receptive fields similar to those previously interpreted as dealing with contours (i.e. 'bar' detectors or 'edge' detectors). This study illustrates the difficulty of deducing neuronal function within a network solely from receptive fields. It is also important to consider the pattern of connections a neuron makes with subsequent stages, which we call the 'projective field'.

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Proceedings of the Royal Society of London Series B-Containing Papers of Abiological Character
Proceedings of the Royal Society of London Series B-Containing Papers of Abiological Character 生命科学, 发育生物学与生殖生物学, 发育生物学
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