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A Neural Model of Heading Detection from Optic Flow

机译:视线航向检测的神经模型

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摘要

This paper describes a neural model developed for computing heading from optic flow caused by 3D translational egomotion. The model uses the distributed representation of optic flow directions in cortical areas MT and MSTd. Model MSTd cells are selective for specific directions of visual motion and have large receptive fields covering approximately a quarter of the visual field at different retinal positions. The estimation of heading is computed in a polar framework by combining the activation of all MSTd cells in a geometrically motivated and biological plausible manner. In our implementation optic flow fields were generated from motion of a simulated camera in a static environment. We analysed the detection error by comparing estimated heading with the ground truth defined by the given camera motion. The results show that the described neural approach provides a robust detection method. We demonstrate that movements inducing radial flow patterns (forward movements) are detected more accurately than motions inducing laminar flow fields (e.g. sideward movements), consistent with psychophysical findings. Most important is that the described properties are a consequence of simple geometrical constraints defined by the spatial arrangement of MSTd cells.
机译:本文介绍了一种神经模型,该模型可用于计算由3D平移自我运动引起的视流的航向。该模型使用皮质区域MT和MSTd中光流方向的分布式表示。 MSTd模型细胞对特定的视觉运动方向具有选择性,并且在不同的视网膜位置具有较大的接受视野,覆盖大约四分之一的视野。航向估计是在极坐标框架中通过以几何动机和生物学上合理的方式组合所有MSTd细胞的激活来计算的。在我们的实现中,光流场是由静态环境中模拟摄像机的运动产生的。我们通过将估计航向与给定摄像机运动定义的地面真实情况进行比较,分析了检测误差。结果表明,所描述的神经方法提供了一种鲁棒的检测方法。我们证明,与引起层流流场的运动(例如侧向运动)相比,引起径向流模式的运动(向前运动)的检测要更准确,这与心理物理发现相符。最重要的是,所描述的属性是由MSTd单元的空间排列定义的简单几何约束的结果。

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