Representation of 2D frame less visual space as neural manifold and its modelling in the frame work of information geometry is presented. Origin of hyperbolic nature of the visual space is investigated using evidences from neuroscience. Based on the results we propose that the processing of spatial information, particularly estimation of distance, perceiving geometrical curves etc. in the human brain can be modeled in a parametric probability space endowed with Fisher-Rao metric. Compactness, convexity and differentiability of the space is analysed and found that they obey the axioms of G space, proposed by Busemann. Further it is shown that it can be considered as a homogeneous Riemannian space of constant negative curvature. It is therefore ensured that the space yields geodesics into it. Computer simulation of geodesics representing a number of visual phenomena and advocating the hyperbolic structure of visual space is carried out. Comparison of the simulated results with the published experimental data is presented.
翻译:利用神经科学的证据对视觉空间的双曲性质起源进行调查。根据我们建议的结果,空间信息的处理,特别是距离估计、洞察几何曲线等,可以在具有Fisher-Rao指标的参数概率空间进行模拟。对空间的紧凑性、共性和差异性进行了分析,并发现它们符合Busemann提议的G空间的轴心。此外,还表明它可被视为具有常态负曲线的单一的里曼空间。因此,可以确保空间产生大地学。对代表若干视觉现象的大地学进行计算机模拟,并倡导视觉空间的超偏向结构。还介绍了模拟结果与公布的实验数据的比较。