An Accelerated Cue Combination Principle Accounts for Multi-cue Depth Perception

C. Tyler
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引用次数: 4

Abstract

Abstract For the visual world in which we operate, the core issue is to conceptualize how its three-dimensional structure is encoded through the neural computation of multiple depth cues and their integration to a unitary depth structure. One approach to this issue is the full Bayesian model of scene understanding, but this is shown to require selection from the implausibly large number of possible scenes. An alternative approach is to propagate the implied depth structure solution for the scene through the “belief propagation” algorithm on general probability distributions. However, a more efficient model of local slant propagation is developed as an alternative.The overall depth percept must be derived from the combination of all available depth cues, but a simple linear summation rule across, say, a dozen different depth cues, would massively overestimate the perceived depth in the scene in cases where each cue alone provides a close-to-veridical depth estimate. On the other hand, a Bayesian averaging or “modified weak fusion” model for depth cue combination does not provide for the observed enhancement of perceived depth from weak depth cues. Thus, the current models do not account for the empirical properties of perceived depth from multiple depth cues.The present analysis shows that these problems can be addressed by an asymptotic, or hyperbolic Minkowski, approach to cue combination. With appropriate parameters, this first-order rule gives strong summation for a few depth cues, but the effect of an increasing number of cues beyond that remains too weak to account for the available degree of perceived depth magnitude. Finally, an accelerated asymptotic rule is proposed to match the empirical strength of perceived depth as measured, with appropriate behavior for any number of depth cues.
加速线索组合原理解释了多线索深度感知
对于我们操作的视觉世界,核心问题是如何概念化其三维结构,通过多个深度线索的神经计算并将其整合到一个统一的深度结构中。解决这个问题的一种方法是场景理解的完整贝叶斯模型,但这需要从数量惊人的可能场景中进行选择。另一种方法是通过“信念传播”算法在一般概率分布上传播场景的隐含深度结构解。然而,一个更有效的局部倾斜传播模型被开发作为替代。整体深度感知必须来自所有可用深度线索的组合,但是一个简单的线性求和规则,比如说,十二个不同的深度线索,可能会大大高估场景中的感知深度,因为每个线索单独提供接近真实的深度估计。另一方面,深度线索组合的贝叶斯平均或“修正弱融合”模型并没有提供从弱深度线索中观察到的感知深度增强。因此,目前的模型没有考虑到从多个深度线索感知深度的经验性质。本文的分析表明,这些问题可以通过线索组合的渐近或双曲闵可夫斯基方法来解决。在适当的参数下,这一一阶规则为一些深度线索提供了强大的总和,但线索数量增加的影响仍然太弱,无法解释感知深度幅度的可用程度。最后,提出了一种加速渐近规则,以匹配测量的感知深度的经验强度,并对任何数量的深度线索具有适当的行为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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