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Depth information in natural environments derived from optic flow by insect motion detection system: a model analysis

机译:昆虫运动检测系统从光流得出的自然环境中的深度信息:模型分析

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摘要

Knowing the depth structure of the environment is crucial for moving animals in many behavioral contexts, such as collision avoidance, targeting objects, or spatial navigation. An important source of depth information is motion parallax. This powerful cue is generated on the eyes during translatory self-motion with the retinal images of nearby objects moving faster than those of distant ones. To investigate how the visual motion pathway represents motion-based depth information we analyzed its responses to image sequences recorded in natural cluttered environments with a wide range of depth structures. The analysis was done on the basis of an experimentally validated model of the visual motion pathway of insects, with its core elements being correlation-type elementary motion detectors (EMDs). It is the key result of our analysis that the absolute EMD responses, i.e., the motion energy profile, represent the contrast-weighted nearness of environmental structures during translatory self-motion at a roughly constant velocity. In other words, the output of the EMD array highlights contours of nearby objects. This conclusion is largely independent of the scale over which EMDs are spatially pooled and was corroborated by scrutinizing the motion energy profile after eliminating the depth structure from the natural image sequences. Hence, the well-established dependence of correlation-type EMDs on both velocity and textural properties of motion stimuli appears to be advantageous for representing behaviorally relevant information about the environment in a computationally parsimonious way.
机译:知道环境的深度结构对于在许多行为情况下(例如避免碰撞,瞄准目标或空间导航)移动动物至关重要。深度信息的重要来源是运动视差。这种强有力的提示是在平移自我运动期间在眼睛上产生的,附近物体的视网膜图像移动的速度比远处物体的视网膜移动的速度快。为了研究视觉运动路径如何表示基于运动的深度信息,我们分析了其对在具有广泛深度结构的自然杂物环境中记录的图像序列的响应。分析是在昆虫的视觉运动路径的实验验证模型的基础上进行的,其核心元素是相关类型的基本运动检测器(EMD)。我们分析的关键结果是,绝对EMD响应(即运动能量分布)代表了在以大致恒定速度进行平移自运动过程中环境结构的对比度加权附近。换句话说,EMD阵列的输出突出显示附近物体的轮廓。该结论在很大程度上与EMD的空间合并范围无关,并且在从自然图像序列中消除了深度结构后,通过仔细研究运动能曲线可以证实该结论。因此,建立良好的相关性EMD对运动刺激的速度和纹理特性的依赖性对于以简化的方式表示有关环境的行为相关信息似乎是有利的。

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