首页> 外文会议>From Animals to Animats 9; Lecture Notes in Artificial Intelligence; 4095 >Navigation in Large-Scale Environments Using an Augmented Model of Visual Homing
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Navigation in Large-Scale Environments Using an Augmented Model of Visual Homing

机译:使用视觉归位的增强模型在大规模环境中导航

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Several models have been proposed for visual homing in insects. These work well in small-scale environments but performance usually degrades significantly when the scale of the environment is increased. We address this problem by extending one such algorithm, the average landmark vector (ALV) model, by using a novel approach to waypoint selection during the construction of multi-leg routes for visual homing. The algorithm, guided by observations of insect behaviour, identifies locations on the boundaries between visual locales and uses them as way-points. Using this approach, a simulated agent is shown to be capable of significantly better autonomous exploration and navigation through large-scale environments than the standard ALV homing algorithm.
机译:已经提出了几种用于昆虫视觉归巢的模型。这些在小型环境中效果很好,但是当环境规模增加时,性能通常会大大降低。我们通过扩展一种这样的算法,即平均地标矢量(ALV)模型,通过在视觉回原点的多腿路线构建过程中使用新颖的方法来选择路点,来解决此问题。该算法以对昆虫行为的观察为指导,识别视觉区域之间边界上的位置并将其用作路标。使用这种方法,与标准的ALV归位算法相比,模拟的代理可以在大型环境中进行更好的自主探索和导航。

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