globalchange  > 科学计划与规划
项目编号: BB/I014543/1
项目名称:
Bayesian issues in ant navigation
作者: Barbara Webb
承担单位: University of Edinburgh
批准年: 2010
开始日期: 2011-01-08
结束日期: 2014-30-09
资助金额: GBP325895
资助来源: UK-BBSRC
项目类别: Research Grant
国家: UK
语种: 英语
特色学科分类: Ecol, biodivers. & systematics&nbsp ; (11%)
英文摘要: Our brains have to deal with ambiguity and uncertainty, and an increasingly popular explanation of how they do so is based on Bayesian reasoning. In essence, this says we estimate the probability of a certain state of affairs (such as 'I am at home') on the basis of both current sensory inputs ('This looks like my house') and prior expectations ('Given my starting location, and the speed I was travelling, I wouldn't expect to be home yet'). Bayes theorem tells us how we should combine these factors to obtain the best estimate of our current state. But is this form of reasoning universal? An ideal way to investigate this issue is to look at 'simple' animals that have to solve analogous problems. And an effective way to test our understanding of what these animals do is to implement and test our hypotheses in robot models that operate in the same sensory environment. A clear example of an animal solving such problems is found in desert ants, who forage individually and without the use of chemical trails, yet can efficiently relocate their nest or a food source over long distances in barren or complex environments. Recent studies have shown that ants can individually learn and recall specific routes through cluttered environments that force detours and prevent the use of distant landmarks. Ant navigation depends on two main mechanisms: they can keep track of how far they have moved and in which direction from the nest and continuously update a vector that points back home; and they can recognise familiar visual surroundings and use these to determine which way to go. Do they integrate these cues in an optimal fashion? What if one or other cue is more or less variable? Can they use one of these cues to disambiguate the other? We can make the investigation of these issues rigorous and quantitative by drawing on methods developed for robot navigation. We will first determine what ants actually see as they develop new routes, by following ants as they forage, and capturing images from the ant's eye point of view. We will feed this information into algorithms that should be able to learn a map of the area. We can systematically vary the type of information available, its reliability, and the computational methods used to update the map, and compare the performance to ants. Further experiments to see what the ants do when the same variables are manipulated will serve to evaluate the models. Finally, the models will also be tested in the real world by implementing them on a small robot able to navigate in the ant environment.
资源类型: 项目
标识符: http://119.78.100.158/handle/2HF3EXSE/103423
Appears in Collections:科学计划与规划
气候变化与战略

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作者单位: University of Edinburgh

Recommended Citation:
Barbara Webb. Bayesian issues in ant navigation. 2010-01-01.
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