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Variety Wins: Soccer-Playing Robots and Infant Walking

机译:多种冠军:踢足球的机器人和婴儿走路

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摘要

Although both infancy and artificial intelligence (AI) researchers are interested in developing systems that produce adaptive, functional behavior, the two disciplines rarely capitalize on their complementary expertise. Here, we used soccer-playing robots to test a central question about the development of infant walking. During natural activity, infants' locomotor paths are immensely varied. They walk along curved, multi-directional paths with frequent starts and stops. Is the variability observed in spontaneous infant walking a “feature” or a “bug?” In other words, is variability beneficial for functional walking performance? To address this question, we trained soccer-playing robots on walking paths generated by infants during free play and tested them in simulated games of “RoboCup.” In Tournament 1, we compared the functional performance of a simulated robot soccer team trained on infants' natural paths with teams trained on less varied, geometric paths—straight lines, circles, and squares. Across 1,000 head-to-head simulated soccer matches, the infant-trained team consistently beat all teams trained with less varied walking paths. In Tournament 2, we compared teams trained on different clusters of infant walking paths. The team trained with the most varied combination of path shape, step direction, number of steps, and number of starts and stops outperformed teams trained with less varied paths. This evidence indicates that variety is a crucial feature supporting functional walking performance. More generally, we propose that robotics provides a fruitful avenue for testing hypotheses about infant development; reciprocally, observations of infant behavior may inform research on artificial intelligence.
机译:尽管婴儿和人工智能(AI)研究人员都对开发可产生适应性功能行为的系统感兴趣,但这两个学科很少利用其互补的专业知识。在这里,我们使用了踢足球的机器人来测试有关婴儿行走发展的核心问题。在自然活动期间,婴儿的运动路径会发生巨大变化。他们沿着弯曲的,多方向的路径行走,并且起止频繁。自发婴儿走路时观察到的变异性是“特征”还是“虫子”?换句话说,可变性对功能性步行性能有益吗?为了解决这个问题,我们在足球运动员在自由比赛中产生的步行路径上对其进行了训练,并在“ RoboCup”模拟游戏中对其进行了测试。在锦标赛1中,我们将模拟的婴儿足球自然机器人足球队的功能性能与沿变化较小的几何路径(直线,圆和正方形)训练的团队的功能性能进行了比较。在1,000场面对面的模拟足球比赛中,受过婴儿训练的球队始终击败所有训练有素的步行路线。在第2场比赛中,我们比较了在不同步行路径集群上训练的团队。训练有素的团队在路径形状,步伐方向,步数和起点和终点的变化最为多样的情况下,表现优于训练有较少变化路径的团队。该证据表明多样性是支持功能性步行性能的关键特征。更笼统地说,我们认为机器人技术为检验关于婴儿发育的假设提供了一条富有成果的途径。相反,对婴儿行为的观察可能会为人工智能研究提供参考。

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