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Ground-truth uncertainty model of visual depth perception for humanoid robots

机译:类人机器人视觉深度感知的地面真度不确定性模型

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The visual perception of a humanoid robot bridges the physical world with the internal world representation through visual skills such as self-localization, object recognition, detection, classification and tracking. Unfortunately, these skills are affected by internal and external sources of uncertainty. These uncertainties are present at various levels ranging from noisy signals and calibration deviations of the embodiment up to mathematical approximations and limited granularity of the perception-planning-action cycle. This aggregated uncertainty deteriorates and limits the precision and efficiency of the humanoid robot visual perception. In order to overcome these limitations, the depth perception uncertainty should be modeled in the skills of the humanoid robots. Due to the complexity of the aggregated uncertainty in humanoid systems, the visual depth uncertainty can be hardly modeled analytically. However, the uncertainty distribution can be conveniently attained by supervised learning. The role of the supervisor is to provide ground-truth spatial measurements corresponding to the humanoid uncertain visual depth perception. In this article1, a supervised learning method for inferring a novel model of the visual depth uncertainty is presented. The acquisition of the model is autonomously attained by the humanoid robot ARMAR-IIIB, see Fig.1.
机译:类人机器人的视觉感知通过诸如自我定位,对象识别,检测,分类和跟踪之类的视觉技能,将物理世界与内部世界表示联系起来。不幸的是,这些技能受内部和外部不确定性因素的影响。这些不确定性存在于各种水平上,范围从实施例的噪声信号和校准偏差到感知规划动作周期的数学近似和有限的粒度。这种聚集的不确定性恶化并限制了类人机器人视觉感知的精度和效率。为了克服这些限制,应该在类人机器人的技能中对深度感知不确定性进行建模。由于类人系统中总不确定度的复杂性,视觉深度不确定度很难进行分析建模。但是,可以通过监督学习方便地获得不确定性分布。监督者的作用是提供与人形生物不确定的视觉深度感知相对应的真实的空间测量结果。在本文1中,提出了一种用于推断视觉深度不确定性新模型的监督学习方法。该模型的获取是由人形机器人ARMAR-IIIB自主完成的,请参见图1。

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