In this paper, our aim is to highlight Tactile Perceptual Aliasing as a problem when using deep neural networks and other discriminative models. Perceptual aliasing will arise wherever a physical variable extracted from tactile data is subject to ambiguity between stimuli that are physically distinct. Here we address this problem using a probabilistic discriminative model implemented as a 5-component mixture density network comprised of a deep neural network that predicts the parameters of a Gaussian mixture model. We show that discriminative regression models such as deep neural networks and Gaussian process regression perform poorly on aliased data, only making accurate predictions when the sources of aliasing are removed. In contrast, the mixture density network identifies aliased data with improved prediction accuracy. The uncertain predictions of the model form patterns that are consistent with the various sources of perceptual ambiguity. In our view, perceptual aliasing will become an unavoidable issue for robot touch as the field progresses to training robots that act in uncertain and unstructured environments, such as with deep reinforcement learning.
翻译:在本文中,我们的目标是强调在使用深神经网络和其他歧视性模型时,Tactile 感知性异化是一个问题。当从触觉数据中提取的物理变量在物理刺激之间出现模糊时,就会出现概念化别名。在这里,我们用一种5种成分混合密度网络的概率化歧视模型来解决这个问题,该模型由预测高斯混合模型参数的深神经网络组成。我们显示,在别名数据上,诸如深神经网络和高斯进程回归等歧视性回归模型表现不佳,只有在消除别名来源时才能作出准确预测。相反,混合物密度网络用预测的别名来识别数据,预测准确性更高。模型形式模式形态模式的预测与各种概念模糊源一致。我们认为,概念化别名将成为一个不可避免的问题,因为在不确定和无结构环境中活动的机器人,例如深加固学习,在野外训练过程中,机器人在不固定和无结构的环境中活动,如在深加固学习中,将无法避免。