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Discovering Natural Kinds of Robot Sensory Experiences in Unstructured Environments

机译:在非结构化环境中发现自然的机器人感官体验

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摘要

We address the symbol grounding problem for robot perception through a data-driven approach to deriving categories from robot sensor data. Unlike model-based approaches, where human intuitive correspondences are sought between sensor readings and features of an environment (corners, doors, etc.), our method learns intrinsic categories (or natural kinds) from the raw data itself. We approximate a manifold underlying sensor data using Isomap nonlinear dimension reduction and apply Bayesian clustering (Gaussian mixture models) with model identification techniques to discover categories (or kinds). We demonstrate our method through the learning of sensory kinds from trials in various indoor and outdoor environments with different sensor modalities. Learned kinds are then used to classify new sensor data (out-of-sample readings). We present results indicating greater consistency in classifying sensor data employing mixture models in nonlinear low-dimensional embeddings.
机译:我们通过数据驱动的方法从机器人传感器数据中得出类别来解决机器人感知的符号接地问题。与基于模型的方法不同,在模型的方法中,需要在传感器读数和环境特征(拐角,门等)之间寻找人类直观的对应关系,而我们的方法则从原始数据本身中学习内在类别(或自然种类)。我们使用Isomap非线性降维方法对传感器基础数据进行近似估算,并使用贝叶斯聚类(高斯混合模型)和模型识别技术来发现类别(或种类)。我们通过在各种室内和室外环境中以不同的传感器模式进行试验中的感官种类学习来证明我们的方法。然后,将学习到的种类用于对新传感器数据进行分类(样本外读数)。我们提出的结果表明在非线性低维嵌入中使用混合模型对传感器数据进行分类的一致性更高。

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