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Dimensionality Reduction for Sensorimotor Learning in Mobile Robotics

机译:移动机器人中感觉运动学习的降维

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摘要

Mobile robotic systems with a wide variety of sensors, actuators, and onboard high-speed processors are commercially and readily available. The information processing capabilities of these system presently lack the robustness and sophistication of biological systems. One challenge is that the high-dimensional input signals from the sensors need to be converted into a smaller number of perceptually relevant features. This dimensionality reduction can be performed on static signals such as a single image or on dynamic data such as a speech spectrogram. This proceedings discusses several different models for dimensionality reduction that differ only on the constraints on the variables and parameters of the models. In particular, nonnegativity constraints are shown to give rise to distributed yet sparse representations of both static and dynamic data.
机译:具有各种各样的传感器,执行器和机载高速处理器的移动机器人系统在市场上可买到且容易获得。这些系统的信息处理能力目前缺乏生物系统的鲁棒性和复杂性。一个挑战是来自传感器的高维输入信号需要转换成较少数量的感知相关特征。这种降维可以在静态信号(例如单个图像)上或在动态数据(例如语音频谱图)上执行。该程序讨论了几种不同的降维模型,它们仅在模型变量和参数的约束上有所不同。特别是,显示出非负约束会引起静态和动态数据的分布式但稀疏表示。

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