Adaptive perception: Learning from sensory predictions to extract object shape with a biomimetic fingertip

Uriel Martinez-Hernandez, T. Prescott
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引用次数: 4

Abstract

In this work, we present an adaptive perception method to improve the performance in accuracy and speed of a tactile exploration task. This work extends our previous studies on sensorimotor control strategies for active tactile perception in robotics. First, we present the active Bayesian perception method to actively reposition a robot to accumulate evidence from better locations to reduce uncertainty. Second, we describe the adaptive perception method that, based on a forward model and a predicted information gain approach, allows to the robot to analyse ‘what would have happened' if a different decision ‘would have been made’ at previous decision time. This approach permits to adapt the active Bayesian perception process to improve the performance in accuracy and reaction time of an exploration task. Our methods are validated with a contour following exploratory procedure with a touch sensor. The results show that the adaptive perception method allows the robot to make sensory predictions and autonomously adapt, improving the performance of the exploration task.
自适应感知:从感官预测中学习,用仿生指尖提取物体形状
在这项工作中,我们提出了一种自适应感知方法来提高触觉探索任务的准确性和速度。这项工作扩展了我们之前对机器人主动触觉感知的感觉运动控制策略的研究。首先,我们提出了主动贝叶斯感知方法,主动重新定位机器人,从更好的位置收集证据,以减少不确定性。其次,我们描述了自适应感知方法,该方法基于前向模型和预测信息增益方法,允许机器人分析如果在之前的决策时间“做出”不同的决策“会发生什么”。这种方法允许调整主动贝叶斯感知过程,以提高勘探任务的准确性和反应时间。我们的方法是验证轮廓以下探索性程序与触摸传感器。结果表明,自适应感知方法使机器人能够进行感官预测和自主适应,提高了探索任务的性能。
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