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学习用于注视控制和抓握的视觉运动转换。

Learning visuomotor transformations for gaze-control and grasping.

作者信息

Hoffmann Heiko, Schenck Wolfram, Möller Ralf

机构信息

Department of Psychology, Max Planck Institute for Human Cognitive and Brain Sciences, Cognitive Robotics, 80799, Munich, Germany.

出版信息

Biol Cybern. 2005 Aug;93(2):119-30. doi: 10.1007/s00422-005-0575-x. Epub 2005 Jul 18.

DOI:10.1007/s00422-005-0575-x
PMID:16028074
Abstract

For reaching to and grasping of an object, visual information about the object must be transformed into motor or postural commands for the arm and hand. In this paper, we present a robot model for visually guided reaching and grasping. The model mimics two alternative processing pathways for grasping, which are also likely to coexist in the human brain. The first pathway directly uses the retinal activation to encode the target position. In the second pathway, a saccade controller makes the eyes (cameras) focus on the target, and the gaze direction is used instead as positional input. For both pathways, an arm controller transforms information on the target's position and orientation into an arm posture suitable for grasping. For the training of the saccade controller, we suggest a novel staged learning method which does not require a teacher that provides the necessary motor commands. The arm controller uses unsupervised learning: it is based on a density model of the sensor and the motor data. Using this density, a mapping is achieved by completing a partially given sensorimotor pattern. The controller can cope with the ambiguity in having a set of redundant arm postures for a given target. The combined model of saccade and arm controller was able to fixate and grasp an elongated object with arbitrary orientation and at arbitrary position on a table in 94% of trials.

摘要

为了触及并抓取一个物体,关于该物体的视觉信息必须被转化为手臂和手部的运动或姿势指令。在本文中,我们提出了一个用于视觉引导的触及和抓取的机器人模型。该模型模仿了两种用于抓取的备选处理路径,这两种路径也可能同时存在于人类大脑中。第一种路径直接利用视网膜激活来编码目标位置。在第二种路径中,一个扫视控制器使眼睛(摄像头)聚焦于目标,取而代之的是将注视方向用作位置输入。对于这两种路径,一个手臂控制器将关于目标位置和方向的信息转化为适合抓取的手臂姿势。对于扫视控制器的训练,我们提出了一种新颖的分阶段学习方法,该方法不需要教师提供必要的运动指令。手臂控制器使用无监督学习:它基于传感器和运动数据的密度模型。利用这种密度,通过完成部分给定的感觉运动模式来实现映射。该控制器能够应对针对给定目标存在一组冗余手臂姿势时的模糊性。扫视控制器和手臂控制器的组合模型在94%的试验中能够固定并抓取桌子上任意方向和任意位置的细长物体。

相似文献

1
Learning visuomotor transformations for gaze-control and grasping.学习用于注视控制和抓握的视觉运动转换。
Biol Cybern. 2005 Aug;93(2):119-30. doi: 10.1007/s00422-005-0575-x. Epub 2005 Jul 18.
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Different memory types for generating saccades at different stages of learning.在学习的不同阶段用于产生扫视的不同记忆类型。
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Sensorimotor coordination in a "baby" robot: learning about objects through grasping.“婴儿”机器人中的感觉运动协调:通过抓握了解物体。
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引用本文的文献

1
Stage-Wise Learning of Reaching Using Little Prior Knowledge.利用极少先验知识的逐阶段伸手学习
Front Robot AI. 2018 Oct 1;5:110. doi: 10.3389/frobt.2018.00110. eCollection 2018.
2
Computational Models for Neuromuscular Function.神经肌肉功能的计算模型
IEEE Rev Biomed Eng. 2009;2:110-135. doi: 10.1109/RBME.2009.2034981.