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首页> 外文期刊>Frontiers in Robotics and AI >Enabling Depth-Driven Visual Attention on the iCub Humanoid Robot: Instructions for Use and New Perspectives
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Enabling Depth-Driven Visual Attention on the iCub Humanoid Robot: Instructions for Use and New Perspectives

机译:在iCub人形机器人上启用深度驱动的视觉注意:使用说明和新观点

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摘要

Reliable depth perception eases and enables a large variety of attentional and interactive behaviors on humanoid robots. However, the use of depth in real scenarios is hindered by the difficulty of computing real-time and robust binocular disparity maps from moving stereo cameras. On the iCub humanoid robot we recently adopted the Efficient Large-scale Stereo (ELAS) Matching algorithm for computation of the disparity map. In this technical report we show that this algorithm allows reliable depth perception and experimental evidence that demonstrates that it can be used to solve challenging visual tasks in real-world, indoor settings. As a case study we consider the common situation where the robot is asked to focus the attention on one object close in the scene, showing how a simple but effective disparity-based segmentation solves the problem in this case. This example paves the way to a variety of other similar applications.
机译:可靠的深度感知可以缓解人形机器人上的注意力和互动行为,并使其具有多种多样。然而,由于难以从移动的立体相机计算实时且鲁棒的双目视差图,因此无法在实际场景中使用深度。在iCub人形机器人上,我们最近采用了高效的大型立体声(ELAS)匹配算法来计算视差图。在本技术报告中,我们证明了该算法可提供可靠的深度感知能力和实验证据,表明该算法可用于解决现实世界的室内环境中具有挑战性的视觉任务。作为案例研究,我们考虑了一种常见情况,即要求机器人将注意力集中在场景中靠近的一个物体上,这表明在这种情况下,一种简单但有效的基于视差的分割如何解决该问题。这个例子为各种其他类似的应用铺平了道路。

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