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Structured lighting to enhance global image feature sensitivity in a neural network based robot-positioning task

机译:结构化照明可在基于神经网络的机器人定位任务中增强全局图像特征的敏感性

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This paper presents some promising results in visually positioning a 5-DOF robot arm using neural networks. The novelty of the method is in the technique used to extract global image descriptors, i.e., using a projection of a grid pattern on the surface of the target to create artificial features that enhance the sensitivity of global image descriptors to perturbations of the robot arm in the vicinity of the target object. Experiments results comparing the performance of this method to passive lighting are presented. It is found that this grid projection results in a better generalization of the network in learning the required mapping as compared to using passive lighting.
机译:本文介绍了使用神经网络在视觉上定位5自由度机器人手臂的一些有希望的结果。该方法的新颖之处在于用于提取全局图像描述符的技术,即使用目标表面上的网格图案投影来创建人工特征,从而增强全局图像描述符对机器人手臂摄动的敏感性。目标物体的附近。实验结果比较了该方法与无源照明的性能。发现与使用无源照明相比,此网格投影可在学习所需的映射时更好地概括网络。

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