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Towards robotic cognition using deep neural network applied in a goalkeeper robot

机译:使用在守门员机器人中使用深度神经网络进行机器人认知

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Developing a vision system combined with a decision system for a humanoid robot, capable of playing soccer in the RoboCup domain, has been proved to be a challenging task. The computational limitations imposed by a embedded computer inside the robot and special conditions, such as the use of colored objects, led teams to use techniques based on color segmentation for vision and conditional statements for decision. However, the current league trend is to insert the robots into more and more realistic environments. This will require the robot to, given an image provided by its camera, to abstract all the information it needs to make a decision regardless of the environment. Most robotic vision systems at RoboCup relies on traditional computer vision techniques: thresholding; windowing; segmentation; and classification that requires hours of labeling to training and testing. This paper proposes a system that does not require to locate objects coordinates in the image - a deep neural network will identify most important features resulting as an output that is a decision. Results show that Deep Neural Network (DNNs) enabled the system to be more simple, robust (with less parameters to be set by hand) and achieved a performance that is compatible with the dynamics of the humanoid robot soccer. This system was tested in a real robot and simulator.
机译:事实证明,开发与人形机器人决策系统相结合的视觉系统,使其能够在RoboCup领域踢足球,是一项艰巨的任务。机器人内部的嵌入式计算机施加的计算限制以及特殊条件(例如使用彩色对象)使团队不得不使用基于颜色分割的技术来实现视觉和条件语句来进行决策。但是,当前的联盟趋势是将机器人插入越来越多的现实环境中。这将要求机器人在给定由其相机提供的图像的情况下,抽象出它需要做出决定的所有信息,而与环境无关。 RoboCup的大多数机器人视觉系统都依赖于传统的计算机视觉技术:阈值化;窗口分割;和分类需要花费数小时的标签才能进行培训和测试。本文提出了一种不需要在图像中定位对象坐标的系统-深度神经网络将识别出最重要的特征,从而将其作为决定性的输出。结果表明,深度神经网络(DNN)使系统更简单,更健壮(只需手动设置较少的参数),并实现了与人形机器人足球动力学兼容的性能。该系统已在真实的机器人和模拟器中进行了测试。

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