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Promising research Vision-based robot positioning using neural networks

机译:有前途的研究使用神经网络的基于视觉的机器人定位

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Most vision-based robot positioning techniques rely on analytical formulations of the relationship between the robot pose and the projected image coordinates of several geometric features of the observed scene. This usually requires that several simple features such as points, lines or circles be visible in the image, which must either be unoccluded in multiple views or else part of a 3D model. Feature-matching algorithms, camera calibration, models of the camera geometry and object feature relationships are also necessary for pose determination. These steps are often computationally intensive and error-prone, and the complexity of the resulting formulations often limits the number of controllable degrees of freedom. We provide a comparative survey of existing visual robot positioning methods, and present a new technique based on neural learning and global image descriptors which overcomes many of these limitations. A feedforward neural network is used to learn the complex implicit relationship between the pose displacements of a 6-dof robot and the observed variations in global descriptors of the image, such as geometric moments and Fourier descriptors. The trained network may then be used to move the robot from arbitrary initial positions to a desired pose with respect to the observed scene. The method is shown to be capable of positioning an industrial robot with respect to a variety of complex objects with an acceptable precision for an industrial inspection application, and could be useful in other real-world tasks such as grasping, assembly and navigation.
机译:大多数基于视觉的机器人定位技术都依赖于机器人姿态与所观察场景的几个几何特征的投影图像坐标之间关系的解析公式。这通常要求在图像中可见几个简单的特征(例如点,线或圆),这些特征必须在多个视图中不被遮挡,或者在3D模型的一部分中不被遮挡。确定姿势还需要特征匹配算法,摄像机校准,摄像机几何模型和对象特征关系。这些步骤通常需要大量的计算并且容易出错,并且所得公式的复杂性经常限制了可控自由度的数量。我们提供了对现有视觉机器人定位方法的比较调查,并提出了一种基于神经学习和全局图像描述符的新技术,该技术克服了许多这些局限性。前馈神经网络用于了解6自由度机器人的姿态位移与图像全局描述符(例如几何矩和傅立叶描述符)中观察到的变化之间的复杂隐式关系。然后,可以使用受过训练的网络相对于所观察的场景将机器人从任意初始位置移动到所需姿势。该方法显示出能够相对于各种复杂物体以工业检查应用可接受的精度定位工业机器人,并且在其他现实世界任务(例如抓取,组装和导航)中可能有用。

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