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Fast Object Detection by Regression in Robot Soccer

机译:机器人足球中基于回归的快速目标检测

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Visual object detection in robot soccer is fundamental so the robots can act to accomplish their tasks. Current techniques rely on manually highly polished definitions of object models, that lead to accurate detection, but are quite often computationally inefficient. In this work, we contribute an efficient object detection through regression (ODR) method based on offline training. We build upon the observation that objects in robot soccer are of a well defined color and investigate an offline learning approach to model such objects. ODR consists of two main phases: (i) offline training, where the objects are automatically labeled offline by existing techniques, and (ii) online detection, where a given image is efficiently processed in real-time with the learned models. For each image, ODR determines whether the object is present and provides its position if so. We show comparing results with current techniques for precision and computational load.
机译:足球机器人中的视觉对象检测非常重要,因此机器人可以采取行动来完成任务。当前的技术依赖于对象模型的手动高度修饰的定义,这导致精确的检测,但是通常在计算上效率低下。在这项工作中,我们基于脱机训练通过回归(ODR)方法为有效的物体检测做出了贡献。我们基于观察发现机器人足球中的对象具有明确定义的颜色,并研究了一种离线学习方法来对此类对象进行建模。 ODR包含两个主要阶段:(i)离线训练,其中,现有技术自动将对象标记为离线;以及(ii)联机检测,其中,通过学习的模型实时有效地处理给定图像。对于每个图像,ODR都会确定对象是否存在,如果存在,则提供其位置。我们显示了将结果与当前的精度和计算负载技术进行比较的结果。

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