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Towards RoboCup without Color Labeling

机译:对于没有颜色标签的robocup

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摘要

Object recognition and localization methods in RoboCup work on color segmented camera images. Unfortunately, color labeling can be applied to object recognition tasks only in very restricted environments, where different kinds of objects have different colors. To overcome these limitations we propose an algorithm named the Contracting Curve Density (CCD) algorithm for fitting parametric curves to image data. The method neither assumes object specific color distributions, nor specific edge profiles, nor does it need threshold parameters. Hence, no training phase is needed. In order to separate adjacent regions we use local criteria which are based on local image statistics. We apply the method to the problem of localizing the ball and show that the CCD algorithm reliably localizes the ball even in the presence of heavily changing illumination, strong clutter, specularity, partial occlusion, and texture.
机译:Robocup在彩色分段相机图像上工作的对象识别与本地化方法。不幸的是,颜色标签只能在非常受限制的环境中应用于对象识别任务,不同类型的对象具有不同的颜色。为了克服这些限制,我们提出了一种命名为拟合参数曲线的收缩曲线密度(CCD)算法的算法到图像数据。该方法既不假设对象特定的颜色分布,也不是特定的边缘配置文件,也不需要阈值参数。因此,不需要培训阶段。为了分离相邻区域,我们使用基于本地图像统计的本地标准。我们将该方法应用于本地化球的问题,并表明CCD算法即使在存在严重改变的照明,强杂波,镜面,部分闭塞和质地的情况下也可靠地定位球。

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