Robust template based corner detection algorithms for robotic vision

Chen Gao, K. Panetta, S. Agaian
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引用次数: 2

Abstract

Image corners encapsulate gradient changes in multiple directions. Therefore, corners are considered as efficient features for use in robotic navigation algorithms. Template based corner detection has a low computational complexity and is straightforward to implement. With the appropriate design of templates, satisfactory detection accuracy can also be achieved. In this paper, we introduce two new template based corner detection algorithms to be used to assist robot vision: the matching based corner detection, namely, MBCD; and the correlation based corner detection, namely, CBCD. These two approaches outperform existing template based approaches in the means that they reduce detection of spurious corners by considering ideal corners with at least two-pixel length on the corner arm directions. Experimental results show that the proposed algorithms detect essential corners for synthetic images and natural images satisfactorily according to human visual perception. We also examine the robustness of the two corner detection approaches in terms of the average repeatability and localization error. Since our approaches are computationally efficient, it makes these template based corner detection algorithms suitable for real time support in robotic applications. Comparisons with existing corner detection algorithms are also presented.
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基于鲁棒模板的机器人视觉角点检测算法
图像角封装了多个方向的梯度变化。因此,角点被认为是机器人导航算法中有效的特征。基于模板的角点检测具有计算复杂度低、实现简单等优点。通过适当的模板设计,也可以达到满意的检测精度。本文介绍了两种新的基于模板的角点检测算法,用于辅助机器人视觉:基于匹配的角点检测,即MBCD;基于相关的角点检测,即CBCD。这两种方法优于现有的基于模板的方法,因为它们通过考虑角臂方向上至少有两个像素长度的理想角来减少假角的检测。实验结果表明,该算法能较好地检测出合成图像和自然图像的基本角点。我们还研究了两种角点检测方法在平均可重复性和定位误差方面的鲁棒性。由于我们的方法计算效率高,因此这些基于模板的角点检测算法适用于机器人应用的实时支持。并与现有的角点检测算法进行了比较。
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