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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Improving angular error via systematically designed near-circular Gaussian-based feature extraction operators
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Improving angular error via systematically designed near-circular Gaussian-based feature extraction operators

机译:通过系统设计的基于近圆高斯的特征提取算子改善角度误差

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摘要

In image filtering, the 'circularity' of an operator is an important factor affecting its accuracy. For example, circular differential edge operators are effective in minimising the angular error in the estimation of image gradient direction. We present a general approach to the computation of scalable circular low-level image processing operators that is based on the finite element method. We show that the use of Gaussian basis functions within the finite element method provides a framework for a systematic and efficient design procedure for operators that are scalable to near-circular neighbourhoods through the use of an explicit scale parameter. The general design technique may be applied to a range of operators. Here we evaluate the approach for the design of the image gradient operator. We illustrate that this design procedure significantly reduces angular error in comparison to other well-known gradient approximation methods. (c) 2006 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:在图像滤波中,操作员的“圆度”是影响其准确性的重要因素。例如,圆形差分边缘算子在使图像梯度方向的估计中的角度误差最小化方面有效。我们提出了一种基于有限元方法的可伸缩圆形低级图像处理算子的通用计算方法。我们表明,在有限元方法中使用高斯基函数为操作员提供了系统有效的设计程序框架,这些操作员可以通过使用显式比例尺参数扩展到近圆形邻域。通用设计技术可以应用于一系列运营商。在这里,我们评估图像梯度算子的设计方法。我们说明,与其他众所周知的梯度逼近方法相比,该设计程序可大大减少角度误差。 (c)2006模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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