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Directional morphological gradient edge detector.

机译:定向形态学梯度边缘检测器。

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In this thesis, the limitations of the conventional morphological gradient (MG) as an edge detector are theoretically analyzed, and three new methods with improved performance are developed. The new methods are analyzed theoretically and demonstrated with both synthetic and real image data. The basic issues regarding edge detection, linear and nonlinear filtering, especially in morphological filtering, are overviewed. By thoroughly studying the behavior of morphological gradient with the order statistic method, the thesis proves theoretically that conventional MG has higher noise sensitivity than other gradient operators. This is the first comprehensive theoretical analysis for MG noise sensitivity reported in image processing literature.; The MG does not provide edge orientation information, which is available from other gradient operators such as the Sobel operator. Directional morphological gradient operators are proposed to overcome this drawback and also reduce the noise response. One dimensional MGs for different orientations (horizontal, vertical and diagonal directions) are used to calculate directional morphological gradient components. Basic MG and Blurred-minimum-operator (BMO) methods are augmented for the calculation of directional morphological gradients, which are called DMG and DBMO. With those directional gradients, edge angles can be estimated from horizontal/vertical (HV) and diagonal components. To reduce noise, inconsistent angle checking methods are developed in the DMG and DBMO, which compare the HV gradient components to the diagonal gradient components. It is a novel approach to remove noise with consistency of angle estimates instead of solely depending on edge magnitude threshold. With prefiltering and the use of a post processing method of combining non-maximum suppression in terms of edge orientations, another operator, called DMGF, is introduced and analyzed as well.; The performance of the DMG, DBMO and DMGF are evaluated with respect to the accuracy of the gradient magnitude, the accuracy of the angle estimation, and the sensitivity to noise for a constant gradient image, a step edge model and a synthetic image. Proposed operators are compared with similar complexity operators, such as the Sobel operator, in noiseless images for angle and magnitude estimation. To study noise sensitivity, Gaussian and impulsive noise are added to an ideal step edge and a synthetic image that has complex image corners and different curvatures. The false edge detection rate is designed to measure the performance for noisy images from different operators. Furthermore, using a set of natural images from different applications with typical contents, the performance of proposed operators are compared with Laplacian of Gaussian (LOG), Canny, BMO and Graduated-Non-Convex (GNC) operators.; The theoretical and experimental results show that proposed operators have better or competitive results in angle and magnitude estimation than Sobel in the noiseless case. The maximum error for angle estimation is down about 50% compared to Sobel. Using table lookup techniques not only speeds up angle estimation, but also significantly improves the accuracy of angle estimation. With inconsistent angle checking and combining filtering, DBMO and DMGF significantly reduce noise sensitivity compared to the Sobel. The false edge detection rate is reduced by 10–40%. With application to a variety of natural images, Chapter 7 shows that the proposed operator demonstrates promising results compared with other popular linear and nonlinear operators.
机译:本文从理论上分析了传统形态学梯度作为边缘检测器的局限性,并提出了三种性能得到改进的新方法。从理论上分析了这些新方法,并通过合成和真实图像数据进行了演示。概述了有关边缘检测,线性和非线性过滤(尤其是形态过滤)的基本问题。通过用阶数统计方法对形态梯度的行为进行深入研究,从理论上证明了传统MG具有比其他梯度算子更高的噪声敏感性。这是图像处理文献中首次对MG噪声敏感度进行了全面的理论分析。 MG不提供边缘方向信息,该信息可以从其他梯度运算符(例如Sobel运算符)获得。提出了定向形态学梯度算子来克服这一缺点并降低噪声响应。用于不同方向(水平,垂直和对角线方向)的一维MG用于计算方向形态梯度分量。基本的MG和模糊最小运算符(BMO)方法得到了增强,用于计算方向形态梯度,称为DMG和DBMO。利用这些方向梯度,可以从水平/垂直(HV)和对角线分量估算边角。为了减少噪声,DMG和DBMO中开发了不一致的角度检查方法,该方法将HV梯度分量与对角梯度分量进行比较。这是一种新颖的方法,可以消除具有角度估计一致性的噪声,而不仅仅是依靠边缘幅度阈值。通过预滤波和结合边缘方向非最大抑制的后处理方法的使用,还引入并分析了另一个称为DMGF的运算符。针对恒定梯度图像,台阶边缘模型和合成图像,针对梯度幅度的准确性,角度估计的准确性以及对噪声的敏感性,评估了DMG,DBMO和DMGF的性能。在无噪声图像中,将拟议的算子与类似复杂度的算子(例如Sobel算子)进行比较,以进行角度和幅度估计。为了研究噪声敏感性,将高斯噪声和脉冲噪声添加到理想的台阶边缘和具有复杂图像角和不同曲率的合成图像。错误边缘检测率旨在测量来自不同操作员的嘈杂图像的性能。此外,使用一组来自不同应用的具有典型内容的自然图像,将拟议的算子的性能与高斯的拉普拉斯算子(LOG),Canny,BMO和无梯度的算子(GNC)进行比较。理论和实验结果表明,在无噪声情况下,拟议的算子在角度和幅度估计上具有比Sobel更好或更具竞争力的结果。与Sobel相比,角度估计的最大误差降低了约50%。使用查表技术不仅可以加快角度估计的速度,而且可以显着提高角度估计的准确性。与Sobel相比,通过不一致的角度检查和组合滤波,DBMO和DMGF大大降低了噪声灵敏度。错误边缘检测率降低了10–40%。应用于各种自然图像后,第7章表明,与其他流行的线性和非线性算子相比,所提出的算子表现出令人鼓舞的结果。

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