Department of Physics, University of Genoa, Genoa, Italy, 16146.
IEEE Trans Pattern Anal Mach Intell. 1986 Feb;8(2):147-63. doi: 10.1109/tpami.1986.4767769.
Edge detection is the process that attempts to characterize the intensity changes in the image in terms of the physical processes that have originated them. A critical, intermediate goal of edge detection is the detection and characterization of significant intensity changes. This paper discusses this part of the edge detection problem. To characterize the types of intensity changes derivatives of different types, and possibly different scales, are needed. Thus, we consider this part of edge detection as a problem in numerical differentiation. We show that numerical differentiation of images is an ill-posed problem in the sense of Hadamard. Differentiation needs to be regularized by a regularizing filtering operation before differentiation. This shows that this part of edge detection consists of two steps, a filtering step and a differentiation step. Following this perspective, the paper discusses in detail the following theoretical aspects of edge detection. 1) The properties of different types of filters-with minimal uncertainty, with a bandpass spectrum, and with limited support-are derived. Minimal uncertainty filters optimize a tradeoff between computational efficiency and regularizing properties. 2) Relationships among several 2-D differential operators are established. In particular, we characterize the relation between the Laplacian and the second directional derivative along the gradient. Zero crossings of the Laplacian are not the only features computed in early vision. 3) Geometrical and topological properties of the zero crossings of differential operators are studied in terms of transversality and Morse theory.
边缘检测是一种试图根据产生它们的物理过程来描述图像中强度变化的过程。边缘检测的一个关键、中间目标是检测和描述显著的强度变化。本文讨论了边缘检测问题的这一部分。为了描述强度变化的类型,需要不同类型的导数,并且可能需要不同的尺度。因此,我们将这部分边缘检测视为数值微分问题。我们表明,图像的数值微分在 Hadamard 的意义下是不适定的。在微分之前,需要通过正则化滤波操作对微分进行正则化。这表明这部分边缘检测由两个步骤组成,即滤波步骤和微分步骤。基于这一观点,本文详细讨论了边缘检测的以下理论方面。1)推导了不同类型滤波器的特性——具有最小不确定性、带通频谱和有限支持。最小不确定性滤波器在计算效率和正则化特性之间进行了权衡。2)建立了几个二维微分算子之间的关系。特别是,我们描述了拉普拉斯算子和沿梯度的二阶方向导数之间的关系。在早期视觉中,不是只计算拉普拉斯算子的零交叉。3)从横向性和 Morse 理论的角度研究了微分算子零交叉的几何和拓扑性质。