Pellegrino Felice Andrea, Vanzella Walter, Torre Vincent
Department of Mathematics and Computer Science (DIMI), University of Udine, Udine 33100, Italy.
IEEE Trans Syst Man Cybern B Cybern. 2004 Jun;34(3):1500-18. doi: 10.1109/tsmcb.2004.824147.
The present manuscript aims at solving four problems of edge detection: the simultaneous detection of all step edges from a fine to a coarse scale; the detection of thin bars with a width of very few pixels; the detection of trihedral junctions; the development of an algorithm with image-independent parameters. The proposed solution of these problems combines an extensive spatial filtering with classical methods of computer vision and newly developed algorithms. Step edges are computed by extracting local maxima from the energy summed over a large bank of directional odd filters with a different scale. Thin roof edges are computed by considering maxima of the energy summed over narrow odd and even filters along the direction providing maximal response. Junctions are precisely detected and recovered using the output of directional filters. The proposed algorithm has a threshold for the minimum contrast of detected edges: for the large number of tested images this threshold was fixed equal to three times the standard deviation of the noise present in usual acquisition system (estimated to be between 1 and 1.3 gray levels out of 256), therefore, the proposed scheme is in fact parameter free. This scheme for edge detection performs better than the classical Canny edge detector in two quantitative comparisons: the recovery of the original image from the edge map and the structure from motion task. As the Canny detector in previous comparisons was shown to be the best or among the best detectors, the proposed scheme represents a significant improvement over previous approaches.
同时从精细到粗糙尺度检测所有阶跃边缘;检测宽度仅为几个像素的细条;检测三面交汇点;开发一种具有与图像无关参数的算法。针对这些问题提出的解决方案将广泛的空间滤波与经典的计算机视觉方法和新开发的算法相结合。通过从不同尺度的大量定向奇数滤波器求和的能量中提取局部最大值来计算阶跃边缘。通过考虑沿提供最大响应方向的窄奇数和偶数滤波器求和的能量最大值来计算薄屋脊边缘。使用定向滤波器的输出精确检测和恢复交汇点。所提出的算法对检测到的边缘的最小对比度有一个阈值:对于大量测试图像,该阈值固定为通常采集系统中存在的噪声标准偏差的三倍(估计在256个灰度级中为1到1.3个灰度级),因此,所提出的方案实际上是无参数的。在两项定量比较中,这种边缘检测方案比经典的Canny边缘检测器表现更好:从边缘图恢复原始图像以及从运动任务恢复结构。由于在之前的比较中Canny检测器被证明是最好的或最好的检测器之一,所提出的方案代表了对先前方法的显著改进。