Applying weighted mean aggregation to edge detection of images

J. Chang, Yi-Hsin Chang
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引用次数: 2

Abstract

This paper applies weighted mean to construct interval-valued fuzzy relations for grayscale image edge detection. This fuzzy relation image shows the changes in intensity values between a 3×3 window central pixel and its eight neighbor pixels. We employ two weighting parameters, and perform the weighted mean aggregation for the central pixel and its eight neighbor pixels in a sliding window across the image to lead to the fuzzy edge images. Finally, the image edge map is obtained through a threshold operation. Moreover, to decrease the edge detection error, weighting parameters of the mean can be learned by the gradient method caste in discrete formulation. By the training results of eight grayscale synthetic images with adding random noises, we have shown that the integration of interval-valued fuzzy relations with the weighted mean aggregation algorithm will produce a more robust response in detecting the image edge. Finally, by applying the optimal edge detection parameters to natural images, we have found that it is better compared to the well-known Canny edge detector.
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将加权均值聚合应用于图像边缘检测
本文应用加权均值构造区间值模糊关系,用于灰度图像边缘检测。这张模糊关系图像显示了3×3窗口中心像素与其八个相邻像素之间强度值的变化。我们采用两个加权参数,并在图像的滑动窗口中对中心像素及其八个相邻像素进行加权平均聚合,从而得到模糊边缘图像。最后,通过阈值运算得到图像边缘映射。此外,为了减小边缘检测误差,可以采用离散公式中的梯度法学习均值的加权参数。通过对8幅添加随机噪声的灰度合成图像的训练结果表明,区间值模糊关系与加权均值聚合算法的融合在图像边缘检测方面具有更强的鲁棒性。最后,通过将最优边缘检测参数应用于自然图像,我们发现它比著名的Canny边缘检测器更好。
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