Image Segmentation based on discrete Krawtchouk Moment and Quantum Neural Network

Zhen Liu, Jinming Shi, Zhongying Bai
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引用次数: 1

Abstract

A new image segmentation method based on discrete Krawtchouk moments and Quantum neural networks is presented. The Krawtchouk moments in certain local window of each pixel in the image are computed and input to quantum neural network . Quantum neural networks, which use multilevel transfer function, have the inherent fuzzy characteristics. The point accommodates to the connatural uncertainty of fractional image data in image segmentation procession. Experiments confirm that the performance of our proposed methods is more accurate and has less iterative time in comparison with the traditional segmentation methods based on Legendre moments and BP neutral networks.
基于离散克劳tchouk矩和量子神经网络的图像分割
提出了一种基于离散克劳tchouk矩和量子神经网络的图像分割方法。计算图像中每个像素的局部窗口的克劳丘克矩,并将其输入到量子神经网络中。量子神经网络采用多级传递函数,具有固有的模糊性。该点适用于图像分割处理中分数图像数据的自然不确定性。实验证明,与传统的基于Legendre矩和BP神经网络的分割方法相比,本文方法的分割精度更高,迭代时间更短。
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