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首页> 外文期刊>International Journal of Engineering Science and Technology >Biomedical Image Edge Detection using an Ant Colony Optimization Based on Artificial Neural Networks
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Biomedical Image Edge Detection using an Ant Colony Optimization Based on Artificial Neural Networks

机译:基于人工神经网络的蚁群优化生物医学图像边缘检测

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Ant colony optimization (ACO) is the algorithm that has inspired from natural behavior of ants life, which the ants leaved pheromone to search food on the ground. In this paper, ACO is introduced for resolving the edge detection in the biomedical image. Edge detection method based on ACO is able to create a matrix pheromone that shows information of available edge in each location of edge pixel which is created based on the movements of a number of ants on the biomedical image. Moreover, the movements of these ants are created by local fluctuation of biomedical image intensity values. The detected edge biomedical images have low quality rather than detected edge biomedical image resulted of a classic mask and wont result application of these masks to edge detection biomedical image obtained of ACO. In proposed method, we use artificial neural network with supervised learning along with momentum to improve edge detection based on ACO. The experimental results shows that make use neural network are very effective in edge detection based on ACO.
机译:蚁群优化(ACO)是从蚂蚁生命的自然行为中获得启发的算法,蚂蚁留下了信息素以在地面上寻找食物。在本文中,引入了ACO来解决生物医学图像中的边缘检测。基于ACO的边缘检测方法能够创建矩阵信息素,该信息素显示边缘像素每个位置的可用边缘信息,该信息是基于生物医学图像上许多蚂蚁的运动而创建的。而且,这些蚂蚁的运动是由生物医学图像强度值的局部波动产生的。所检测的边缘生物医学图像具有低质量,而不是传统掩模产生的所检测边缘生物医学图像,并且不会将这些掩模应用于ACO获得的边缘检测生物医学图像。在提出的方法中,我们将人工神经网络与监督学习以及动量结合使用,以改进基于ACO的边缘检测。实验结果表明,利用神经网络在基于ACO的边缘检测中非常有效。

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