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A Novel Method for Grayscale Image Segmentation by Using GIT-PCANN

机译:基于GIT-PCANN的灰度图像分割新方法

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PCNN has been widely used in image segmentation. However, satisfactory results are usually obtained at the expense of time-consuming selection of PCNN parameters and the number of iteration. A novel method, called grayscale iteration threshold pulse coupled neural network (GIT-PCNN) was proposed for image segmentation, which integrates grayscale iteration threshold with PCNN. In this method, traditional PCNN is simplified so that there is only one parameter to be determined. Furthermore, the PCNN threshold is determined iteratively by the grayscale of the original image so that the image is segmented through one time of firing process and no iteration or specific rule is needed as the iteration stop condition. The method demonstrates better performance and faster compared to those PCNN based segmentation algorithms which require the number of iterations and image entropy as iteration stop condition. Experimental results show the effectiveness of the proposed method on segmentation results and speed performance.
机译:PCNN已广泛用于图像分割。但是,通常以耗时的PCNN参数选择和迭代次数为代价获得令人满意的结果。提出了一种新的灰度迭代阈值脉冲耦合神经网络(GIT-PCNN)图像分割方法,该方法将灰度迭代阈值与PCNN相结合。在这种方法中,传统的PCNN得以简化,因此只有一个参数需要确定。此外,通过原始图像的灰度来迭代地确定PCNN阈值,以便通过一次触发过程对图像进行分割,并且不需要迭代或特定规则作为迭代停止条件。与那些需要迭代次数和图像熵作为迭代停止条件的基于PCNN的分割算法相比,该方法具有更好的性能和更快的速度。实验结果证明了该方法对分割结果和速度性能的有效性。

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