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A Kind of Color Image Segmentation Algorithm Based on Super- pixel and PCNN

机译:一种基于超像素和PCNN的彩色图像分割算法

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Image segmentation is a very important step in the low-level visual computing. Although image segmentation has been studied for many years, there are still many problems. PCNN (Pulse Coupled Neural network) has biological background, when it is applied to image segmentation it can be viewed as a region-based method, but due to the dynamics properties of PCNN, many connectionless neurons will pulse at the same time, so it is necessary to identify different regions for further processing. The existing PCNN image segmentation algorithm based on region growing is used for grayscale image segmentation, cannot be directly used for color image segmentation. In addition, the super-pixel can better reserve the edges of images, and reduce the influences resulted from the individual difference between the pixels on image segmentation at the same time. Therefore, on the basis of the super-pixel, the original PCNN algorithm based on region growing is improved by this paper. First, the color super-pixel image was transformed into grayscale super-pixel image which was used to seek seeds among the neurons that hadn't been fired. And then it determined whether to stop growing by comparing the average of each color channel of all the pixels in the corresponding regions of the color super-pixel image. Experiment results show that the proposed algorithm for the color image segmentation is fast and effective, and has a certain effect and accuracy.
机译:图像分割是低级视觉计算中非常重要的一步。尽管图像分割已经研究了很多年,但是仍然存在许多问题。 PCNN(脉冲耦合神经网络)具有生物学背景,当将其应用于图像分割时,可以看作是一种基于区域的方法,但是由于PCNN的动力学特性,许多无连接神经元会同时发出脉冲,因此标识不同区域以进行进一步处理是必要的。现有的基于区域增长的PCNN图像分割算法用于灰度图像分割,不能直接用于彩色图像分割。另外,超像素可以更好地保留图像的边缘,同时减少了像素之间的个体差异对图像分割的影响。因此,在超像素的基础上,本文对基于区域增长的PCNN算法进行了改进。首先,将彩色超像素图像转换为灰度超像素图像,该图像用于在尚未激发的神经元中寻找种子。然后,通过比较彩色超像素图像相应区域中所有像素的每个彩色通道的平均值,确定是否停止增长。实验结果表明,提出的彩色图像分割算法快速有效,具有一定的效果和准确性。

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