Enhanced Automatic Image Parameter setting and Segmentation Method

Kedir Kamu Sirur, Ye Peng, Zhang Qinchuan
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引用次数: 0

Abstract

There are a lot of works done to automatically set parameters and segment images based on Pulse Coupled Neural Networks (PCNN). In this study we propose an automatic parameters setting and segmentation method based on Intersecting Cortical Mode (ICM) which enables to overcome the basic limitation of PCNN based methods. We used the ICM as base and developed an enhanced automatic method which can withstand effects of multiple background and illumination during segmentation. Characteristics pixel values of the input image are used to deduce corresponding segmentation parameters. The experiment is done on Aerial Image Segmentation Dataset and Database of Human Segmented Natural Images. Our method outperformed for subjective and objective evaluations, also shown consistent assignment of parameter values. Also the proposed method is able to reduce the segmentation time by half and overcome the limitations of the existing automatic models.
增强的自动图像参数设置和分割方法
基于脉冲耦合神经网络(Pulse Coupled Neural Networks, PCNN),在自动设置参数和分割图像方面做了大量的工作。在本研究中,我们提出了一种基于相交皮质模式(Intersecting Cortical Mode, ICM)的参数自动设置和分割方法,克服了基于PCNN方法的基本局限性。我们以ICM为基础,开发了一种增强的自动分割方法,该方法可以在分割过程中承受多个背景和光照的影响。利用输入图像的特征像素值来推导相应的分割参数。实验分别在航空图像分割数据集和人类自然图像分割数据库上进行。我们的方法优于主观和客观的评价,也显示一致的分配参数值。该方法能够将分割时间缩短一半,克服了现有自动模型的局限性。
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