A Novel Approach to Extract Salient Regions by Segmenting Color Images with Hybrid Algorithm

P. Palsodkar, P. Bajaj
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Abstract

Due to the advent of computer technology image-processing techniques have become increasingly important in a wide variety of applications. This is particularly true for medical imaging such as Computer Tomography (CT), magnetic resonance image (MRI), and nuclear medicine, which can be used to assist doctors in diagnosis, treatment, and research. In this paper, hybrid algorithm for segmentation of color images is presented. The segments in images are found automatically based on adaptive multilevel threshold approach and FCM algorithm. Neural network with multisigmoid function tries to label the objects with its original color even after segmentation. One of the advantages of this system is that it does not require a past knowledge about the number of objects in the image. This Fuzzy-Neuro system is tested on Berkley standard image database and also attempts have been made to compare the performance of the proposed algorithm with other currently available algorithms. From experimental results, the performance of the proposed technique is found out to yields better extraction of salient regions with high resolution as nearly same as the original image and better than the existing techniques. It can be used as a primary tool to segment unknown color images. Experimental results show that its performance is robust to different types of color images.
基于混合算法分割彩色图像提取显著区域的新方法
由于计算机技术的出现,图像处理技术在各种各样的应用中变得越来越重要。对于医学成像,如计算机断层扫描(CT)、磁共振成像(MRI)和核医学来说尤其如此,它们可以用来协助医生进行诊断、治疗和研究。本文提出了一种用于彩色图像分割的混合算法。基于自适应多层阈值法和FCM算法,对图像中的片段进行自动识别。具有多重s型函数的神经网络在分割后仍尝试用物体的原始颜色标记物体。该系统的优点之一是它不需要过去对图像中物体数量的了解。该模糊神经系统在伯克利标准图像数据库上进行了测试,并试图将所提出算法的性能与其他现有算法进行比较。实验结果表明,该方法能较好地提取出与原图像基本相同的显著区域,且具有较高的分辨率。它可以作为分割未知彩色图像的主要工具。实验结果表明,该方法对不同类型的彩色图像具有较强的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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