Multiple Features Based Low-Contrast Infrared Ship Image Segmentation Using Fuzzy Inference System

Tao Wang, X. Bai, Yu Zhang
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引用次数: 4

Abstract

Infrared (IR) ship image segmentation is a challenging task due to defects of IR images, such as low-contrast, sea clutters, noises and etc. Aiming to solve this problem, we propose a multiple features based IR ship image segmentation method using fuzzy inference system (FIS). Because of complexness of the low-contrast IR image, the ship target cannot be segmented by only one kind of feature. Thus we extract multiple features from IR image to sufficiently represent the ship target. As the FIS can well handle the uncertainty of IR image and express expert knowledge with fuzzy rules, multiple features are input to FIS, then the ship target can be simply extracted from the output of FIS. In this paper, the proposed method is implemented as follows. Firstly, intensity is chosen as the first input of FIS, because it is fundamental feature of ship target in IR image. Secondly, the spatial feature is constructed through saliency detection, region growing and morphology processing, which is used to represent spatial constrain of ship target region. Thirdly, the multiple features are fuzzified with adaptive methods and prior knowledge. Fourthly, the fuzzified features are well combined through FIS, according to the fuzzy rules based on expert knowledge. Finally, the intact ship target segmentation can be simply extracted through the output of the FIS. Experimental results show that our method can effectively extracts the complete and precise ship targets from the low-contrast IR ship images. Moreover, our method performs better than other existed segmentation methods.
基于模糊推理系统的多特征低对比度红外舰船图像分割
由于红外图像存在对比度低、杂波、噪声等缺陷,对红外舰船图像进行分割是一项具有挑战性的任务。针对这一问题,提出了一种基于模糊推理系统(FIS)的多特征红外舰船图像分割方法。由于低对比度红外图像的复杂性,仅用一种特征无法对舰船目标进行分割。因此,我们从红外图像中提取多种特征以充分表征舰船目标。由于FIS能够很好地处理红外图像的不确定性,并用模糊规则表达专家知识,将多个特征输入到FIS中,然后从FIS的输出中简单地提取出舰船目标。在本文中,所提出的方法实现如下。首先,选择强度作为FIS的第一输入,因为强度是红外图像中舰船目标的基本特征;其次,通过显著性检测、区域生长和形态学处理构建空间特征,用来表示舰船目标区域的空间约束;第三,采用自适应方法和先验知识对多个特征进行模糊化。第四,根据基于专家知识的模糊规则,通过FIS将模糊化特征很好地结合起来。最后,通过FIS的输出可以简单地提取完整的舰船目标分割。实验结果表明,该方法能有效地从低对比度红外舰船图像中提取出完整、精确的舰船目标。此外,该方法的分割性能优于现有的分割方法。
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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