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A context sensitive energy thresholding based 3D Otsu function for image segmentation using human learning optimization

机译:基于语境敏感能量阈值基于基于3D OTSU函数的人类学习优化的图像分割

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In this paper, a novel context-based 3D Otsu algorithm using human learning optimization (HLO) is proposed for multilevel color image segmentation. The performance of 3D Otsu algorithm is reported to be poor while dealing with between-class variances through the aid of three-dimensional histogram. To overcome this problem, the concept of context thresholding has been exploited to derive pixel intensity values and spatial information. The nature of spatial context and histogram of an image is very similar. The use of energy curve for 3D Otsu gives satisfactory results but it is more time-consuming during the process of threshold selection. HLO is a recently developed meta-heuristic optimization algorithm that involves the use of learning operators developed by mimicking human learning mechanisms. In this paper, in order to avoid an exhaustive search to obtain optimal thresholds, HLO is used. Experimental studies reported in this paper demonstrate that the proposed method is better than the histogram-based 1D Otsu, 2D Otsu, and 3D Otsu methods. These claims have been confirmed by comparing fidelity parameters such as mean error (ME), mean squared error (MSE), peak signal-to-noise ratio (PSNR), feature similarity index (FSIM), structure similarity index (SSIM) and entropy. (C) 2019 Elsevier B.V. All rights reserved.
机译:本文提出了一种基于基于语境的3D OTSU算法,用于多级彩色图像分割。据报道,3D OTSU算法的性能在通过三维直方图借助于阶级差异处理的同时差。为了克服这个问题,已经利用上下文阈值化的概念来推导像素强度值和空间信息。空间背景和图像直方图的性质非常相似。 3D OTSU的能量曲线的使用提供了令人满意的结果,但在阈值选择过程中它更耗时。 HLO是最近开发的元启发式优化算法,涉及使用通过模拟人类学习机制而开发的学习操作员。在本文中,为了避免详尽的搜索以获得最佳阈值,使用HLO。本文报道的实验研究表明,所提出的方法优于基于直方图的1D OTSU,2D OTSU和3D OTSU方法。通过比较诸如平均误差(ME),均方方误差(MSE),峰值信噪比(PSNR),特征相似性指数(FSIM),结构相似性指数(SSIM)和熵的诸如平均误差(ME),峰值信噪比(SSIM)和熵的证据证实了这些权利要求。 (c)2019年Elsevier B.V.保留所有权利。

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