Jati A, Singh G, Koley S, Konar A, Ray A K, Chakraborty C
Department of Electronics & Telecommunication Engineering, Jadavpur University, Kolkata, India.
J Microsc. 2015 Mar;257(3):187-200. doi: 10.1111/jmi.12200. Epub 2014 Dec 2.
Medical image segmentation demands higher segmentation accuracy especially when the images are affected by noise. This paper proposes a novel technique to segment medical images efficiently using an intuitionistic fuzzy divergence-based thresholding. A neighbourhood-based membership function is defined here. The intuitionistic fuzzy divergence-based image thresholding technique using the neighbourhood-based membership functions yield lesser degradation of segmentation performance in noisy environment. Its ability in handling noisy images has been validated. The algorithm is independent of any parameter selection. Moreover, it provides robustness to both additive and multiplicative noise. The proposed scheme has been applied on three types of medical image datasets in order to establish its novelty and generality. The performance of the proposed algorithm has been compared with other standard algorithms viz. Otsu's method, fuzzy C-means clustering, and fuzzy divergence-based thresholding with respect to (1) noise-free images and (2) ground truth images labelled by experts/clinicians. Experiments show that the proposed methodology is effective, more accurate and efficient for segmenting noisy images.
医学图像分割需要更高的分割精度,尤其是当图像受到噪声影响时。本文提出了一种新颖的技术,利用基于直觉模糊散度的阈值化方法有效地分割医学图像。这里定义了一个基于邻域的隶属函数。使用基于邻域隶属函数的基于直觉模糊散度的图像阈值化技术在噪声环境中分割性能的退化较小。其处理噪声图像的能力已得到验证。该算法独立于任何参数选择。此外,它对加性噪声和乘性噪声都具有鲁棒性。为了验证其新颖性和通用性,所提出的方案已应用于三种类型的医学图像数据集。将所提出算法的性能与其他标准算法进行了比较,即大津法、模糊C均值聚类以及基于模糊散度的阈值化方法,比较内容涉及(1)无噪声图像和(2)由专家/临床医生标注的真实图像。实验表明,所提出的方法对于分割噪声图像是有效、更准确且高效的。