An Evaluation of Fuzzy in Image Enhancement: Design and Comparison for Penicillium and Aspergillus Species

Farah Nabilah Zabani, Haryati Jaafar, Nur Rodiatul Raudah Mohamed Radzuan, Fatin Norazima Mohamad Ariff, Azirah Baharum
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Abstract

The main focus in this study is to enhance and classify the image of a type of filamentous fungi named Penicillium and Aspergillus. For image enhancement, fuzzy-partition gamma adaptive histogram equalization (FpGAHE) is proposed to improve the quality of an image, in particular the low quality of a microscopic image. Two stages have been considered in this technique. In the first stage, a fuzzy partition is developed to handle the inconsistency of the grey level values of the images by introducing a fuzzy set. In the second stage, surrounding neighbourhood is employed to avoid the imbalance data and reduce the drastically changes of brightness values of the image. The performances are evaluated into two parts i.e., image processing and image classification by using the collected microscopic images of fungi species. To evaluate the effectiveness of the proposed technique, the existing techniques, HE, AHE, CLAHE, GC and AGC is compared to the FpGAHE. In image processing, the result attained shows that the proposed technique has a better performance by obtaining the highest value for the PSNR, SSIM and FSIM evaluation for the species of A. terreus in clean condition. Meanwhile, in image classification, five different nearest neighbour classifiers have been tested. The results show the proposed FpGAHE with Improved Fuzzy-Based k Nearest Centroid Neighbour (IFkNCN) classifier perform the best result compare to other nearest neighbour classifier by obtaining the value of 92.59 and 93.95 for the salt and pepper and Gaussian noise corrupted images respectively.
图像增强中的模糊评估:青霉和曲霉菌种的设计与比较
本研究的重点是对一种名为青霉和曲霉的丝状真菌的图像进行增强和分类。在图像增强方面,提出了模糊分区伽马自适应直方图均衡化(FpGAHE)技术来改善图像质量,尤其是低质量的显微图像。该技术分为两个阶段。在第一阶段,开发了一个模糊分区,通过引入一个模糊集来处理图像灰度值的不一致性。在第二阶段,采用周边邻域来避免不平衡数据,减少图像亮度值的剧烈变化。利用收集到的真菌物种显微图像,分图像处理和图像分类两部分对其性能进行评估。为了评估所提出技术的有效性,将现有技术、HE、AHE、CLAHE、GC 和 AGC 与 FpGAHE 进行了比较。在图像处理方面,结果表明,对于清洁条件下的 A. terreus 菌种,建议的技术具有更好的性能,在 PSNR、SSIM 和 FSIM 评估中获得了最高值。同时,在图像分类方面,测试了五种不同的近邻分类器。结果表明,与其他近邻分类器相比,使用改进的基于模糊的 k 中心点近邻(IFkNCN)分类器的 FpGAHE 在盐和胡椒以及高斯噪声破坏的图像中分别获得了 92.59 和 93.95 的数值,表现最佳。
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