Biomedical image enhancement based on modified Cuckoo Search and morphology

布谷鸟搜索 计算机科学 人工智能 灰度 计算机视觉 数字图像 预处理器 图像处理 失真(音乐) 数字图像处理 噪音(视频) 模式识别(心理学) 图像(数学) 算法 粒子群优化 计算机网络 放大器 带宽(计算)
作者
Mousomi Roy,Shouvik Chakraborty,Kalyani Mali,Sankhadeep Chatterjee,Soumen Banerjee,Agniva Chakraborty,Rahul Biswas,Jyotirmoy Karmakar,Koushik Roy
标识
DOI:10.1109/iemecon.2017.8079595
摘要

This work describes an method for biomedical image enhancement using modified Cuckoo Search Algorithm with some Morphological Operation. In recent years, various digital image processing techniques are developed. Computer Vision, machine interfaces, manufacturing industry, data compression for storage, vehicle tracking and many more are some of the domains of digital image processing application. In most of the cases, digital biomedical images contains various types of noise, artifacts etc. and are not useful for direct applications. Before using it in any process, the input image has to be gone through some preprocessing stages; such preprocessing is generally called as image enhancement. In this work, a new technique has been proposed to enhance biomedical images using modified cuckoo search algorithm and morphological operation. Presence of noise and other unwanted objects generates distortion in an image and it will affect the ultimate result of the process. In case of biomedical images, accuracy of the results is very important. It may also decrease the discernibility of many features inside the images. It can affect the classification accuracy. In this work, this issue has been targeted and improved by obtaining better contrast value after converting the color image into grayscale image. The basic property of the cuckoo search algorithm is that the amplitudes of its components are capable to objectively describe the contribution of the gray levels to the formation of image information for the best contrast value of a digital image. The proposed method modified the conventional cuckoo search method by employing the McCulloch's method for levy flight generation. After computing the best contrast value, morphological operation has been applied. In morphological operation based phase, the intensity parameters are tuned for quality enhancement. Experimental results illustrate the effectiveness of this work.

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