Evolutionary computing model for finding breast cancer masses using image enhancement procedures with artificial intelligent algorithms

Dhivya Samraj, Kuppuchamy Ramasamy, M. Karuppusamy
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Abstract

In this research, Particle Swarm Optimization (PSO) based image equalization is projected to enhance the contrast of different breast cancer images. Breast cancer is the highest and another important root of tumor disease in females worldwide. Mass and microcalcification clusters are a significant early signs of breast cancer. The mortality rate can effectively be decreased by early diagnosis and treatment. Most practical approach for the early detection and identification of breast cancer diseases is mammography. Mammographic images contaminated by noise usually involve image enhancement techniques to aid interpretation. Contrast enhancement is divided into two categories: development of direct contrast and enhancement of indirect contrast. Indirect contrast improvement is used in the image histogram update. Histogram Equalization (HE) is the modest enhancement of the indirect contrast approach usually used for contrast enhancement. The proposed method's average entropy is 5.3251 with the highest structural similarity index 0.99725. The best contrast improvement of this method is 1.0404 and PSNR is 46.3803. The MSE value is 2157.08. This paper recommends an innovative method of enhancing digital mammogram image contrast based on different histogram equalization approaches. The performance of the projected method has been related to other prevailing techniques using the parameters, namely, discrete entropy, contrast improvement index, structural similarity index measure, mean square error, and peak signal-to-noise ratio. Investigational findings indicate that the projected strategy is efficient and robust and shows better results than others.
使用人工智能算法的图像增强程序寻找乳腺癌肿块的进化计算模型
在本研究中,提出了基于粒子群优化(PSO)的图像均衡化方法来增强不同乳腺癌图像的对比度。乳腺癌是世界范围内女性肿瘤疾病的最高和另一个重要根源。肿块和微钙化团簇是乳腺癌的重要早期征象。早期诊断和治疗可有效降低死亡率。早期发现和鉴别乳腺癌疾病最实用的方法是乳房x光检查。被噪声污染的乳房x线摄影图像通常需要图像增强技术来帮助解释。对比增强分为直接对比发展和间接对比增强两大类。在图像直方图更新中采用间接对比度改进。直方图均衡化(HE)是通常用于对比度增强的间接对比度方法的适度增强。该方法的平均熵为5.3251,最高结构相似指数为0.99725。该方法的最佳对比度提高为1.0404,PSNR为46.3803。MSE为2157.08。本文提出了一种基于不同直方图均衡化方法增强数字乳房x线图像对比度的创新方法。投影方法的性能与使用参数的其他流行技术有关,即离散熵、对比度改进指数、结构相似性指数度量、均方误差和峰值信噪比。调查结果表明,该预测策略是有效和稳健的,并显示比其他更好的结果。
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