A secured biomedical image processing scheme to detect pneumonia disease using dynamic learning principles

V. Nanammal, Venu Gopala Krishnan Jayagopalan
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引用次数: 1

Abstract

Now-a-days, the medical industry is growing a lot with the adaptation of latest technologies as well as the logical evaluation and security norms provides a robust platform to enhance the effectiveness of the industry at a drastic level. In this paper, a digital bio-medical image processing based Pneumonia disease identification system is introduced with enhanced security features. Due to improving the efficiency of the application, a well-known watermarking based security constraint is included to provide the protection to the respective hospital environment and patients as well. To avoid these issues, some sort of security aspects need to be followed so that this paper included watermarking based security to provide a rich level of protection to the images going to be tested. The main intention of this paper is to introduce a novel security enabled digital image processing scheme to identify the Pneumonic disease in earlier stages with respect to the proper classification principles. In this paper, a novel deep learning algorithm is introduced called enhanced Dynamic Learning Neural Network in which it is a hybrid algorithm with the combinations of conventional DLNN algorithm and the Support Vector Classification algorithm. This proposed approach effectively identifies the Pneumonia disease in earlier stages but the security inspection on the testing stage is so important to analyze the disease. The respective testing image is properly watermarked with the logo of the corresponding hospital; the image is processed otherwise the proposed approach skips the image to process. These kinds of security features emphasize the medical industry and boost up the levels more as well as the patients can get an appropriate error free care with the help of such technology. A proper Chest X-Ray based Kaggle dataset is considered to process the system as well as which contains 5856 Chest X-Ray images under two different categories such as Pneumonia and Normal. With respect to processing these images and identifying the Pneumonia disease effectively as well as the proposed watermarking enabled security features provide a good impact in the medical field protection system. The resulting section provides the proper proof to the effectiveness of the proposed approach and its prediction efficiency.
一种基于动态学习原理的安全生物医学图像处理方案
如今,随着最新技术的应用,医疗行业发展迅速,逻辑评估和安全规范为行业的有效性提供了一个强大的平台。本文介绍了一种基于数字生物医学图像处理的肺炎疾病识别系统。为了提高应用的效率,本文引入了一种众所周知的基于水印的安全约束,为各自的医院环境和患者提供保护。为了避免这些问题,需要遵循一些安全方面,因此本文包含了基于水印的安全性,为将要测试的图像提供丰富的保护级别。本文的主要目的是介绍一种新的安全启用数字图像处理方案,以识别肺炎疾病在早期阶段与适当的分类原则。本文介绍了一种新的深度学习算法——增强型动态学习神经网络,它是传统DLNN算法与支持向量分类算法相结合的混合算法。该方法可以有效地在早期阶段识别肺炎,但检测阶段的安全检查对于分析疾病非常重要。在相应的测试图像上适当地加上相应医院的标志水印;所述图像被处理,否则所述方法将跳过所述图像进行处理。这些安全功能强调了医疗行业,提高了水平,患者可以在这种技术的帮助下得到适当的无差错护理。考虑一个适当的基于胸片的Kaggle数据集来处理系统,该数据集包含两个不同类别(如肺炎和正常)下的5856张胸片图像。对于这些图像的处理和肺炎疾病的有效识别,以及所提出的支持水印的安全特性,为医疗领域的防护系统提供了良好的影响。结果部分为所提出方法的有效性和预测效率提供了适当的证明。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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