Mannepalli Durga Prasad, Namdeo Varsha
Research Scholar, Department of Computer Science & Engineering, Sarvepalli Radhakrishnan University, Bhopal, Madhya Pradesh India.
Department of Computer Science & Engineering, Sarvepalli Radhakrishnan University, Bhopal, Madhya Pradesh India.
Multimed Tools Appl. 2022;81(9):12857-12881. doi: 10.1007/s11042-022-12547-2. Epub 2022 Feb 22.
Pneumonia is one of the diseases that people may encounter in any period of their lives. Recently, researches and developers all around the world are focussing on deep learning and image processing strategies to quicken the pneumonia diagnosis as those strategies are capable of processing numerous X-ray and computed tomography (CT) images. Clinicians need more time and appropriate experiences for making a diagnosis. Hence, a precise, reckless, and less expensive tool to detect pneumonia is necessary. Thus, this research focuses on classifying the pneumonia chest X-ray images by proposing a very efficient stacked approach to improve the image quality and hybridmultiscale convolutional mantaray feature extraction network model with high accuracy. The input dataset is restructured with the sake of a hybrid fuzzy colored and stacking approach. Then the deep feature extraction stage is processed with the aid of stacking dataset by hybrid multiscale feature extraction unit to extract multiple features. Also, the features and network size are diminished by the self-attention module (SAM) based convolutional neural network (CNN). In addition to this, the error in the proposed network model will get reduced with the aid of adaptivemantaray foraging optimization (AMRFO) approach. Finally, the support vector regression (SVR) is suggested to classify the presence of pneumonia. The proposed module has been compared with existing technique to prove the overall efficiency of the system. The huge collection of chest X-ray images from the kaggle dataset was emphasized to validate the proposed work. The experimental results reveal an outstanding performance of accuracy (97%), precision (95%) and f-score (96%) progressively.
肺炎是人们在生命的任何阶段都可能遇到的疾病之一。最近,世界各地的研究人员和开发者都在专注于深度学习和图像处理策略,以加快肺炎的诊断,因为这些策略能够处理大量的X光和计算机断层扫描(CT)图像。临床医生进行诊断需要更多时间和适当的经验。因此,需要一种精确、快速且成本较低的肺炎检测工具。因此,本研究专注于通过提出一种非常有效的堆叠方法来对肺炎胸部X光图像进行分类,以提高图像质量,并提出具有高精度的混合多尺度卷积蝠鲼特征提取网络模型。为了采用混合模糊着色和堆叠方法,对输入数据集进行了重新构建。然后,借助堆叠数据集通过混合多尺度特征提取单元进行深度特征提取阶段,以提取多个特征。此外,基于自注意力模块(SAM)的卷积神经网络(CNN)减小了特征和网络规模。除此之外,所提出的网络模型中的误差将借助自适应蝠鲼觅食优化(AMRFO)方法得以降低。最后,建议使用支持向量回归(SVR)对肺炎的存在进行分类。所提出的模块已与现有技术进行比较,以证明该系统的整体效率。强调使用来自kaggle数据集的大量胸部X光图像来验证所提出的工作。实验结果逐步显示出出色的准确率(97%)、精确率(95%)和F值(96%)。