Chitkara University Institute of Engineering and Technology, Chitkara University, Punjab, India.
Department of Information Communication Technology, Islamic University, Kushtia, Bangladesh.
Comput Intell Neurosci. 2022 Aug 24;2022:7935346. doi: 10.1155/2022/7935346. eCollection 2022.
Recent improvements in current technology have had a significant impact on a wide range of image processing applications, including medical imaging. Classification, detection, and segmentation are all important aspects of medical imaging technology. An enormous need exists for the segmentation of diagnostic images, which can be applied to a wide variety of medical research applications. It is important to develop an effective segmentation technique based on deep learning algorithms for optimal identification of regions of interest and rapid segmentation. To cover this gap, a pipeline for image segmentation using traditional Convolutional Neural Network (CNN) as well as introduced Swarm Intelligence (SI) for optimal identification of the desired area has been proposed. Fuzzy C-means (FCM), K-means, and improvisation of FCM with Particle Swarm Optimization (PSO), improvisation of K-means with PSO, improvisation of FCM with CNN, and improvisation of -means with CNN are the six modules examined and evaluated. Experiments are carried out on various types of images such as Magnetic Resonance Imaging (MRI) for brain data analysis, dermoscopic for skin, microscopic for blood leukemia, and computed tomography (CT) scan images for lungs. After combining all of the datasets, we have constructed five subsets of data, each of which had a different number of images: 50, 100, 500, 1000, and 2000. Each of the models was executed and trained on the selected subset of the datasets. From the experimental analysis, it is observed that the performance of K-means with CNN is better than others and achieved 96.45% segmentation accuracy with an average time of 9.09 seconds.
最近,现有技术的改进对广泛的图像处理应用产生了重大影响,包括医学成像。分类、检测和分割都是医学成像技术的重要方面。诊断图像的分割有巨大的需求,可以应用于各种医学研究应用。开发一种基于深度学习算法的有效分割技术对于最佳识别感兴趣区域和快速分割非常重要。为了弥补这一差距,已经提出了一种使用传统卷积神经网络(CNN)以及引入群智能(SI)的图像分割流水线,以最佳识别所需区域。对模糊 C 均值(FCM)、K 均值以及与粒子群优化(PSO)相结合的 FCM 改进、与 PSO 相结合的 K 均值改进、与 CNN 相结合的 FCM 改进和与 CNN 相结合的 K 均值改进这六个模块进行了检查和评估。在各种类型的图像上进行了实验,例如用于脑数据分析的磁共振成像(MRI)、皮肤的皮肤镜检查、血液白血病的显微镜检查和肺部的计算机断层扫描(CT)图像。在组合了所有数据集之后,我们构建了五个不同数量图像的数据集子集:50、100、500、1000 和 2000。在所选数据集的子集上执行并训练了每个模型。从实验分析中可以看出,具有 CNN 的 K 均值的性能优于其他模型,其分割精度达到 96.45%,平均用时为 9.09 秒。