基于ResNet卷积神经网络的高光谱图像分类精准癌区检测

Pandia Rajan Jeyaraj, Edward Rajan Samuel Nadar, B. K. Panigrahi
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引用次数: 2

摘要

基于感兴趣区域(ROI)的肿瘤图像分类是高光谱应用的核心问题。利用图像上可用的空间信息进行分类是一项困难的任务。然而,由于图像处理算法的进步,混合像素图像的处理是一个值得关注的研究课题。大多数分类技术只使用降维,依赖于参考方法。在本研究中,我们融合了混合像元图像的光谱和空间特征信息进行分类。首先,我们在标准癌症图像数据集中进行训练。然后提出了一种基于卷积神经网络(CNN)的深度分类架构框架的肿瘤区域检测ResNet架构。然后在测试中,我们给出了基于ROI的图像分类。为了验证设计的基于ResNet的CNN网络的性能,我们计算了检测感兴趣钙化区域的准确率、训练时间和分类误差等性能指标。然后,我们将其与其他传统分类器的性能进行了比较,对口腔癌区域检测进行了实验验证。从获得的结果中,我们发现设计的基于ResNet的CNN网络可以准确地对混合像素复杂图像中的口腔癌进行分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ResNet Convolution Neural Network Based Hyperspectral Imagery Classification for Accurate Cancerous Region Detection
Classification of cancer image based on Region of Interest (ROI) is the central issues of hyperspectral application. Using the available spatial information on images, the classification is a difficult task. However, due to the advancement of image processing algorithm, the processing of mixed pixel image is a notable research topic. Most of the classification techniques use only dimension reduction and depends on reference method. In this research, we merged both spectral and spatial characteristics information's about classification of mixed pixel image was presented. First, we perform training in the standard cancerous image dataset. Then proposed a deep classification architecture framework based on the Convolution Neural Network (CNN) based ResNet architecture of cancer region detection. Then in testing we present the image for classification based on ROI. To verify the performance of designed ResNet based CNN network, we calculated the performance index like accuracy, training time and classification error for detecting region of interest calcification. Then, we compared the performance with other conventional classifiers for experimental verification to oral cancer region detection. From the obtained results, we identified that the designed ResNet based CNN network can accurately classify the oral cancer in a mixed pixel complex image.
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