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首页> 外文期刊>Arabian Journal for Science and Engineering >A Framework for Classification of Gabor Based Frequency Selective Bone Radiographs Using CNN
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A Framework for Classification of Gabor Based Frequency Selective Bone Radiographs Using CNN

机译:基于Gabor基于CNN的频率选择性骨射线照片的分类框架

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The automatic classification of bone texture into healthy or osteoporotic cases presents a major challenge since there is no visual difference between the two cases. This classification requires an inspection of the fine granularity in the bone radiographs which is usually difficult with a naked eye. We have proposed a novel method in this paper, that can be used for the classification of bone radiographs into healthy or osteoporotic cases. We mimic the observations of the physicians by preprocessing the bone radiographs with Gabor filters bearing a high frequency. Later, we design and utilize a convolutional neural network wherein filtered images are fed as input to the system which classifies the images into their respective classes. The proposed algorithm has been validated on a bone radiograph challenge dataset.Our results depict that themethod proposed in this research exhibits very good results in terms of classification. A comparison of the proposed and the contemporary research methods has also been shown in this paper. The experimental results show that by exploiting high frequency Gabor filters and employing the convolutional neural network architecture, good results in performing the classification of bone radiographs are achieved.
机译:骨骼质地的自动分类为健康或骨质疏松案例提出了一个重大挑战,因为两种情况之间没有视觉差异。该分类需要检查骨射线照片中的细粒度,这通常难以肉眼困难。我们在本文中提出了一种新的方法,可用于将骨射线照相分类为健康或骨质疏松病例。我们通过预处理具有高频率的Gabor滤光片的骨射线照相来模仿医生的观察。稍后,我们设计和利用卷积神经网络,其中滤波图像被馈送为对系统的输入,该系统将图像分类为它们的各个类别。该算法已在骨射线影片挑战数据集上验证。我们的结果描述了本研究中提出的本研究表现出对分类方面的良好结果。本文还列出了提议和当代研究方法的比较。实验结果表明,通过利用高频Gabor滤波器并采用卷积神经网络架构,实现了在执行骨射线照片的分类方面的良好结果。

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