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An introductory analysis of digital infrared thermal imaging guided oral cancer detection using multiresolution rotation invariant texture features

机译:使用多分辨率旋转不变纹理特征的数字红外热成像指导口腔癌检测的入门分析

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This manuscript presents an analytical treatment on the feasibility of multi-scale Gabor filter bank response for non-invasive oral cancer pre-screening and detection in the long infrared spectrum. Incapability of present healthcare technology to detect oral cancer in budding stage manifests in high mortality rate. The paper contributes a step towards automation in non-invasive computer-aided oral cancer detection using an amalgamation of image processing and machine intelligence paradigms. Previous works have shown the discriminative difference of facial temperature distribution between a normal subject and a patient. The proposed work, for the first time, exploits this difference further by representing the facial Region of Interest (ROI) using multiscale rotation invariant Gabor filter bank responses followed by classification using Radial Basis Function(RBF) kernelized Support Vector Machine(SVM). The proposed study reveals an initial increase in classification accuracy with incrementing image scales followed by degradation of performance; an indication that addition of more and more finer scales tend to embed noisy information instead of discriminative texture patterns. Moreover, the performance is consistently better for filter responses from profile faces compared to frontal faces.This is primarily attributed to the ineptness of Gabor kernels to analyze low spatial frequency components over a small facial surface area. On our dataset comprising of 81 malignant, 59 pre-cancerous, and 63 normal subjects, we achieve state-of-the-art accuracy of 85.16% for normal v/s precancerous and 84.72% for normal v/s malignant classification. This sets a benchmark for further investigation of multiscale feature extraction paradigms in IR spectrum for oral cancer detection.
机译:该手稿提供了一种分析处理方法,用于多尺度Gabor滤波器库响应在长波谱中用于非侵入性口腔癌的预筛查和检测的可行性。当前的保健技术不能在萌芽期检测口腔癌表现为高死亡率。本文为融合图像处理和机器智能范例的无创计算机辅助口腔癌检测的自动化迈出了一步。先前的研究表明,正常受试者与患者之间的面部温度分布存在区别。拟议的工作首次通过利用多尺度旋转不变Gabor滤波器组响应表示面部感兴趣区域(ROI),然后使用径向基函数(RBF)核化支持向量机(SVM)进行分类,来进一步利用此差异。拟议的研究表明,随着图像比例的增加,分类精度初步提高,随后性能下降。这表明添加越来越多的精细比例往往会嵌入嘈杂的信息,而不是具有歧视性的纹理图案。此外,与正面相比,轮廓脸的滤波器响应性能始终更好,这主要归因于Gabor核无法在较小的面部表面积上分析低空间频率分量的能力。在由81位恶性,59位癌前期和63位正常受试者组成的数据集上,我们对正常v / s癌前分类和对于正常v / s恶性分类的最新准确性达到了85.16%。这为进一步研究口腔癌的红外光谱中的多尺度特征提取范例奠定了基准。

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