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Breast thermography based unsupervised anisotropic- feature transformation method for automatic breast cancer detection

机译:基于乳房热成像的无监督各向异性乳腺癌检测的各向异性特征转化方法

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摘要

The most crucial Infrared (IR) cameras provide temperature-sensitive images and chest vascular transitions. Hotspots can be used to emphasize that these images reveal new subtle changes due to pathology. The resulting images show clusters that appear to vary in shape and spatial distribution but carry class dependent information. Automated sensing techniques are challenging because of the location, size, and direction of these clusters. High-level combinations come with spectral invariant features that are suitable for the system to provide transformations stability and shape-dependent information extraction from acoustic images. In this work, the classification of bispectral invariant benefits, diagnostic classification of breast thermal images into malignant, benign, and standard types, participates, and these features are proposed as the basis of Unsupervised AnisotropicFeature Transformation Method. As indicated by the outcomes, the proposed approach is promising for the location of cancer affected variation from the normal and abnormal women's. All the more imperatively, the results demonstrated the possibility of this structure in breast malignancy identify to open a legitimate path to encouraging methodological and trial to look in this analysis. Also, the proposed mammogram is segmented from the background, which improves the quality of the image by reducing noise followed by a filter implemented on MATLAB software. The proposed approach is to use screening as a diagnostic technique for the most effective breast cancer detection. (c) 2020 Elsevier B.V. All rights reserved.
机译:最重要的红外线(IR)摄像机提供温度敏感的图像和胸部血管过渡。热点可用于强调这些图像由于病理学而揭示了新的微妙变化。所得到的图像显示出似乎在形状和空间分布中变化但携带类相关信息的簇。由于这些集群的位置,尺寸和方向,自动传感技术是具有挑战性的。高级组合具有适合该系统的光谱不变特征,以提供从声学图像提供变换稳定性和形状相关的信息提取。在这项工作中,提出了Bispectral不变益处的分类,乳房热图像诊断分类为恶性,良性和标准类型,参与和这些特征作为无监督的各向异性转化方法的基础。正如结果所示,所提出的方法对癌症的位置有望影响正常和异常妇女的变异。更令人常见的是,结果表明了这种结构在乳腺恶性肿瘤中的可能性,旨在打开合法的道路,以鼓励方法论和审判来看待这种分析。此外,所提出的乳房X线照片从背景中分段,这通过降低MATLAB软件上实现的滤波器来提高图像的质量。所提出的方法是使用筛选作为最有效的乳腺癌检测的诊断技术。 (c)2020 Elsevier B.v.保留所有权利。

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