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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Analysis of the contour structural irregularity of skin lesions using wavelet decomposition
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Analysis of the contour structural irregularity of skin lesions using wavelet decomposition

机译:基于小波分解的皮肤损伤轮廓结构不规则性分析

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The boundary irregularity of skin lesions is of clinical significance for the early detection of malignant melanomas and to distinguish them from other lesions such as benign moles. The structural components of the contour are of particular importance. To extract the structure from the contour, wavelet decomposition was used as these components tend to locate in the lower frequency sub-bands. Lesion contours were modeled as signatures with scale normalization to give position and frequency resolution invariance. Energy distributions among different wavelet sub-bands were then analyzed to extract those with significant levels and differences to enable maximum discrimination. Based on the coefficients in the significant sub-bands, structural components from the original contours were modeled, and a set of statistical and geometric irregularity descriptors researched that were applied at each of the significant sub-bands. The effectiveness of the descriptors was measured using the Hausdorff distance between sets of data from melanoma and mole contours. The best descriptor outputs were input to a back projection neural network to construct a combined classifier system. Experimental results showed that thirteen features from four sub-bands produced the best discrimination between sets of melanomas and moles, and that a small training set of nine melanomas and nine moles was optimum.
机译:皮肤病变的边界不规则对于早期发现恶性黑色素瘤并将其与其他病变(例如良性痣)区分开具有临床意义。轮廓的结构成分特别重要。为了从轮廓中提取结构,使用小波分解法,因为这些分量倾向于位于低频子带中。病变轮廓被建模为具有标度归一化的特征,以给出位置和频率分辨率不变性。然后分析不同小波子带之间的能量分布,以提取具有明显水平和差异的能量,以实现最大的区分度。基于重要子带中的系数,对原始轮廓的结构成分进行建模,并研究了应用于每个重要子带的一组统计和几何不规则描述符。使用来自黑素瘤和痣轮廓的数据集之间的Hausdorff距离来衡量描述符的有效性。最好的描述符输出被输入到反向投影神经网络,以构建组合分类器系统。实验结果表明,四个亚带中的13个特征在黑色素瘤和痣的多组之间产生了最佳区分,并且最佳训练组是9个黑色素瘤和9个痣。

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