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Transforming pixel signatures into an improved metric space

机译:将像素签名转换为改进的度量空间

摘要

We address the problem of using scale-orientation pixel signatures to characterise local structure in X-ray mammograms, though the method we report is of general application. When signatures are treated as vectors for statistical analysis, the Euclidean metric is not well behaved. We have previously described a Best Partial Match (BPM) metric that measures signature similarity more naturally, but at high computational cost. We present a method for transforming signatures into a new space in which Euclidean distance approximates BPM distance, allowing BPM distance to be estimated at low computational cost. The new space is constructed using multi-dimensional scaling. The nonlinear transformation between the old and new spaces is learned using support vector regression. We present experimental results for mammographic data. © 2002 Elsevier Science B.V. All rights reserved.
机译:尽管我们报告的方法是通用的,但我们解决了使用比例取向像素签名来表征X射线乳房X线照片中的局部结构的问题。当将签名视为用于统计分析的向量时,欧几里得度量的表现不佳。前面我们已经描述了一种最佳部分匹配(BPM)度量标准,该度量标准可以更自然地测量签名相似性,但计算成本较高。我们提出了一种将签名转换为新空间的方法,在该空间中,欧几里得距离近似于BPM距离,从而可以以较低的计算成本估算BPM距离。新空间是使用多维缩放比例构建的。使用支持向量回归学习新旧空间之间的非线性变换。我们介绍了乳腺X射线摄影数据的实验结果。 ©2002 Elsevier Science B.V.保留所有权利。

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