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Discriminatively weighted multi-scale Local Binary Patterns: Applications in prostate cancer diagnosis on T2W MRI

机译:差异加权的多尺度局部二元模式:在前列腺癌诊断中的应用T2W MRI

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In this paper, we present discriminatively weighted Local Binary Patterns (DWLBP), a new similarity metric to match Multi-scale LBP (MsLBP) in Hamming space. While MsLBP is widely used in image processing on account of its extremely fast bitwise operations on modern CPU, identifying a good metric that measures the dissimilarity of MsLBP remains an open problem. The Hamming score is typically computed at each individual scale and the scores across scales are summed up. This approach however often results in underestimating salient patterns. In this paper we seek to learn a vector obtained by optimally weighing the contribution of each individual scale when performing MsLBP based matching. Inspired by supervised learning, our methodology aims to learn the multi-scale, weight vector by minimizing the Hamming scores between positive class samples and jointly maximizing the scores between positive and negative class samples. This objective function leads to a convex formulation with equality and inequality constraints, which can then be solved via the interior-point optimization method. In this paper we evaluate the efficacy of the DWLBP scheme in detecting prostate cancer from T2w MRI and demonstrate that the approach statistically significantly outperforms MsLBP.
机译:在本文中,我们呈现歧义地加权的局部二进制模式(DWLBP),新的相似性度量来匹配汉明空间中的多尺度LBP(MSLBP)。虽然MSLBP广泛用于图像处理,但由于其在现代CPU上非常快速的位操作,识别衡量MSLBP的不相似性的良好指标仍然是一个开放的问题。汉明分通常在每个单独的规模上计算,并且跨尺度的分数总结。然而,这种方法通常导致低估突出模式。在本文中,我们寻求学习通过在执行基于MSLBP的匹配时最佳地称重每个单个尺度的贡献而获得的向量。通过监督学习的启发,我们的方法旨在通过最大限度地减少正类样本之间的汉明分数并共同地最大化正和负类样本之间的分数来学习多尺寸的重量载体。该目标函数导致具有平等和不等式约束的凸形配方,然后可以通过内部点优化方法来解决。在本文中,我们评估了DWLBP方案在从T2W MRI检测前列腺癌中的功效,并证明该方法统计学上显着优于MSLBP。

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