首页> 外文会议>Image Processing, 1995. Proceedings., International Conference on >Optimizing wavelet transform based on supervised learning for detection of microcalcifications in digital mammograms
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Optimizing wavelet transform based on supervised learning for detection of microcalcifications in digital mammograms

机译:基于监督学习的小波变换优化算法,用于数字化乳腺X线摄影中微钙化的检测

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A novel technique for optimizing the wavelet transform to enhance and detect microcalcifications in mammograms was developed based on the supervised learning method. In the learning process, a cost function is formulated to represent the difference between a desired output and the reconstructed image obtained from weighted wavelet coefficients for a given mammogram. This cost function is then minimized by modifying the weights for wavelet coefficients via a conjugate gradient algorithm. The Least Asymmetric Daubechies' wavelets were optimized with 44 regions-of-interest as the training set using a jackknife method. The performance of the optimized wavelets achieved a sensitivity of 90% with specificity of 80%, which outperforms the authors' current scheme based on a conventional wavelet transform.
机译:基于监督学习方法,开发了一种优化小波变换以增强和检测乳腺X线照片中微钙化的新技术。在学习过程中,制定了成本函数以表示所需输出与从给定乳房X线照片的加权小波系数获得的重建图像之间的差异。然后,通过共轭梯度算法修改小波系数的权重,从而使该成本函数最小化。最小不对称Daubechies小波使用折刀法优化了44个感兴趣区域作为训练集。优化后的小波的性能实现了90%的灵敏度和80%的特异性,这优于作者基于常规小波变换的当前方案。

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