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Fingerprint indexing based on pyramid deep convolutional feature

机译:基于金字塔深度卷积特征的指纹索引

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The ridges of fingerprint contain enormous discriminative information for fingerprint indexing, however it is hard to depict the structure of ridges for rule-based methods because of nonlinear distortion. This paper investigates to represent the structure of ridges by Deep Convolutional Neural Network (DCNN). The indexing approach partitions the fingerprint image into increasing fine sub-region and extracts feature from each sub-region by DCNN, forming pyramid deep convolutional feature, to represent the global patterns and local details (especially minutiae). Extensive experimental results show that the proposed method achieves better performance on accuracy and efficiency than other prominent indexing approaches. Finally, occlusion sensitivity, visualization and fingerprint reconstruction techniques are employed to explore which attributes of ridges are described in deep convolutional feature.
机译:指纹的脊包含用于索引的大量判别信息,但是由于非线性失真,很难描述基于规则的方法的脊的结构。本文研究通过深度卷积神经网络(DCNN)来表示脊的结构。索引方法将指纹图像划分为增加的精细子区域,并通过DCNN从每个子区域中提取特征,形成金字塔深的卷积特征,以表示全局模式和局部细节(尤其是细节)。大量的实验结果表明,与其他著名的索引方法相比,该方法在准确性和效率上具有更好的性能。最后,采用遮挡敏感度,可视化和指纹重建技术来探索在深度卷积特征中描述哪些脊的属性。

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