Latent fingerprint minutia extraction using fully convolutional network

Yao Tang, Fei Gao, Jufu Feng
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引用次数: 34

Abstract

Minutiae play a major role in fingerprint identification. Extracting reliable minutiae is difficult for latent fingerprints which are usually of poor quality. As the limitation of traditional handcrafted features, a fully convolutional network (FCN) is utilized to learn features directly from data to overcome complex background noises. Raw fingerprints are mapped to a correspondingly-sized minutia-score map with a fixed stride. And thus a large number of minutiae will be extracted through a given threshold. Then small regions centering at these minutia points are entered into a convolutional neural network (CNN) to reclassify these minutiae and calculate their orientations. The CNN shares convolutional layers with the fully convolutional network to speed up. 0.45 second is used on average to detect one fingerprint on a GPU. On the NIST SD27 database, we achieve 53% recall rate and 53% precise rate that outperform many other algorithms. Our trained model is also visualized to show that we have successfully extracted features preserving ridge information of a latent fingerprint.
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基于全卷积网络的潜在指纹细节提取
细节在指纹识别中起着重要的作用。潜在指纹通常质量较差,难以提取出可靠的细节信息。针对传统手工特征的局限性,利用全卷积网络(FCN)直接从数据中学习特征,克服复杂的背景噪声。原始指纹被映射到具有固定步幅的相应大小的细节分数映射。因此,通过给定的阈值可以提取大量的细节。然后将以这些细节点为中心的小区域输入到卷积神经网络(CNN)中,对这些细节点进行重新分类并计算它们的方向。CNN与全卷积网络共享卷积层以加快速度。在GPU上检测一个指纹平均耗时0.45秒。在NIST SD27数据库上,我们实现了53%的召回率和53%的精确率,优于许多其他算法。我们的训练模型还被可视化,表明我们成功地提取了保留潜在指纹脊信息的特征。
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