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Fingerprint Indexing Based on Minutia-Centred Deep Convolutional Features

机译:基于Minutia为中心的深度卷积特征的指纹索引

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Most current fingerprint indexing systems are based on minutiae-only local structures which represent the relationships between the central minutia and its neighborhood. However, it is difficult to robustly extract minutiae from poor quality images, which significantly degrades the retrieval accuracy. To overcome this problem, this paper employs Deep Convolutional Neural Network (DCNN) to learn a minutia descriptor representing the local ridge structures. The learned Minutia-centred Deep Convolutional (MDC) features from one fingerprint are aggregated into a fixedlength feature vector by triangulation embedding method for the purpose of improving retrieval efficiency. In order to understand the MDC features, a steerable fingerprint generation method is proposed to verify that they describe the attributes of minutiae and ridges. Experimental results on two benchmark databases show that the proposed method achieves better performance on accuracy and efficiency than other prominent approaches.
机译:当前大多数指纹索引系统都是基于仅细节部分的局部结构,这些局部结构表示中央细节部分及其附近区域之间的关系。但是,很难从质量差的图像中可靠地提取细节,这严重降低了检索精度。为了克服这个问题,本文采用深度卷积神经网络(DCNN)来学习表示局部脊结构的细节描述。为了提高检索效率,通过三角剖分嵌入法将一个指纹中学习到的以Minutia为中心的深度卷积(MDC)特征聚集到一个定长特征向量中。为了理解MDC的特征,提出了一种可操纵的指纹生成方法,以验证它们描述了细节和脊的属性。在两个基准数据库上的实验结果表明,所提出的方法在准确性和效率上都比其他著名方法具有更好的性能。

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