Fingerprint is an important biological feature of human body, which contains abundant gender information. At present, the academic research of fingerprint gender characteristics is generally at the level of understanding, while the standardization research is quite limited. In this work, we propose a more robust method, Dense Dilated Convolution ResNet (DDC-ResNet) to extract valid gender information from fingerprints. By replacing the normal convolution operations with the atrous convolution in the backbone, prior knowledge is provided to keep the edge details and the global reception field can be extended. We explored the results in 3 ways: 1) The efficiency of the DDC-ResNet. 6 typical methods of automatic feature extraction coupling with 9 mainstream classifiers are evaluated in our dataset with fair implementation details. Experimental results demonstrate that the combination of our approach outperforms other combinations in terms of average accuracy and separate-gender accuracy. It reaches 96.5% for average and 0.9752 (males)/0.9548 (females) for separate-gender accuracy. 2) The effect of fingers. It is found that the best performance of classifying gender with separate fingers is achieved by the right ring finger. 3) The effect of specific features. Based on the observations of the concentrations of fingerprints visualized by our approach, it can be inferred that loops and whorls (level 1), bifurcations (level 2), as well as line shapes (level 3) are connected with gender. Finally, we will open source the dataset that contains 6000 fingerprint images
翻译:目前,对指纹性别特征的学术研究一般是在理解水平上进行,而标准化研究则相当有限。在这项工作中,我们建议一种更强有力的方法,即 " 密集渗透革命ResNet(DDC-ResNet) " (DDC-ResNet),从指纹中提取有效的性别信息。通过以脊柱的突变取代正常的卷动操作,先提供知识,以保持边缘细节,全球接收字段可以扩展。我们以3种方式探讨了结果:(1) DDC-ResNet的6种典型的自动特征提取方法与9种主流分类器结合的典型方法在我们的数据集中以公平的执行细节进行评估。实验结果表明,我们的方法组合在平均准确性和单独性别准确性方面优于其他组合。平均达到96.5%,平均为0.9752(男性)/0.9548(女性),以保持不同的性别准确性。(2) 手指的效应。发现,用不同手指的性别层次进行分类的最佳表现是通过右直径直径的直径和直径直径的直径直径进行,最后直径的直径将产生。(2)的直径直径直线和直径直径的直径直径直径的特征影响。