Multi-Level Pooling Model for Fingerprint-Based Gender Classification

S. Suwarno, Erick Kurniawan
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Abstract

It has been widely reported that CNN (Convolutional Neural Network) has shown satisfactory results in classifying images. The strength of CNN lies in the type and the number of layers that construct it. However, the most apparent drawbacks of CNN are the requirement for a large labeled dataset and its lengthy training time. Although datasets are available, labeling that data is a significant problem. This work mimics the CNN model but only utilizes its pooling layers. The novelty of this model is removing convolution layers and directly processing fingerprint images using pooling layers. Three pooling layer models, namely maximum pooling, average pooling, and minimum pooling, are used to generate fingerprint features to classify their owner gender. These pooling layers are arranged consecutively up to eight levels. Removing convolution layers makes the process straightforward, and the computation is much faster. This study utilized 200 fingerprint datasets from the NIST (National Institute of Standards and Technology), with male and female fingerprints of 100 samples each. The extracted features were then classified using K-NN (K-Nearest Neighbors) algorithm. The proposed method resulted in an accuracy of 61% to 71.5% or an average of 66.25%.
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基于指纹的性别分类多级池化模型
卷积神经网络(CNN, Convolutional Neural Network)在图像分类方面取得了令人满意的效果,这已经被广泛报道。CNN的强度在于构建它的层的类型和数量。然而,CNN最明显的缺点是需要一个大的标记数据集和较长的训练时间。虽然数据集是可用的,但标记数据是一个重大问题。这项工作模仿了CNN模型,但只利用了它的池化层。该模型的新颖之处在于去除卷积层,直接使用池化层处理指纹图像。使用最大池化、平均池化和最小池化三种池化层模型生成指纹特征,对指纹所有者的性别进行分类。这些池化层最多连续排列为8层。去除卷积层使这个过程变得简单,计算速度也快得多。这项研究利用了来自美国国家标准与技术研究所的200个指纹数据集,其中男性和女性指纹各100个样本。然后使用K-NN (K-Nearest Neighbors)算法对提取的特征进行分类。该方法的准确率为61% ~ 71.5%,平均为66.25%。
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