Hsiao Chung-Ting, Lin Chun-Yi, Wang Po-Shan, Wu Yu-Te
Institute of Biophotonics and Brain Research Center, National Yang Ming Chiao Tung University, Taipei 11221, Taiwan.
Forensic Science Center, New Taipei City Police Department, New Taipei City 22005, Taiwan.
Entropy (Basel). 2022 Mar 29;24(4):475. doi: 10.3390/e24040475.
Fingerprints are the most common personal identification feature and key evidence for crime scene investigators. The prediction of fingerprints features include gender, height range (tall or short), left or right hand, and finger position can effectively narrow down the list of suspects, increase the speed of comparison, and greatly improve the effectiveness of criminal investigations. In this study, we used three commonly used CNNs (VGG16, Inception-v3, and Resnet50) to perform biometric prediction on 1000 samples, and the results showed that VGG16 achieved the highest accuracy in identifying gender (79.2%), left- and right-hand fingerprints (94.4%), finger position (84.8%), and height range (69.8%, using the ring finger of male participants). In addition, we visualized the CNN classification basis by the Grad-CAM technique and compared the results with those predicted by experts and found that the CNN model outperformed experts in terms of classification accuracy and speed, and provided good reference for fingerprints that were difficult to determine manually.
指纹是最常见的个人身份识别特征,也是犯罪现场调查人员的关键证据。对指纹特征进行预测,包括性别、身高范围(高或矮)、左手或右手以及手指位置,能够有效缩小嫌疑人名单范围,提高比对速度,并极大提升刑事调查的效率。在本研究中,我们使用了三种常用的卷积神经网络(VGG16、Inception-v3和Resnet50)对1000个样本进行生物特征预测,结果表明VGG16在识别性别(79.2%)、左右手指纹(94.4%)、手指位置(84.8%)和身高范围(使用男性参与者的无名指时为69.8%)方面取得了最高准确率。此外,我们通过Grad-CAM技术将卷积神经网络的分类依据可视化,并将结果与专家预测结果进行比较,发现卷积神经网络模型在分类准确性和速度方面优于专家,为难以人工判定的指纹提供了良好参考。