利用深度学习对秦始皇陵兵马俑进行面部识别和分类

Yan Sheng
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引用次数: 0

摘要

摘要秦始皇陵出土的兵马俑的面部特征是同一时期士兵外貌的真实写照。识别兵马俑的面部特征以对其进行分类是考古研究的关键环节之一。由于兵马俑面部样本收集的局限性,我们提出了一种用于深度学习面部识别的增强型 SqueezeNet 模型。通过用三个 3×3 的卷积核取代最初的 7×7 卷积核,改进了 FaceNet 骨干特征提取网络。模型的特征提取层由卷积层、池化层、Fire 模块和池化层交替组成,并引入了指数函数来平滑损失函数的形状。最后,利用聚类(Agglomerative Clustering)技术对 295 个兵马俑进行面部分类。该模型的面部识别准确率为 95.6%,与经典的 SqueezeNet 和 Inception_ResNetV1 模型相比,分别提高了 4.1% 和 2.8%。该方法更好地满足了兵马俑面部识别和分类的要求,为科技考古提供了智能高效的技术支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Facial Recognition and Classification of Terracotta Warriors in the Mausoleum of the First Emperor Using Deep Learning
Abstract. The facial features of the Terracotta Warriors unearthed from the Mausoleum of the First Emperor of Qin are authentic depictions of the appearance of soldiers from the same period. Recognizing facial features to classify the Terracotta Warriors is one of the crucial aspects of archaeological research. Due to limitations in the collection of facial samples from the Terracotta Warriors, an enhanced SqueezeNet model is proposed for deep learning facial recognition. The FaceNet backbone feature extraction network has been improved by replacing the initial 7×7 convolution kernel with three 3×3 convolution kernels. The model's feature extraction layer is composed of alternating convolution layers, pooling layers, Fire modules, and pooling layers, with the introduction of an exponential function to smooth the shape of the loss function. Finally, facial classification of 295 Terracotta Warriors is accomplished using Agglomerative Clustering. The model demonstrates a facial recognition accuracy of 95.6%, showing a respective improvement of 4.1% and 2.8% compared to the classical SqueezeNet and Inception_ResNetV1 models. This approach better meets the requirements for facial recognition and classification of Terracotta Warriors, providing intelligent and efficient technical support for technological archaeology.
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