基于深度卷积神经网络迁移学习的二维面部图像吸引力评价

J. Saeed, A. Abdulazeez, D. Ibrahim
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引用次数: 0

摘要

虽然美是主观的,但它不容易量化。基于计算机视角的面部美评估是一个具有多种应用的新兴研究领域。人们提出了不同的可训练模型,利用不同类型的特征、机器学习技术和最近的卷积神经网络(cnn)来识别面部美女的吸引力,这些都证明了它们在图像分类方面的效率。最近前期工作的主要目标是提高现有可训练方法的性能,使其适用于美女吸引力识别。在这项研究中,四种情感预训练cnn模型(AlexNet、GoogleNet、ResNet-50和VGG16)在使用CelebA数据集评估人类面部图像吸引力方面的准确性和有效性进行了探索、评估和分析。结果表明,GoogleNet的性能准确率达到82.8%,超过了所研究的预训练网络。
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2D Facial Images Attractiveness Assessment Based on Transfer Learning of Deep Convolutional Neural Networks
While beauty is subjective, it is not easy to quantify. Assessing facial beauty based on a computer perspective is an emerging research area with various applications. Different trainable models have been proposed to identify the attractiveness of facial beauty utilizing different types of features, machine learning techniques and lately, convolutional neural networks (CNNs) have proven their efficiency in image classification. The main objective of recent previous work is to enhance the performance of the existing trainable methods and make them suitable for beauty attractiveness identification. In this study, the accuracy and effectiveness of four affective pre-trained CNNs models (AlexNet, GoogleNet, ResNet-50, and VGG16) in assessing the attractiveness of human facial images using the CelebA dataset have been explored, evaluated, and analyzed. The results demonstrate that GoogleNet surpassed the investigated pre-trained networks with a performance accuracy of 82.8%.
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