基于面部表情的疼痛热图像的深度学习基准模型性能研究

Raihan Islamadina, Khairun Saddami, Maulisa Oktiana, Taufik Fuadi Abidin, R. Muharar, F. Arnia
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引用次数: 0

摘要

本文讨论了来自ResNet、MobileNetV2和EfficientNet的深度学习模型在通过面部表情识别疼痛方面的性能。本文使用的数据集是从多模态疼痛强度(MintPain)数据库中获得的热图像,该数据库是一个用于面部疼痛水平识别的数据库。所使用的深度学习模型已经在其他数据集上进行了训练,并通过迁移学习方法证明了其性能。在训练中,使用5、20、40和60个epoch。我们使用的小批量大小为24,优化器的学习率为0.001,动量为0.9,权重和偏差的学习率因子各为10。训练结果表明,ResNet、MobileNetV2和effentnet在epoch 40的准确率分别为100%、100%和99.60%。最后,使用测试结果对已训练的每个模型的性能进行评估。在这里,MobileNetV2能够正确分类所有测试数据集,准确率为82.3%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance of Deep Learning Benchmark Models on Thermal Imagery of Pain through Facial Expressions
This paper discusses the performance of deep learning models from ResNet, MobileNetV2, and EfficientNet for pain recognition through facial expressions. The dataset used in this paper is a thermal image obtained from the Multimodal Pain Intensity (MintPain) database which is a database for facial pain-level recognition. The deep learning model used has been trained on other datasets and its performance is proven through the transfer learning method. During training, epochs of 5, 20, 40, and 60 were used. We used a minibatch size of 24, the optimizer with a learning rate of 0.001, momentum of 0.9, and the learning rate factor for weight and bias each to 10. The results of the training showed that ResNet, MobileNetV2, and EfficientNet had 100%, 100%, and 99.60% accuracy at epoch 40, respectively. Finally, an evaluation of the performance of each model that has been trained is carried out using the test results. Here, MobileNetV2 is able to correctly classify all test datasets with an accuracy of 82.3%.
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