A Study of the Influence of Data Complexity and Similarity on Soft Biometrics Classification Performance in a Transfer Learning Scenario

M. Romero, M. Gutoski, L. T. Hattori, Manassés Ribeiro, H. S. Lopes
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引用次数: 3

Abstract

Transfer learning is a paradigm that consists in training and testing classifiers with datasets drawn from distinct distributions. This technique allows to solve a particular problem using a model that was trained for another purpose. In the recent years, this practice has become very popular due to the increase of public available pre-trained models that can be fine-tuned to be applied in different scenarios. However, the relationship between the datasets used for training the model and the test data is usually not addressed, specially where the fine-tuning process is done only for the fully connected layers of a Convolutional Neural Network with pre-trained weights. This work presents a study regarding the relationship between the datasets used in a transfer learning process in terms of the performance achieved by models complexities and similarities. For this purpose, we fine-tune the final layer of Convolutional Neural Networks with pre-trained weights using diverse soft biometrics datasets. An evaluation of the performances of the models, when tested with datasets that are different from the one used for training the model, is presented. Complexity and similarity metrics are also used to perform the evaluation.
迁移学习场景下数据复杂度和相似度对软生物特征分类性能的影响研究
迁移学习是一种范例,包括训练和测试从不同分布中提取的数据集的分类器。该技术允许使用为其他目的而训练的模型来解决特定问题。近年来,由于公共可用的预训练模型的增加,这种做法变得非常流行,可以对其进行微调以应用于不同的场景。然而,用于训练模型的数据集和测试数据之间的关系通常没有得到解决,特别是在微调过程仅针对具有预训练权重的卷积神经网络的完全连接层进行的情况下。这项工作提出了一项关于迁移学习过程中使用的数据集之间的关系的研究,即模型复杂性和相似性所取得的性能。为此,我们使用不同的软生物特征数据集对卷积神经网络的最后一层进行了微调,并使用预训练的权重。当使用不同于用于训练模型的数据集进行测试时,对模型的性能进行了评估。复杂性和相似性度量也用于执行评估。
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