迁移学习能提高ImageNet预训练模型的分类精度吗?

Maad Ebrahim, M. Al-Ayyoub, M. Alsmirat
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引用次数: 14

摘要

迁移学习(TL)技术在许多领域的巨大影响是通过使用几个最先进的imagenet预训练模型实现的。在过去的几年里,这些模型在这个数据集上表现出了很大的性能改进。最近使用的一种TL技术是借助特征连接(FC)进行特征提取,在对多个预训练模型进行训练之前,将提取的特征连接在一起,从而在各种分类任务上产生更具鲁棒性和判别性的特征表示。然而,TL和FC技术都没有在最初训练预训练模型的相同数据集上进行测试,即ImageNet。因此,这项工作提供了一个调查性研究,以测试在FC技术的帮助下使用TL的特征提取方法提高ImageNet精度的可能性。这项工作的结果表明,没有TL技术可以使用或不使用FC来提高原始数据集上预训练模型的准确性。即使对于FC,它也不能为原始数据产生比单个模型所能产生的更具判别性的特征表示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Will Transfer Learning Enhance ImageNet Classification Accuracy Using ImageNet-Pretrained Models?
The huge impact of Transfer Learning (TL) techniques in many fields was achieved using several state-of-the-art ImageNet-pretrained models. These models have shown great performance improvements on this dataset over the last few years. One of the recently used TL techniques is feature extraction with the help of Feature Concatenation (FC), where the extracted features of multiple pretrained models are concatenated together before training on them, to produce more robust and discriminative feature representations on various classification tasks. However, neither TL nor FC techniques have been tested on the same dataset that initially trained the pretrained models, i.e. ImageNet. Hence, this work provides an investigative study to test the possibility of improving the ImageNet accuracy using the feature extraction approach of TL with the help of FC techniques. The results of this work show that there is no TL technique that can be used with or without FC to increase the accuracy of pretrained models on the original dataset on which they were trained. Even for FC, it cannot produce a more discriminative feature representation for the original data than what the individual models can produce.
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