使用卷积神经网络学习和传输中级图像表示

M. Oquab, L. Bottou, I. Laptev, Josef Sivic
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引用次数: 3051

摘要

卷积神经网络(CNN)最近在大规模视觉识别挑战(ILSVRC2012)中显示出出色的图像分类性能。cnn的成功归功于它们能够学习丰富的中级图像表示,而不是在其他图像分类方法中使用手工设计的低级特征。然而,学习cnn相当于估计数百万个参数,并且需要非常大量的带注释的图像样本。这个属性目前阻碍了cnn在训练数据有限的问题上的应用。在这项工作中,我们展示了如何将cnn在大规模注释数据集上学习到的图像表示有效地转移到具有有限训练数据量的其他视觉识别任务中。我们设计了一种方法来重用在ImageNet数据集上训练的层,以计算PASCAL VOC数据集中图像的中级图像表示。我们表明,尽管两个数据集中的图像统计和任务存在差异,但转移的表示导致对象和动作分类的结果显着改善,优于Pascal VOC 2007和2012数据集上的当前技术状态。我们也展示了对象和动作定位的有希望的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning and Transferring Mid-level Image Representations Using Convolutional Neural Networks
Convolutional neural networks (CNN) have recently shown outstanding image classification performance in the large- scale visual recognition challenge (ILSVRC2012). The success of CNNs is attributed to their ability to learn rich mid-level image representations as opposed to hand-designed low-level features used in other image classification methods. Learning CNNs, however, amounts to estimating millions of parameters and requires a very large number of annotated image samples. This property currently prevents application of CNNs to problems with limited training data. In this work we show how image representations learned with CNNs on large-scale annotated datasets can be efficiently transferred to other visual recognition tasks with limited amount of training data. We design a method to reuse layers trained on the ImageNet dataset to compute mid-level image representation for images in the PASCAL VOC dataset. We show that despite differences in image statistics and tasks in the two datasets, the transferred representation leads to significantly improved results for object and action classification, outperforming the current state of the art on Pascal VOC 2007 and 2012 datasets. We also show promising results for object and action localization.
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