Dimensionality Reduction for Image Features using Deep Learning and Autoencoders

Stefan Petscharnig, M. Lux, S. Chatzichristofis
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引用次数: 27

Abstract

The field of similarity based image retrieval has experienced a game changer lately. Hand crafted image features have been vastly outperformed by machine learning based approaches. Deep learning methods are very good at finding optimal features for a domain, given enough data is available to learn from. However, hand crafted features are still means to an end in domains, where the data either is not freely available, i.e. because it violates privacy, where there are commercial concerns, or where it cannot be transmitted, i.e. due to bandwidth limitations. Moreover, we have to rely on hand crafted methods whenever neural networks cannot be trained effectively, e.g. if there is not enough training data. In this paper, we investigate a particular approach to combine hand crafted features and deep learning to (i) achieve early fusion of off the shelf handcrafted global image features and (ii) reduce the overall number of dimensions to combine both worlds. This method allows for fast image retrieval in domains, where training data is sparse.
使用深度学习和自动编码器的图像特征降维
近年来,基于相似度的图像检索领域发生了翻天覆地的变化。基于机器学习的方法大大优于手工制作的图像特征。深度学习方法非常善于为一个领域找到最优特征,只要有足够的数据可供学习。然而,手工制作的功能仍然意味着在数据不能免费获得的领域,即因为它侵犯了隐私,在有商业考虑的情况下,或者在无法传输的情况下,即由于带宽限制。此外,当神经网络无法有效训练时,例如,如果没有足够的训练数据,我们必须依赖手工制作的方法。在本文中,我们研究了一种结合手工制作特征和深度学习的特定方法,以(i)实现现成手工制作的全局图像特征的早期融合,(ii)减少总体维数以结合这两个世界。该方法允许在训练数据稀疏的域中快速检索图像。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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