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Deep Sparse Informative Transfer SoftMax for Cross-Domain Image Classification

机译:用于跨域图像分类的深度稀疏信息传递SoftMax

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摘要

In many real applications, it is often encountered that the models trained on source domain cannot fit the related target images very well, due to the variants and changes of the imaging background, lighting of environment, viewpoints and so forth. Therefore cross-domain image classification becomes a very interesting research problem. Lots of research efforts have been conducted on this problem, where many of them focus on exploring the cross-domain image features. Recently transfer learning based methods become the main stream. In this paper, we present a novel transfer SoftMax model called Sparse Informative Transfer SoftMax (SITS) to deal with the problem of cross-domain image classification. SITS is a flexible classification framework. Specifically, the principle eigenvectors of the target domain feature space are introduced into our objective function, hence the informative features of the target domain are exploited in the process of the model training. The sparse regularization for feature selection and the SoftMax classification are also employed in our framework. On this basis, we developed Deep SITS network to efficiently learn informative transfer model and enhance the transferable ability of deep neural network. Extensive experiments are conducted on several commonly used benchmarks. The experimental results show that comparing with the state-of-the-art methods, our method achieves the best performance.
机译:在许多实际应用中,经常会遇到这样的情况:由于成像背景,环境照明,视点等的变化和变化,在源域上训练的模型无法很好地拟合相关的目标图像。因此,跨域图像分类成为一个非常有趣的研究问题。关于这个问题已经进行了许多研究工作,其中许多工作集中在探索跨域图像特征上。最近,基于迁移学习的方法成为主流。在本文中,我们提出了一种新颖的传输SoftMax模型,称为稀疏信息传输SoftMax(SITS),用于处理跨域图像分类问题。 SITS是一个灵活的分类框架。具体来说,将目标域特征空间的基本特征向量引入到我们的目标函数中,从而在模型训练过程中利用目标域的信息特征。特征选择的稀疏正则化和SoftMax分类也用于我们的框架中。在此基础上,我们开发了Deep SITS网络,以有效地学习信息传递模型并增强深度神经网络的可传递能力。在几个常用基准上进行了广泛的实验。实验结果表明,与最先进的方法相比,我们的方法达到了最佳性能。

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