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Exploring the Power of Kernel in Feature Representation for Object Categorization

机译:在对象分类的特征表示中探索内核的力量

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Learning robust and invariant feature representations is always a crucial task in visual recognition and analysis. Mean square error (MSE) has been used in many feature encoding methods as a feature reconstruction criterion. However, due to the non-Gaussian noises and non-linearity structures in natural images, second order statistics like MSE are usually not sufficient to capture these information from image data. In this paper, motivated by the information-theoretic learning framework and kernel machine learning, we adopt a similarity measure called correntropy in the auto-encoder model to tackle this problem. The proposed maximum correntropy auto-encoder (MCAE) learns more robust and discriminative representations than MSE based model by performing computation in an infinite dimensional kernel space. Moreover, we further exploit the power of kernel by learning a kernel embedding neural network which explicitly maps data from Euclidean space to an approximated kernel space. Experimental results on standard object categorization datasets show the effectiveness of kernel learning in feature representation for visual recognition task.
机译:学习强大和不变特征表示始终是视觉识别和分析中的一个重要任务。在许多特征编码方法中使用了平均方误差(MSE)作为特征重建标准。然而,由于自然图像中的非高斯噪声和非线性结构,像MSE这样的二阶统计量通常不足以捕获来自图像数据的这些信息。在本文中,通过信息 - 理论学习框架和内核机器学习的动机,我们采用了一种称为Correntropy在自动编码器模型中的相似性度量来解决这个问题。所提出的最大控制自动编码器(MCAE)通过在无限维内核空间中执行计算来学习比基于MSE的模型更稳健和辨别的表示。此外,我们通过学习内核嵌入神经网络来进一步利用内核的力量,该神经网络明确地将数据从欧几里德空间映射到近似的内核空间。标准对象分类数据集的实验结果显示了内核学习在视觉识别任务的特征表示中的有效性。

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