论文标题
基于低率特征的双转化矩阵学习图像分类
Low-rank features based double transformation matrices learning for image classification
论文作者
论文摘要
线性回归是一种被广泛用于分类任务的监督方法。为了将线性回归应用于分类任务,提出了一种用于放松回归目标的技术。但是,由于数据中包含的复杂信息,基于此技术的方法忽略了单个转换矩阵的压力。在这种情况下,单个转换矩阵太严格了,无法提供灵活的投影,因此有必要在转换矩阵上放松。本文提出了一种基于潜在低级别特征提取的双转化矩阵学习方法。核心思想是使用双重变换矩阵进行放松,并从两个方向共同将学习的主和显着特征投射到标签空间中,这可以共享单个转换矩阵的压力。首先,低级功能是通过潜在低等级表示(LATLRR)方法来学习的,该方法从两个方向处理原始数据。在此过程中,稀疏的噪声也分开,这在某种程度上减轻了其对投射学习的干扰。然后,引入了两个转换矩阵以分别处理这两个功能,并提取了用于分类的信息。最后,可以通过替代优化方法轻松获得两个转换矩阵。通过这样的处理,即使样本中包含大量冗余信息,我们的方法也可以获得易于分类的投影结果。多个数据集的实验证明了我们对分类方法的有效性,尤其是对于复杂方案。
Linear regression is a supervised method that has been widely used in classification tasks. In order to apply linear regression to classification tasks, a technique for relaxing regression targets was proposed. However, methods based on this technique ignore the pressure on a single transformation matrix due to the complex information contained in the data. A single transformation matrix in this case is too strict to provide a flexible projection, thus it is necessary to adopt relaxation on transformation matrix. This paper proposes a double transformation matrices learning method based on latent low-rank feature extraction. The core idea is to use double transformation matrices for relaxation, and jointly projecting the learned principal and salient features from two directions into the label space, which can share the pressure of a single transformation matrix. Firstly, the low-rank features are learned by the latent low rank representation (LatLRR) method which processes the original data from two directions. In this process, sparse noise is also separated, which alleviates its interference on projection learning to some extent. Then, two transformation matrices are introduced to process the two features separately, and the information useful for the classification is extracted. Finally, the two transformation matrices can be easily obtained by alternate optimization methods. Through such processing, even when a large amount of redundant information is contained in samples, our method can also obtain projection results that are easy to classify. Experiments on multiple data sets demonstrate the effectiveness of our approach for classification, especially for complex scenarios.