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Linear Predictive Model for Discriminative Feature Representation of Object Classification

机译:对象分类的鉴别特征表示线性预测模型

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In order to improve the performance for recognition in computer vision tasks, a high-level feature representation plays a crucial role to transform a raw input data (low-level) into a new informative representation for learning algorithms. Sparse coding is one of the widely used methods to generate a high-level feature representation for classification. In particular, an input data can be represented as a sparse linear combination of a set of training overcomplete dictionary. However, the main problem in traditional sparse coding is that it is fairly slow to compute the corresponding coding coefficients due to an ?0/?1 optimization. In this work, an efficient linear model with low computational effort is proposed to create the discriminative coding coefficients. The comparison of classification performance between the proposed method and the existing discriminative sparse coding is experimented on image databases for face and scene recognitions under the same learning condition. The results indicate that our proposed method both achieves promising classification accuracies and outperforms in computation time.
机译:为了提高计算机视觉任务中的识别性能,高级特征表示起到重要作用,可以将原始输入数据(低级)转换为学习算法的新型信息表示。稀疏编码是为分类产生高级特征表示的广泛使用的方法之一。特别地,输入数据可以表示为一组训练的稀疏线性组合,其训练过度概述字典。但是,传统稀疏编码中的主要问题是,计算由于AN的相应编码系数相当慢? 0 /? 1 优化。在这项工作中,提出了一种具有低计算工作的有效线性模型来创建判别编码系数。在相同的学习条件下,所提出的方法与现有判别稀疏编码之间的分类性能和现有判别稀疏编码的比较是在面部和场景识别下的图像数据库。结果表明,我们所提出的方法在计算时达到了有希望的分类精度和优于胜过。

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