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Locality-Constrained Linear Coding Based on Principal Components of Visual Vocabulary for Visual Object Categorization

机译:基于视觉词汇主成分的局域约束线性编码用于视觉对象分类

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Through the linear correlation analysis between the local feature and its K-nearest-neighbor visual words and significance testing of locality-constrained linear coding, this paper finds that the fundamental reason for causing nonsignificance of the weight coefficient is the multicollinearity of K-nearest-neighbor visual words in Locality-constrained Linear Coding (LLC) scheme. Locality-constrained principal component linear coding can solve the multicollinearity and improves the classification accuracy, but it increases the time overhead of the coding. This paper presents an improved scheme called Locality-constrained linear coding based on the principal components of visual vocabulary. To determine the principal components of K-nearest-neighbor visual words of each local feature is simplified to only determine the principal components of visual vocabulary. Experiments have been conducted for comparing and evaluating the proposed method utilizing the Caltech-4 dataset. Experimental results show that locality-constrained linear coding based on the principal components of visual vocabulary reduces the time overhead and the same time it retains the advantages of Locality-constrained principal component linear coding.
机译:通过局部特征与其K近邻视觉词之间的线性相关性分析以及局部约束线性编码的显着性检验,发现导致权重系数不重要的根本原因是K近邻的多重共线性。局域约束线性编码(LLC)方案中的相邻视觉单词。局部约束的主成分线性编码可以解决多重共线性,提高了分类精度,但增加了编码的时间开销。本文提出了一种改进的方案,该方案基于视觉词汇的主要成分,称为局域约束线性编码。为了确定K近邻的主要成分,简化了每个局部特征的视觉词,仅确定了视觉词汇的主要成分。已经进行了实验,以利用Caltech-4数据集比较和评估所提出的方法。实验结果表明,基于视觉词汇主成分的局域约束线性编码减少了时间开销,同时保留了局限性主成分线性编码的优点。

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