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Enhanced regularized least square based discriminative projections for feature extraction

机译:增强的基于正则化最小二乘的判别投影用于特征提取

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The regularized least square based discriminative projections (RLSDP) for extracting features was recently proposed, which aims to seek discriminant projection directions that maximize the between-class scatter and minimize the within-class compactness. However, in RLSDP, the retrieval samples are reconstructed by the coefficients only associated with the same class, and may have large errors. Moreover, the dis- tances between each sample and other within-class samples characterize the most important within-class compactness information, and are not minimized in RLSDP. To deal with the above two problems, we propose an enhanced regularized least square based discriminative projections (ERLSDP). ERLSDP utilizes all the related coefficients of each sample for reconstruction and explicitly minimizes the distances be- tween all the within-class samples, and thus it has better reconstruction accuracy and more discriminat- ing power than that of RLSDP. Experimental results demonstrate that ERLSDP gets a clear improvement over RLSDP when the training sample size is small.
机译:最近提出了用于提取特征的基于正则化最小二乘的判别投影(RLSDP),其目的是寻求使类间散布最大化并最小化类内紧凑性的判别投影方向。但是,在RLSDP中,仅通过与同一类别相关联的系数来重构检索样本,并且可能具有较大的误差。此外,每个样本与其他类别内样本之间的距离是最重要的类别内紧凑性信息的特征,并且在RLSDP中并未最小化。为解决上述两个问题,我们提出了一种增强的基于正则化最小二乘的判别投影(ERLSDP)。 ERLSDP利用每个样本的所有相关系数进行重建,并显着最小化所有类内样本之间的距离,因此与RLSDP相比,它具有更好的重建精度和更大的判别能力。实验结果表明,当训练样本量较小时,ERLSDP比RLSDP有了明显的改进。

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