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Multiscale descriptors and metric learning for human body shape retrieval

机译:用于人体形状检索的多尺度描述符和度量学习

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The aim of this paper was to show the usefulness of applying feature projection or metric learning techniques to multiscale descriptor spaces for the effective retrieval of human bodies of labeled subjects. Using learned subspace projections it is possible to strongly improve the retrieval performance obtained with state-of-the-art global descriptors, and, in some cases, to perform an effective feature fusion. Results obtained on different human scan datasets show that Linear Discriminant Analysis, applied to Histograms of Area Projection Transform and Shape DNA features after a preliminary dimensionality reduction, creates compact descriptors that are quite effective in improving the subject retrieval scores both when class (subject) examples are available in the training set and when only examples of classes not included in the test set are used for training. Other mappings tested are less effective even if still able to improve the results. Retrieval scores obtained in the same experimental settings used in recent related papers show that the approach based on our mapped features largely outperforms the other methods proposed for the task, even those specifically designed for human body characterization.
机译:本文的目的是展示将​​特征投影或度量学习技术应用于多尺度描述符空间对于有效检索标记对象的人体的有用性。使用学习的子空间投影,可以极大地提高使用最新的全局描述符获得的检索性能,并且在某些情况下,可以执行有效的特征融合。在不同的人体扫描数据集上获得的结果表明,线性判别分析在初步降低维数后应用于区域投影变换和形状DNA特征的直方图,可创建紧凑的描述符,在描述类(主题)示例时,这两个描述符都可以有效地提高主题检索分数可在训练集中使用,并且仅将测试集中未包括的班级示例用于训练。即使仍然能够改善结果,其他测试的映射效果也不佳。在最近的相关论文中使用的相同实验设置中获得的检索分数表明,基于我们的映射特征的方法大大优于针对该任务提出的其他方法,即使是专门针对人体表征而设计的方法。

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