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A method for quadruplet sample selection in deep feature learning

机译:深度特征学习中四重样本选择的方法

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Recently, the deep learning based feature learning methodologies have been developed to recognize the objects in fine-grained detail. In order to increase the discriminativeness and robustness of the utilized features, this paper proposes a sample selection methodology for the quadruplet based feature learning. The feature space is manipulated by using the hierarchical structure of the training set. In the training process, the quadruplets are selected by considering the distances between the samples in the feature space in order to improve the effectiveness of the training. We have shown by the experiments that the proposed method improves the fine-grained recognition accuracy.
机译:最近,已经开发了基于深度学习的特征学习方法,以细粒度地识别对象。为了提高所使用特征的判别力和鲁棒性,本文提出了一种基于四联体特征学习的样本选择方法。通过使用训练集的层次结构来操纵特征空间。在训练过程中,通过考虑特征空间中样本之间的距离来选择四元组,以提高训练的有效性。实验表明,该方法提高了细粒度识别的准确性。

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