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Metu Loss: Metric Learning With Entangled Triplet Unified Loss

机译:Metu Loss:度量学习与纠缠三重态统一损失

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Metric learning aims to define a distance that measures the semantic difference between the instances in a dataset. In this paper, we analyze several well-known triplet loss functions and argue that the gradients of these triplet loss functions do not move the instances in each triplet in the desired direction with the right magnitude. Hence, in order to determine precise interacting forces, we establish a weak analogy with the phenomena of the electromagnetic forces affecting a charged body in free space. Since gradients of the loss function (matching up to the potential energy) with respect to the anchor, positive and negative instances (corresponding to the point charges) of any valid triplet give forces, a loss function can be obtained in a reverse manner, i.e., starting from the desired interacting forces. Based on this idea, we propose a novel triplet loss function, namely, metric learning with entangled triplet unified (METU) loss, that considers the distances between instances in a triplet as well. In order to present only the effect of the loss function, no mining (including the effect of hinge function) is utilized during the experiments. Based on the results on the used fine-grained dataset, CUB-200-2011, it can be concluded that the proposed loss function outperforms the scores of the state-of-the-art methods in the same category.
机译:度量学习旨在定义测量数据集中的实例之间的语义差异的距离。在本文中,我们分析了几个众所周知的三态损耗功能,并争辩说,这些三重损耗函数的梯度不会在所需方向上以正确的幅度移动每个三联网中的情况。因此,为了确定精确的相互作用力,我们建立了与影响自由空间中带电体内的电磁力的现象的弱类比。由于损耗功能(匹配到势能)相对于任何有效三态细胞的锚定,正和负电势的势能匹配),因此可以以相反的方式获得损耗功能,即从所需的互动力开始。基于这个想法,我们提出了一种新颖的三态损失功能,即使用纠缠三态统一(Metu)损失的度量学习,这也考虑了三联体中的实例之间的距离。为了仅呈现损失功能的效果,在实验期间不使用挖掘(包括铰链功能的效果)。基于所使用的细粒度数据集的结果,CUB-200-2011,可以得出结论,所提出的损失函数在同一类别中优于最先进方法的分数。

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