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Pairwise Confusion for Fine-Grained Visual Classification

机译:成对混淆用于细粒度的视觉分类

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Fine-Grained Visual Classification (FGVC) datasets contain small sample sizes, along with significant intra-class variation and inter-class similarity. While prior work has addressed intra-class variation using localization and segmentation techniques, inter-class similarity may also affect feature learning and reduce classification performance. In this work, we address this problem using a novel optimization procedure for the end-to-end neural network training on FGVC tasks. Our procedure, called Pairwise Confusion (PC) reduces overfitting by intentionally introducing confusion in the activations. With PC regularization, we obtain state-of-the-art performance on six of the most widely-used FGVC datasets and demonstrate improved localization ability. PC is easy to implement, does not need excessive hyperparameter tuning during training, and does not add significant overhead during test time.
机译:细粒度视觉分类(FGVC)数据集包含小的样本量,以及显着的类内差异和类间相似性。尽管先前的工作已经使用定位和分割技术解决了类内变异,但是类间相似性也可能影响特征学习并降低分类性能。在这项工作中,我们使用新颖的优化程序针对FGVC任务进行端到端神经网络训练来解决此问题。我们的过程称为成对混淆(Pairwisewise Confusion,PC),它通过在激活过程中故意引入混淆来减少过度拟合。通过PC正则化,我们可以在六个使用最广泛的FGVC数据集上获得最先进的性能,并展示出改进的定位能力。 PC易于实施,在训练期间不需要过多的超参数调整,并且在测试期间不会增加大量开销。

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