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Boosting Standard Classification Architectures Through a Ranking Regularizer

机译:通过排名正则化器提升标准分类体系结构

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We employ triplet loss as a feature embedding regularizer to boost classification performance. Standard architectures, like ResNet and Inception, are extended to support both losses with minimal hyper-parameter tuning. This promotes generality while fine-tuning pretrained networks. Triplet loss is a powerful surrogate for recently proposed embedding regularizers. Yet, it is avoided due to large batch-size requirement and high computational cost. Through our experiments, we re-assess these assumptions.During inference, our network supports both classification and embedding tasks without any computational overhead. Quantitative evaluation highlights a steady improvement on five fine-grained recognition datasets. Further evaluation on an imbalanced video dataset achieves significant improvement. Triplet loss brings feature embedding capabilities like nearest neighbor to classification models. Code available at http://bit.ly/2LNYEqL
机译:我们采用三重态损失作为特征嵌入正则化器来提高分类性能。扩展了ResNet和Inception之类的标准体系结构,以最小的超参数调整支持两种损耗。这样可以在调整预训练网络的同时提高通用性。三重态损耗是最近提出的嵌入正则化函数的有力替代。然而,由于大批量需求和高计算成本而避免了这种情况。通过实验,我们重新评估了这些假设。在推理过程中,我们的网络支持分类和嵌入任务,而没有任何计算开销。定量评估强调了五个细粒度识别数据集的稳步改进。对不平衡视频数据集的进一步评估取得了显着改善。三元组损失为分类模型带来了功能嵌入功能,例如最近邻居。代码可从http://bit.ly/2LNYEqL获得

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