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LEARNING IMAGE REPRESENTATION BY DISTILLING FROM MULTI-TASK NETWORKS

机译:通过多任务网络中的蒸馏学习图像表示

摘要

Embodiments of the present invention relate to learning image representation by distilling from multi-task networks. In implementation, more than one single-task network is trained with heterogeneous labels. In some embodiments, each of the single-task networks is transformed into a Siamese structure with three branches of sub-networks so that a common triplet ranking loss can be applied to each branch. A distilling network is trained that approximates the single-task networks on a common ranking task. In some embodiments, the distilling network is a Siamese network whose ranking function is optimized to approximate an ensemble ranking of each of the single-task networks. The distilling network can be utilized to predict tags to associate with a test image or identify similar images to the test image.
机译:本发明的实施例涉及通过从多任务网络中提取来学习图像表示。在实施中,使用异类标签训练一个以上的单任务网络。在一些实施例中,每个单任务网络被转换成具有三个子网分支的连体结构,从而可以将共同的三元组等级损失应用于每个分支。训练了一个蒸馏网络,该蒸馏网络在共同的排名任务上近似于单任务网络。在一些实施例中,蒸馏网络是暹罗网络,其排名功能被优化为近似于每个单任务网络的整体排名。蒸馏网络可用于预测标签以与测试图像相关联或识别与测试图像相似的图像。

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