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Distance Metric Learned Collaborative Representation Classifier(DML-CRC)

机译:距离度量学习协作表示分类:DML-CRC)

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摘要

Any generic deep machine learning algorithm is essentially a function fitting exercise, where the network tunes its weights and parameters to learn discriminatory features by minimizing some cost function. Though the network tries to learn the optimal feature space, it seldom tries to learn an optimal distance metric in the cost function, and hence misses out on an additional layer of abstraction. We present a simple effective way of achieving this by learning a generic Mahalanabis distance in a collaborative loss function in an end-to-end fashion with any standard convolutional network as the feature learner. The proposed method DML-CRC gives state-of-the-art performance on benchmark fine-grained classification datasets CUB Birds, Oxford Flowers and Oxford-IIIT Pets using the VGG-19 deep network. The method is network agnostic and can be used for other similar classification tasks.
机译:任何通用深层机器学习算法都基本上是一个功能拟合练习,网络通过最小化一些成本函数来学习其权重和参数以学习歧视特征。虽然网络尝试了解最佳特征空间,但很少尝试学习成本函数的最佳距离度量,因此在附加抽象层上错过。我们通过在端到端时尚的结束时尚中学习具有任何标准卷积网络作为特征学习者的结束时的时尚学习合作损失函数的通用Mahalanabis距离来实现简单的有效方法。所提出的方法DML-CRC在基准的精细粒度分类数据集幼鸽,牛津花和牛津-IIIT宠物上提供最先进的性能,使用VGG-19深网络。该方法是网络不可知论,可用于其他类似的分类任务。

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