Deep metric learning aims to learn a deep embedding that can capture the semantic similarity of data points. Given the availability of massive training samples, deep metric learning is known to suffer from slow convergence due to a large fraction of trivial samples. Therefore, most existing methods generally resort to sample mining strategies for selecting nontrivial samples to accelerate convergence and improve performance. In this work, we identify two critical limitations of the sample mining methods, and provide solutions for both of them. First, previous mining methods assign one binary score to each sample, i.e., dropping or keeping it, so they only selects a subset of relevant samples in a mini-batch. Therefore, we propose a novel sa...
International audienceMetric learning involves learning a discriminative representation such that em...
International audienceMetric learning involves learning a discriminative representation such that em...
International audienceMetric learning involves learning a discriminative representation such that em...
To solve deep metric learning problems and producing feature embeddings, current methodologies will ...
International audienceIn deep metric learning, the training procedure relies on sampling informative...
International audienceIn deep metric learning, the training procedure relies on sampling informative...
Distance metric learning (DML) is to learn the embeddings where examples from the same class are clo...
We have witnessed rapid evolution of deep neural network architecture design in the past years. Thes...
International audienceRecent breakthroughs in representation learning of unseen classes and examples...
International audienceRecent breakthroughs in representation learning of unseen classes and examples...
International audienceRecent breakthroughs in representation learning of unseen classes and examples...
Metric learning aims to construct an embedding where two extracted features corresponding to the sam...
Metric learning aims to learn a distance function to measure the similarity of samples, which plays ...
Deep metric learning aims to learn a feature space that models the similarity between images, and fe...
Deep metric learning aims to learn embeddings that contain semantic similarity information among dat...
International audienceMetric learning involves learning a discriminative representation such that em...
International audienceMetric learning involves learning a discriminative representation such that em...
International audienceMetric learning involves learning a discriminative representation such that em...
To solve deep metric learning problems and producing feature embeddings, current methodologies will ...
International audienceIn deep metric learning, the training procedure relies on sampling informative...
International audienceIn deep metric learning, the training procedure relies on sampling informative...
Distance metric learning (DML) is to learn the embeddings where examples from the same class are clo...
We have witnessed rapid evolution of deep neural network architecture design in the past years. Thes...
International audienceRecent breakthroughs in representation learning of unseen classes and examples...
International audienceRecent breakthroughs in representation learning of unseen classes and examples...
International audienceRecent breakthroughs in representation learning of unseen classes and examples...
Metric learning aims to construct an embedding where two extracted features corresponding to the sam...
Metric learning aims to learn a distance function to measure the similarity of samples, which plays ...
Deep metric learning aims to learn a feature space that models the similarity between images, and fe...
Deep metric learning aims to learn embeddings that contain semantic similarity information among dat...
International audienceMetric learning involves learning a discriminative representation such that em...
International audienceMetric learning involves learning a discriminative representation such that em...
International audienceMetric learning involves learning a discriminative representation such that em...