A quadruplet selection heuristic that pairs very hard negatives with relatively easy positives from matching hierarchical classes boosts embedding performance on fine-grained datasets.
Quadruplet Selection Methods for Deep Embedding Learning
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abstract
Recognition of objects with subtle differences has been used in many practical applications, such as car model recognition and maritime vessel identification. For discrimination of the objects in fine-grained detail, we focus on deep embedding learning by using a multi-task learning framework, in which the hierarchical labels (coarse and fine labels) of the samples are utilized both for classification and a quadruplet-based loss function. In order to improve the recognition strength of the learned features, we present a novel feature selection method specifically designed for four training samples of a quadruplet. By experiments, it is observed that the selection of very hard negative samples with relatively easy positive ones from the same coarse and fine classes significantly increases some performance metrics in a fine-grained dataset when compared to selecting the quadruplet samples randomly. The feature embedding learned by the proposed method achieves favorable performance against its state-of-the-art counterparts.
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cs.CV 1years
2019 1verdicts
UNVERDICTED 1representative citing papers
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Quadruplet Selection Methods for Deep Embedding Learning
A quadruplet selection heuristic that pairs very hard negatives with relatively easy positives from matching hierarchical classes boosts embedding performance on fine-grained datasets.