TAM aligns query video frames to novel class examples, averages per-frame distances along the path, and uses continuous relaxation for end-to-end few-shot optimization, yielding gains on Kinetics and Something-Something-V2.
Learning to Remember Rare Events
1 Pith paper cite this work. Polarity classification is still indexing.
abstract
Despite recent advances, memory-augmented deep neural networks are still limited when it comes to life-long and one-shot learning, especially in remembering rare events. We present a large-scale life-long memory module for use in deep learning. The module exploits fast nearest-neighbor algorithms for efficiency and thus scales to large memory sizes. Except for the nearest-neighbor query, the module is fully differentiable and trained end-to-end with no extra supervision. It operates in a life-long manner, i.e., without the need to reset it during training. Our memory module can be easily added to any part of a supervised neural network. To show its versatility we add it to a number of networks, from simple convolutional ones tested on image classification to deep sequence-to-sequence and recurrent-convolutional models. In all cases, the enhanced network gains the ability to remember and do life-long one-shot learning. Our module remembers training examples shown many thousands of steps in the past and it can successfully generalize from them. We set new state-of-the-art for one-shot learning on the Omniglot dataset and demonstrate, for the first time, life-long one-shot learning in recurrent neural networks on a large-scale machine translation task.
fields
cs.CV 1years
2019 1verdicts
UNVERDICTED 1representative citing papers
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Few-Shot Video Classification via Temporal Alignment
TAM aligns query video frames to novel class examples, averages per-frame distances along the path, and uses continuous relaxation for end-to-end few-shot optimization, yielding gains on Kinetics and Something-Something-V2.