Low-Shot Learning with Imprinted Weights
This addresses the problem of recognizing novel visual categories with few examples for computer vision systems, offering an incremental improvement over existing embedding methods.
The paper tackles low-shot learning by introducing weight imprinting, a method that directly sets final layer weights from novel training examples, achieving immediate good classification performance and better generalization than nearest-neighbor embeddings.
Human vision is able to immediately recognize novel visual categories after seeing just one or a few training examples. We describe how to add a similar capability to ConvNet classifiers by directly setting the final layer weights from novel training examples during low-shot learning. We call this process weight imprinting as it directly sets weights for a new category based on an appropriately scaled copy of the embedding layer activations for that training example. The imprinting process provides a valuable complement to training with stochastic gradient descent, as it provides immediate good classification performance and an initialization for any further fine-tuning in the future. We show how this imprinting process is related to proxy-based embeddings. However, it differs in that only a single imprinted weight vector is learned for each novel category, rather than relying on a nearest-neighbor distance to training instances as typically used with embedding methods. Our experiments show that using averaging of imprinted weights provides better generalization than using nearest-neighbor instance embeddings.