Selective attention-driven modulation can effectively enhance the performance and robustness of continual learning models by leveraging the forgetting-free behavior of saliency prediction.
Language models can maintain a majority of the performance of vision-language models in learning new visual tasks from limited data, suggesting language plays a key role in visual understanding.
Neural networks can rapidly and accurately predict the communication and navigation attributes of swarming autonomous agents, enabling real-time inference of their overall tactics.