iTAML: An Incremental Task-Agnostic Meta-learning Approach

CVPR 2020 Jathushan RajasegaranSalman KhanMunawar HayatFahad Shahbaz KhanMubarak Shah

Humans can continuously learn new knowledge as their experience grows. In contrast, previous learning in deep neural networks can quickly fade out when they are trained on a new task... (read more)

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