Training deep networks on light computational devices is nowadays very challenging. Continual learning techniques, where complex models are incrementally trained on small batches of new data, can make the learning problem tractable even for CPU-only edge devices. However, a number of practical problems need to be solved: catastrophic forgetting before anything else. In this paper we introduce an original technique named ``Latent Replay'' where, instead of storing a portion of past data in the input space, we store activations volumes at some intermediate layer. This can significantly reduce the computation and storage required by native rehearsal. To keep the representation stable and the stored activations valid we propose to slow-down lea...
Deep networks have received considerable attention in recent years due to their applications in diff...
Neural networks are very powerful computational models, capable of outperforming humans on a variety...
Recent advances in deep learning have granted unrivaled performance to sensor-based human activity r...
Training deep networks on light computational devices is nowadays very challenging. Continual learni...
Training deep neural networks at the edge on light computational devices, embedded systems and robot...
In the last few years, research and development on Deep Learning models & techniques for ultra-l...
Continual learning approaches help deep neural network models adapt and learn incrementally by tryin...
Nowadays, Artificial Neural Networks (ANNs) are widely adopted to solve complex classification and r...
With the capacity of continual learning, humans can continuously acquire knowledge throughout their ...
Online continual learning (OCL) refers to the ability of a system to learn over time from a continuo...
Continual learning of deep neural networks is a key requirement for scaling them up to more complex ...
Continual learning of deep neural networks is a key requirement for scaling them up to more complex ...
Deep learning has enjoyed tremendous success over the last decade, but the training of practically u...
Continual Learning (CL) allows artificial neural networks to learn a sequence of tasks without catas...
© 2021 IEEEContinually learning in the real world must overcome many challenges, among which noisy l...
Deep networks have received considerable attention in recent years due to their applications in diff...
Neural networks are very powerful computational models, capable of outperforming humans on a variety...
Recent advances in deep learning have granted unrivaled performance to sensor-based human activity r...
Training deep networks on light computational devices is nowadays very challenging. Continual learni...
Training deep neural networks at the edge on light computational devices, embedded systems and robot...
In the last few years, research and development on Deep Learning models & techniques for ultra-l...
Continual learning approaches help deep neural network models adapt and learn incrementally by tryin...
Nowadays, Artificial Neural Networks (ANNs) are widely adopted to solve complex classification and r...
With the capacity of continual learning, humans can continuously acquire knowledge throughout their ...
Online continual learning (OCL) refers to the ability of a system to learn over time from a continuo...
Continual learning of deep neural networks is a key requirement for scaling them up to more complex ...
Continual learning of deep neural networks is a key requirement for scaling them up to more complex ...
Deep learning has enjoyed tremendous success over the last decade, but the training of practically u...
Continual Learning (CL) allows artificial neural networks to learn a sequence of tasks without catas...
© 2021 IEEEContinually learning in the real world must overcome many challenges, among which noisy l...
Deep networks have received considerable attention in recent years due to their applications in diff...
Neural networks are very powerful computational models, capable of outperforming humans on a variety...
Recent advances in deep learning have granted unrivaled performance to sensor-based human activity r...