<p>A fundamental challenge in machine learning today is to build a model that can learn from few examples. Here, we describe a reservoir based spiking neural model for learning to recognize actions with a limited number of labeled videos. First, we propose a novel encoding, inspired by how microsaccades influence visual perception, to extract spike information from raw video data while preserving the temporal correlation across different frames. Using this encoding, we show that the reservoir generalizes its rich dynamical activity toward signature action/movements enabling it to learn from few training examples. We evaluate our approach on the UCF-101 dataset. Our experiments demonstrate that our proposed reservoir achieves 81.3/87% Top-1/...
Convolutional neural network(CNN) models have been extensively used in recent years to solve the pro...
International audienceAlthough representation learning methods developed within the framework of tra...
Abstract Deep neural networks have achieved great success for video analysis and understanding. How...
<p>A fundamental challenge in machine learning today is to build a model that can learn from few exa...
A fundamental challenge in machine learning today is to build a model that can learn from few exampl...
Current advances in technology have highlighted the importance of video analysis in the domain of co...
International audienceThere has been an increasing interest in spiking neural networks in recent yea...
International audienceCurrent advances in technology have highlighted the importance of video analys...
In this paper, we propose a novel temporal spiking recurrent neural network (TSRNN) to perform robus...
International audienceWe propose a bio-inspired feedforward spiking network modeling two brain areas...
Learning to localize actions in long, cluttered, and untrimmed videos is a hard task, that in the li...
Many few-shot learning models focus on recognising images. In contrast, we tackle a challenging task...
The availability of large labelled datasets has played a crucial role in the recent success of deep ...
Convolutional neural network(CNN) models have been extensively used in recent years to solve the pro...
International audienceAlthough representation learning methods developed within the framework of tra...
Abstract Deep neural networks have achieved great success for video analysis and understanding. How...
<p>A fundamental challenge in machine learning today is to build a model that can learn from few exa...
A fundamental challenge in machine learning today is to build a model that can learn from few exampl...
Current advances in technology have highlighted the importance of video analysis in the domain of co...
International audienceThere has been an increasing interest in spiking neural networks in recent yea...
International audienceCurrent advances in technology have highlighted the importance of video analys...
In this paper, we propose a novel temporal spiking recurrent neural network (TSRNN) to perform robus...
International audienceWe propose a bio-inspired feedforward spiking network modeling two brain areas...
Learning to localize actions in long, cluttered, and untrimmed videos is a hard task, that in the li...
Many few-shot learning models focus on recognising images. In contrast, we tackle a challenging task...
The availability of large labelled datasets has played a crucial role in the recent success of deep ...
Convolutional neural network(CNN) models have been extensively used in recent years to solve the pro...
International audienceAlthough representation learning methods developed within the framework of tra...
Abstract Deep neural networks have achieved great success for video analysis and understanding. How...