International audienceIn this article, we study a three-layer neural hierarchy composed of bi-directionally connected recurrent layers which is trained to perform a synthetic object recognition task. The main feature of this network is its ability to represent, transmit and fuse probabilistic information, and thus to take near-optimal decisions when inputs are contradictory, noisy or missing. This is achieved by a neural space-latency code which is a natural consequence of the simple recurrent dynamics in each layer. Furthermore, the network possesses a feedback mechanism that is compatible with the space-latency code by making use of the attractor properties of neural layers. We show that this feedback mechanism can resolve/correct ambigui...
Animals rely on different decision strategies when faced with ambiguous or uncertain cues. Depending...
In the visual system of primates, image information propagates across successive cortical areas, and...
We propose a simple neural network model to understand the dynamics of temporal pulse coding. The mo...
International audienceIn this article, we study a three-layer neural hierarchy composed of bi-direct...
International audienceIn this article, we present an original neural space/latency code, integrated ...
Abstract. In this article, we present an original neural space/latency code, integrated in a multi-l...
International audienceIn the context of sensory or higher-level cognitive processing, we present a r...
Uncovering principles of information processing in neural systems continues to be an active field of...
'Andrea Alamia' and 'Milad Mozafari' contributed equally to this workBrain-inspired machine learning...
Uncovering principles of information processing in neural systems continues to be an active field of...
Uncertainty is inherent in neural processing due to noise in sensation and the sensory transmission ...
We investigate the properties of an unsupervised neural network which uses simple Hebbian learning a...
'Andrea Alamia' and 'Milad Mozafari' contributed equally to this workInternational audienceBrain-ins...
A conventional view of information processing by line (manifold) attractor networks holds that they ...
Hierarchical generative models, such as Bayesian networks, and belief propagation have been shown to...
Animals rely on different decision strategies when faced with ambiguous or uncertain cues. Depending...
In the visual system of primates, image information propagates across successive cortical areas, and...
We propose a simple neural network model to understand the dynamics of temporal pulse coding. The mo...
International audienceIn this article, we study a three-layer neural hierarchy composed of bi-direct...
International audienceIn this article, we present an original neural space/latency code, integrated ...
Abstract. In this article, we present an original neural space/latency code, integrated in a multi-l...
International audienceIn the context of sensory or higher-level cognitive processing, we present a r...
Uncovering principles of information processing in neural systems continues to be an active field of...
'Andrea Alamia' and 'Milad Mozafari' contributed equally to this workBrain-inspired machine learning...
Uncovering principles of information processing in neural systems continues to be an active field of...
Uncertainty is inherent in neural processing due to noise in sensation and the sensory transmission ...
We investigate the properties of an unsupervised neural network which uses simple Hebbian learning a...
'Andrea Alamia' and 'Milad Mozafari' contributed equally to this workInternational audienceBrain-ins...
A conventional view of information processing by line (manifold) attractor networks holds that they ...
Hierarchical generative models, such as Bayesian networks, and belief propagation have been shown to...
Animals rely on different decision strategies when faced with ambiguous or uncertain cues. Depending...
In the visual system of primates, image information propagates across successive cortical areas, and...
We propose a simple neural network model to understand the dynamics of temporal pulse coding. The mo...