[[abstract]]mplementing probabilistic models in the Very-Large-Scale- Integration (VLSI) has been attractive to implantable biomedical devices for improving sensor fusion and power management. However, implantable devices are normally exposed to noisy environments which can introduce non-negligible computational errors and hinder optimal modelling on-chip. While the probablistic model called the Continuous Restricted Boltzmann Machine (CRBM) has been shown useful and realised as a VLSI system with noise-induced stochastic behaviour, this paper investigates the suggestion that the stochastic behaviour in VLSI could enhance the tolerance against the interferences of environmental noise. The behavioural simulation of the CRBM system is used to...
Abstract — This paper provides an overview of the recent de-velopment of our noise-driven VLSI circu...
[[abstract]]The continuous restricted Boltzmann machine (CRBM) has been attractive as a probabilisti...
This thesis explores the potential of probabilistic neural architectures for computation with future...
[[abstract]]This paper presents the VLSI implementation of a scalable and programmable Continuous Re...
[[abstract]]This paper presents the VLSI implementation of the continuous restricted Boltzmann machi...
[[abstract]]This paper presents VLSI circuits with continuous-valued probabilistic behaviour realize...
This paper presents VLSI circuits with continuous-valued proba-bilistic behaviour realized by inject...
[[abstract]]Neuronal variability has been thought to play an important role in the brain. As the var...
An approach is described that investigates the potential of probabilistic "neural" architectures for...
An approach is described that investigates the potential of probabilistic "neural" architectures for...
[[abstract]]As the interest to integrate electronic technology with biological system grows, intelli...
As advances in integrated circuit (IC) fabrication technology reduce feature sizes to dimensions on ...
In recent decades, artificial intelligence has been successively employed in the fields of finance, ...
[[abstract]]The Diffusion Network (DN) is a probabilistic model capable of recognising continuous-ti...
[[abstract]]VLSI implementation of probabilistic models is attractive for many biomedical applicatio...
Abstract — This paper provides an overview of the recent de-velopment of our noise-driven VLSI circu...
[[abstract]]The continuous restricted Boltzmann machine (CRBM) has been attractive as a probabilisti...
This thesis explores the potential of probabilistic neural architectures for computation with future...
[[abstract]]This paper presents the VLSI implementation of a scalable and programmable Continuous Re...
[[abstract]]This paper presents the VLSI implementation of the continuous restricted Boltzmann machi...
[[abstract]]This paper presents VLSI circuits with continuous-valued probabilistic behaviour realize...
This paper presents VLSI circuits with continuous-valued proba-bilistic behaviour realized by inject...
[[abstract]]Neuronal variability has been thought to play an important role in the brain. As the var...
An approach is described that investigates the potential of probabilistic "neural" architectures for...
An approach is described that investigates the potential of probabilistic "neural" architectures for...
[[abstract]]As the interest to integrate electronic technology with biological system grows, intelli...
As advances in integrated circuit (IC) fabrication technology reduce feature sizes to dimensions on ...
In recent decades, artificial intelligence has been successively employed in the fields of finance, ...
[[abstract]]The Diffusion Network (DN) is a probabilistic model capable of recognising continuous-ti...
[[abstract]]VLSI implementation of probabilistic models is attractive for many biomedical applicatio...
Abstract — This paper provides an overview of the recent de-velopment of our noise-driven VLSI circu...
[[abstract]]The continuous restricted Boltzmann machine (CRBM) has been attractive as a probabilisti...
This thesis explores the potential of probabilistic neural architectures for computation with future...