Efficient Analog-Digital Converters (ADC) are one of the mainstays of mixed-signal integrated circuit design. Besides the conventional ADCs used in mainstream ICs, there have been various attempts in the past to utilize neuromorphic networks to accomplish an efficient crossing between analog and digital domains, i.e., to build neurally inspired ADCs. Generally, these have suffered from the same problems as conventional ADCs, that is they require high-precision, handcrafted analog circuits and are thus not technology portable. In this paper, we present an ADC based on the Neural Engineering Framework (NEF). It carries out a large fraction of the overall ADC process in the digital domain, i.e., it is easily portable across technologies. The a...
: A charge-based flash analog digital converter (ADC) circuit architecture is presented, which can b...
This paper reviews recent important results in the development of neuromorphic network architectures...
This work addresses neural and analog computation on reconfigurable mixed-signal platforms. Many eng...
Efficient Analog-Digital Converters (ADC) are one of the mainstays of mixed-signal integrated circui...
Efficient Analog-Digital Converters (ADC) are one of the mainstays of mixed-signal integrated circui...
In this chapter, we present an overview of the recent advances in analog-to-digital converter (ADC) ...
Analog to digital converter (ADC) is an important building block for modern electronic design. There...
This paper deals with an improved neural based analog to digital converter. New architecture is prop...
There are several possible hardware implementations of neural networks based either on digital, anal...
We discuss the integration architecture of spiking neu-rons, predicted to be next-generation basic c...
Abstract:- In the past two decades, the techniques of artificial neural networks are growing mature,...
A bio-inspired Neuron-ADC with reconfigurable sampling and static power reduction for biomedical app...
Continuous improvements in the VLSI domain have enabled the technology to mimic the neuro biological...
In this paper, a new A D converter architecture is proposed which includes the benefits of the neura...
The neural computation field had finally delivered on its promises in 2013 when the University of To...
: A charge-based flash analog digital converter (ADC) circuit architecture is presented, which can b...
This paper reviews recent important results in the development of neuromorphic network architectures...
This work addresses neural and analog computation on reconfigurable mixed-signal platforms. Many eng...
Efficient Analog-Digital Converters (ADC) are one of the mainstays of mixed-signal integrated circui...
Efficient Analog-Digital Converters (ADC) are one of the mainstays of mixed-signal integrated circui...
In this chapter, we present an overview of the recent advances in analog-to-digital converter (ADC) ...
Analog to digital converter (ADC) is an important building block for modern electronic design. There...
This paper deals with an improved neural based analog to digital converter. New architecture is prop...
There are several possible hardware implementations of neural networks based either on digital, anal...
We discuss the integration architecture of spiking neu-rons, predicted to be next-generation basic c...
Abstract:- In the past two decades, the techniques of artificial neural networks are growing mature,...
A bio-inspired Neuron-ADC with reconfigurable sampling and static power reduction for biomedical app...
Continuous improvements in the VLSI domain have enabled the technology to mimic the neuro biological...
In this paper, a new A D converter architecture is proposed which includes the benefits of the neura...
The neural computation field had finally delivered on its promises in 2013 when the University of To...
: A charge-based flash analog digital converter (ADC) circuit architecture is presented, which can b...
This paper reviews recent important results in the development of neuromorphic network architectures...
This work addresses neural and analog computation on reconfigurable mixed-signal platforms. Many eng...