This paper presents a novel low-power low-voltage analog implementation of the softmax function, with electrically adjustable amplitude and slope parameters. We propose a modular design, which can be scaled by the number of inputs (and of corresponding outputs). It is composed of input current–voltage linear converter stages (1st stages), MOSFETs operating in a subthreshold regime implementing the exponential functions (2nd stages), and analog divider stages (3rd stages). Each stage is only composed of p-type MOSFET transistors. Designed in a 0.18 µm CMOS technology (TSMC), the proposed softmax circuit can be operated at a supply voltage of 500 mV. A ten-input/ten-output realization occupies a chip area of 2570 µm2 and consumes only 3 µW of...
We propose an analog current-mode subthreshold CMOS circuit implementing a neuromorphic oscillator. ...
The CMOS circuit implementation of the feedforward neural primitives of a generic Multi Layer Percep...
International audienceEncoded neural networks mix the principles of associative memories and error-c...
This paper presents a novel low-power low-voltage analog implementation of the softmax function, wit...
Abstract This letter presents an upgraded winner‐take‐all (WTA) circuit that is capable of operating...
A novel architecture for loser-take-all functions is proposed. Inputs and outputs of the circuit are...
International audienceEncoded Neural Networks (ENN) associate lowcomplexity algorithm with a storage...
International audienceEncoded neural networks mix the principles of associative memories and error-c...
A novel, current-mode, binary-tree, asynchronous Min/Max circuit for application in nonlinear filter...
A new current-mode maximum winner-take-all (Max WTA) circuit is presented. Inputs and output of the ...
In this paper, we present a block of adaptive weight change (AWC) mechanism for analog current-mode ...
An analog VLSI neural network integrated circuit is presented. It consist of a feedforward multi lay...
Developing mixed-signal analog-digital neuromorphic circuits in advanced scaled processes poses sign...
This paper deals with analog VLSI architectures addressed to the implementation of smart adaptive sy...
The CMOS circuit implementation of the feed forward neural primitives of a generic Multi Layer Perce...
We propose an analog current-mode subthreshold CMOS circuit implementing a neuromorphic oscillator. ...
The CMOS circuit implementation of the feedforward neural primitives of a generic Multi Layer Percep...
International audienceEncoded neural networks mix the principles of associative memories and error-c...
This paper presents a novel low-power low-voltage analog implementation of the softmax function, wit...
Abstract This letter presents an upgraded winner‐take‐all (WTA) circuit that is capable of operating...
A novel architecture for loser-take-all functions is proposed. Inputs and outputs of the circuit are...
International audienceEncoded Neural Networks (ENN) associate lowcomplexity algorithm with a storage...
International audienceEncoded neural networks mix the principles of associative memories and error-c...
A novel, current-mode, binary-tree, asynchronous Min/Max circuit for application in nonlinear filter...
A new current-mode maximum winner-take-all (Max WTA) circuit is presented. Inputs and output of the ...
In this paper, we present a block of adaptive weight change (AWC) mechanism for analog current-mode ...
An analog VLSI neural network integrated circuit is presented. It consist of a feedforward multi lay...
Developing mixed-signal analog-digital neuromorphic circuits in advanced scaled processes poses sign...
This paper deals with analog VLSI architectures addressed to the implementation of smart adaptive sy...
The CMOS circuit implementation of the feed forward neural primitives of a generic Multi Layer Perce...
We propose an analog current-mode subthreshold CMOS circuit implementing a neuromorphic oscillator. ...
The CMOS circuit implementation of the feedforward neural primitives of a generic Multi Layer Percep...
International audienceEncoded neural networks mix the principles of associative memories and error-c...