Neuromorphic engineering takes inspiration from biology to solve engineering problems using the organizing principles of biological neural computation. This field has demonstrated success in sensor based applications (vision and audition) as well in cognition and actuators. This paper is focused on mimicking an interesting functionality of the retina that is computed by one type of Retinal Ganglion Cell (RGC). It is the early detection of approaching (expanding) dark objects. This paper presents the software and hardware logic FPGA implementation of this approach sensitivity cell. It can be used in later cognition layers as an attention mechanism. The input of this hardware modeled cell comes from an asynchronous spiking Dynamic Vision Sens...
Abstract. This paper describes a tool devised for automatic design of bioinspired visual processing ...
This demonstration shows how object detection and tracking are possible thanks to a new implementati...
Reproducing the dynamics of biological neural systems using mixed signal analog/digital neuromorphic...
Neuromorphic engineering takes inspiration from biology to solve engineering problems using the orga...
Taking inspiration from biology to solve engineering problems using the organizing principles of bio...
This paper describes the software and FPGA implementation of a Retinal Ganglion Cell model which de...
Signal processing is an important part of computer science, which is used in but not limited to auto...
Selective attention is a mechanisms used to sequentially select the spatial loca-tions of salient re...
Neuromorphic engineering pursues the design of electronic systems emulating function and structural ...
This paper describes the software and FPGA implementation of a Retinal Ganglion Cell model which det...
Abstract—In this paper, a new CMOS design methodology is proposed to implement CMOS neuromorphic chi...
International audienceThis paper presents a model of the retina with its properties with respect to ...
Biological vision components like visual attention (VA) algorithms aim to mimic the mechanism of the...
This paper presents a neuromorphic system for visual pattern recognition realized in hardware. A new...
Reproducing the dynamics of biological neural systems using mixed signal analog/digital neuromorphic...
Abstract. This paper describes a tool devised for automatic design of bioinspired visual processing ...
This demonstration shows how object detection and tracking are possible thanks to a new implementati...
Reproducing the dynamics of biological neural systems using mixed signal analog/digital neuromorphic...
Neuromorphic engineering takes inspiration from biology to solve engineering problems using the orga...
Taking inspiration from biology to solve engineering problems using the organizing principles of bio...
This paper describes the software and FPGA implementation of a Retinal Ganglion Cell model which de...
Signal processing is an important part of computer science, which is used in but not limited to auto...
Selective attention is a mechanisms used to sequentially select the spatial loca-tions of salient re...
Neuromorphic engineering pursues the design of electronic systems emulating function and structural ...
This paper describes the software and FPGA implementation of a Retinal Ganglion Cell model which det...
Abstract—In this paper, a new CMOS design methodology is proposed to implement CMOS neuromorphic chi...
International audienceThis paper presents a model of the retina with its properties with respect to ...
Biological vision components like visual attention (VA) algorithms aim to mimic the mechanism of the...
This paper presents a neuromorphic system for visual pattern recognition realized in hardware. A new...
Reproducing the dynamics of biological neural systems using mixed signal analog/digital neuromorphic...
Abstract. This paper describes a tool devised for automatic design of bioinspired visual processing ...
This demonstration shows how object detection and tracking are possible thanks to a new implementati...
Reproducing the dynamics of biological neural systems using mixed signal analog/digital neuromorphic...