Most scene segmentation and categorization architectures for the extraction of features in images and patches make exhaustive use of 2D convolution operations for template matching, template search and denoising. Convolutional Neural Networks (ConvNets) are one example of such architectures that can implement general-purpose bio-inspired vision systems. In standard digital computers 2D convolutions are usually expensive in terms of resource consumption and impose severe limitations for efficient real-time applications. Nevertheless, neuro-cortex inspired solutions, like dedicated Frame-Based or Frame-Free Spiking ConvNet Convolution Processors, are advancing real-time visual processing. These two approaches share the neural inspiration, but...
Abstract. Over the past 15 years, we have developed software image processing systems that attempt t...
Convolutional neural networks (ConvNets) are hierarchical models of the mammalian visual cortex. The...
International audienceNumerous neural network hardware implementations now use digital reconfigurabl...
Most scene segmentation and categorization architectures for the extraction of features in images an...
Image convolution operations in digital computer systems are usually very expensive operations in t...
This paper summarizes how Convolutional Neural Networks (ConvNets) can be implemented in hardware us...
Spiking convolutional neural networks have become a novel approach for machine vision tasks, due to...
Convolutional Neural Networks are commonly employed in applications involving Computer Vision tasks ...
Convolution Neural Network (CNN) is a special kind of neural network that is inspired by the behavio...
Image convolution operations in digital computer systems are usually very expensive operations in t...
Neural networks algorithms are commonly used to recognize patterns from different data sources such...
Neuromorphic hardware systems have been gaining ever-increasing focus in many embedded applications ...
Convolutional Neural Networks (ConvNets) are a particular type of neural network often used for man...
Convolutional neural networks (CNNs) have achieved great success in image processing. However, the h...
Today, increasing attention is being paid to research into spike-based neural computation both to ga...
Abstract. Over the past 15 years, we have developed software image processing systems that attempt t...
Convolutional neural networks (ConvNets) are hierarchical models of the mammalian visual cortex. The...
International audienceNumerous neural network hardware implementations now use digital reconfigurabl...
Most scene segmentation and categorization architectures for the extraction of features in images an...
Image convolution operations in digital computer systems are usually very expensive operations in t...
This paper summarizes how Convolutional Neural Networks (ConvNets) can be implemented in hardware us...
Spiking convolutional neural networks have become a novel approach for machine vision tasks, due to...
Convolutional Neural Networks are commonly employed in applications involving Computer Vision tasks ...
Convolution Neural Network (CNN) is a special kind of neural network that is inspired by the behavio...
Image convolution operations in digital computer systems are usually very expensive operations in t...
Neural networks algorithms are commonly used to recognize patterns from different data sources such...
Neuromorphic hardware systems have been gaining ever-increasing focus in many embedded applications ...
Convolutional Neural Networks (ConvNets) are a particular type of neural network often used for man...
Convolutional neural networks (CNNs) have achieved great success in image processing. However, the h...
Today, increasing attention is being paid to research into spike-based neural computation both to ga...
Abstract. Over the past 15 years, we have developed software image processing systems that attempt t...
Convolutional neural networks (ConvNets) are hierarchical models of the mammalian visual cortex. The...
International audienceNumerous neural network hardware implementations now use digital reconfigurabl...