We propose methods to train convolutional neural networks (CNNs) with both binarized weights and activations, leading to quantized models that are specifically friendly to mobile devices with limited power capacity and computation resources. Previous works on quantizing CNNs often seek to approximate the floating-point information using a set of discrete values, which we call value approximation, typically assuming the same architecture as the full-precision networks. Here we take a novel "structure approximation" view of quantization -- it is very likely that different architectures designed for low-bit networks may be better for achieving good performance. In particular, we propose a "network decomposition" strategy, termed Group-Net, in ...
Deep Learning is moving to edge devices, ushering in a new age of distributed Artificial Intelligenc...
Machine learning, and specifically Deep Neural Networks (DNNs) impact all parts of daily life. Altho...
Machine learning, and specifically Deep Neural Networks (DNNs) impact all parts of daily life. Altho...
In this paper, we propose to train convolutional neural networks (CNNs) with both binarized weights ...
The role of quantization within implicit/coordinate neural networks is still not fully understood. W...
In deep neural networks (DNNs), there are a huge number of weights and multiply-and-accumulate (MAC)...
Quantization of deep neural networks is a common way to optimize the networks for deployment on ener...
Paper number 134 entitled "Evaluating the Use of Interpretable Quantized Convolutional Neural Networ...
International audienceIn this paper, we address the problem of reducing the memory footprint of conv...
Neural network binarization accelerates deep models by quantizing their weights and activations into...
Recent advancements in machine learning achieved by Deep Neural Networks (DNNs) have been significan...
Quantizing weights and activations of deep neural networks is essential for deploying them in resour...
One-bit quantization is a general tool to execute a complex model,such as deep neural networks, on a...
Binary Convolutional Neural Networks (CNNs) can significantly reduce the number of arithmetic operat...
Artificial Neural Networks (NNs) can effectively be used to solve many classification and regression...
Deep Learning is moving to edge devices, ushering in a new age of distributed Artificial Intelligenc...
Machine learning, and specifically Deep Neural Networks (DNNs) impact all parts of daily life. Altho...
Machine learning, and specifically Deep Neural Networks (DNNs) impact all parts of daily life. Altho...
In this paper, we propose to train convolutional neural networks (CNNs) with both binarized weights ...
The role of quantization within implicit/coordinate neural networks is still not fully understood. W...
In deep neural networks (DNNs), there are a huge number of weights and multiply-and-accumulate (MAC)...
Quantization of deep neural networks is a common way to optimize the networks for deployment on ener...
Paper number 134 entitled "Evaluating the Use of Interpretable Quantized Convolutional Neural Networ...
International audienceIn this paper, we address the problem of reducing the memory footprint of conv...
Neural network binarization accelerates deep models by quantizing their weights and activations into...
Recent advancements in machine learning achieved by Deep Neural Networks (DNNs) have been significan...
Quantizing weights and activations of deep neural networks is essential for deploying them in resour...
One-bit quantization is a general tool to execute a complex model,such as deep neural networks, on a...
Binary Convolutional Neural Networks (CNNs) can significantly reduce the number of arithmetic operat...
Artificial Neural Networks (NNs) can effectively be used to solve many classification and regression...
Deep Learning is moving to edge devices, ushering in a new age of distributed Artificial Intelligenc...
Machine learning, and specifically Deep Neural Networks (DNNs) impact all parts of daily life. Altho...
Machine learning, and specifically Deep Neural Networks (DNNs) impact all parts of daily life. Altho...