Quantization has shown stunning efficiency on deep neural network, especially for portable devices with limited resources. Most existing works uncritically extend weight quantization methods to activations. However, we take the view that best performance can be obtained by applying different quantization methods to weights and activations respectively. In this paper, we design a new activation function dubbed CReLU from the quantization perspective and further complement this design with appropriate initialization method and training procedure. Moreover, we develop a specific quantization strategy in which we formulate the forward and backward approximation of weights with binary values and quantize the activations to low bitwdth using line...
© 2017 IEEE. This work targets the automated minimum-energy optimization of Quantized Neural Network...
The severe on-chip memory limitations are currently preventing the deployment of the most accurate D...
Convolutional Neural Networks (CNN) have become a popular solution for computer vision problems. How...
The increase in sophistication of neural network models in recent years has exponentially expanded m...
Quantization of deep neural networks is a common way to optimize the networks for deployment on ener...
To deploy deep neural networks on resource-limited devices, quantization has been widely explored. I...
Quantized neural networks (QNNs), which use low bitwidth numbers for representing parameters and per...
Quantization plays an important role in deep neural network (DNN) hardware. In particular, logarithm...
Network quantization is an effective solution to compress deep neural networks for practical usage. ...
Neural networks have demonstrably achieved state-of-the art accuracy using low-bitlength integer qua...
Quantization of deep neural networks is extremely essential for efficient implementations. Low-preci...
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...
Recent years have witnessed intensive research interests on training deep neural networks (DNNs) mor...
This paper presents a deep learning approach which evaluates accuracy and inference time speedups in...
© 2017 IEEE. This work targets the automated minimum-energy optimization of Quantized Neural Network...
The severe on-chip memory limitations are currently preventing the deployment of the most accurate D...
Convolutional Neural Networks (CNN) have become a popular solution for computer vision problems. How...
The increase in sophistication of neural network models in recent years has exponentially expanded m...
Quantization of deep neural networks is a common way to optimize the networks for deployment on ener...
To deploy deep neural networks on resource-limited devices, quantization has been widely explored. I...
Quantized neural networks (QNNs), which use low bitwidth numbers for representing parameters and per...
Quantization plays an important role in deep neural network (DNN) hardware. In particular, logarithm...
Network quantization is an effective solution to compress deep neural networks for practical usage. ...
Neural networks have demonstrably achieved state-of-the art accuracy using low-bitlength integer qua...
Quantization of deep neural networks is extremely essential for efficient implementations. Low-preci...
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...
Recent years have witnessed intensive research interests on training deep neural networks (DNNs) mor...
This paper presents a deep learning approach which evaluates accuracy and inference time speedups in...
© 2017 IEEE. This work targets the automated minimum-energy optimization of Quantized Neural Network...
The severe on-chip memory limitations are currently preventing the deployment of the most accurate D...
Convolutional Neural Networks (CNN) have become a popular solution for computer vision problems. How...