Deep learning methods have exhibited the great capacity to process object detection tasks, offering a practical and viable approach in many applications. When researchers have advanced deep learning models to improve their performance, the model derived from the algorithmic improvement may itself require complementary increases in computational and power demands. Recently, model compression and pruning techniques have received more attention to promote the wide employment of the DNN model. Although these techniques have achieved a remarkable performance, the class imbalance issue during the mode compression process does not vanish. This paper exploits the Autonomous Binarized Focal Loss Enhanced Model Compression (ABFLMC) model to address t...
In the paper, the possibility of combining deep neural network (DNN) model compression methods to ac...
Deep neural networks (DNNs) have become the primary methods to solve machine learning and artificial...
Deploying neural network models to edge devices is becoming increasingly popular because such deploy...
In order to solve the problem of large model computing power consumption, this paper proposes a nove...
Deep neural networks have demonstrated outstanding performance in various fields of machine learning...
Deep learning has been found to be an effective solution to many problems in the field of computer ...
The design of 3D object detection schemes that use point clouds as input in automotive applications ...
In recent years, the deep neural networks have gained more and more attention with the rapid develop...
Abstract—Many real world computer vision applications are required to run on hardware with limited c...
Model compression is very important for the efficient deployment of deep neural network (DNN) models...
Compression technologies for deep neural networks (DNNs), such as weight quantization, have been wid...
Deep neural networks have delivered remarkable performance and have been widely used in various visu...
Parallel hardware accelerators, for example Graphics Processor Units, have limited on-chip memory ca...
The success of overparameterized deep neural networks (DNNs) poses a great challenge to deploy compu...
Neural networks have been notorious for being computational expensive. Their demand for hardware res...
In the paper, the possibility of combining deep neural network (DNN) model compression methods to ac...
Deep neural networks (DNNs) have become the primary methods to solve machine learning and artificial...
Deploying neural network models to edge devices is becoming increasingly popular because such deploy...
In order to solve the problem of large model computing power consumption, this paper proposes a nove...
Deep neural networks have demonstrated outstanding performance in various fields of machine learning...
Deep learning has been found to be an effective solution to many problems in the field of computer ...
The design of 3D object detection schemes that use point clouds as input in automotive applications ...
In recent years, the deep neural networks have gained more and more attention with the rapid develop...
Abstract—Many real world computer vision applications are required to run on hardware with limited c...
Model compression is very important for the efficient deployment of deep neural network (DNN) models...
Compression technologies for deep neural networks (DNNs), such as weight quantization, have been wid...
Deep neural networks have delivered remarkable performance and have been widely used in various visu...
Parallel hardware accelerators, for example Graphics Processor Units, have limited on-chip memory ca...
The success of overparameterized deep neural networks (DNNs) poses a great challenge to deploy compu...
Neural networks have been notorious for being computational expensive. Their demand for hardware res...
In the paper, the possibility of combining deep neural network (DNN) model compression methods to ac...
Deep neural networks (DNNs) have become the primary methods to solve machine learning and artificial...
Deploying neural network models to edge devices is becoming increasingly popular because such deploy...