Deep neural networks with millions of parameters are at the heart of many state of the art computer vision models. However, recent works have shown that models with much smaller number of parameters can often perform just as well. A smaller model has the advantage of being faster to evaluate and easier to store - both of which are crucial for real-time and embedded applications. While prior work on compressing neural networks have looked at methods based on sparsity, quantization and factorization of neural network layers, we look at the alternate approach of pruning neurons. Training Neural Networks is often described as a kind of `black magic', as successful training requires setting the right hyper-parameter values (such as the number of...
In recent years, deep learning models have become popular in the real-time embedded application, but...
Learning-based approaches have recently become popular for various computer vision tasks such as fac...
The performance of an Artificial Neural Network (ANN) strongly depends on its hidden layer architect...
Deep neural networks (DNNs) are successful in many computer vision tasks. However, the most accurate...
Deep neural nets with a large number of parameters are very powerful machine learning systems. Howev...
Over the past few years, deep neural networks have been at the center of attention in machine learn...
With the recent development in the Deep Learning area, computationally heavy tasks like object detec...
The success of convolutional neural networks (CNNs) in various applications is accompanied by a sign...
The lifecycle of a deep learning application consists of five phases: Data collection, Architecture ...
Deep neural networks have demonstrated outstanding performance in various fields of machine learning...
Deep neural network models are commonly used in various real-life applications due to their high pre...
Network pruning is an important research field aiming at reducing computational costs of neural netw...
The undeniable computational power of artificial neural networks has granted the scientific communit...
Over the past couple decades, we have witnessed a huge explosion in data generation from almost ever...
The increasing size of recently proposed Neural Networks makes it hard to implement them on embedded...
In recent years, deep learning models have become popular in the real-time embedded application, but...
Learning-based approaches have recently become popular for various computer vision tasks such as fac...
The performance of an Artificial Neural Network (ANN) strongly depends on its hidden layer architect...
Deep neural networks (DNNs) are successful in many computer vision tasks. However, the most accurate...
Deep neural nets with a large number of parameters are very powerful machine learning systems. Howev...
Over the past few years, deep neural networks have been at the center of attention in machine learn...
With the recent development in the Deep Learning area, computationally heavy tasks like object detec...
The success of convolutional neural networks (CNNs) in various applications is accompanied by a sign...
The lifecycle of a deep learning application consists of five phases: Data collection, Architecture ...
Deep neural networks have demonstrated outstanding performance in various fields of machine learning...
Deep neural network models are commonly used in various real-life applications due to their high pre...
Network pruning is an important research field aiming at reducing computational costs of neural netw...
The undeniable computational power of artificial neural networks has granted the scientific communit...
Over the past couple decades, we have witnessed a huge explosion in data generation from almost ever...
The increasing size of recently proposed Neural Networks makes it hard to implement them on embedded...
In recent years, deep learning models have become popular in the real-time embedded application, but...
Learning-based approaches have recently become popular for various computer vision tasks such as fac...
The performance of an Artificial Neural Network (ANN) strongly depends on its hidden layer architect...