Deep autoencoder neural networks have been widely used in several image classification and recognition problems, including hand-writing recognition, medical imaging, and face recognition. The overall performance of deep autoencoder neural networks mainly depends on the number of parameters used, structure of neural networks, and the compatibility of the transfer functions. However, an inappropriate structure design can cause a reduction in the performance of deep autoencoder neural networks. A novel framework, which primarily integrates the Taguchi Method to a deep autoencoder based system without considering to modify the overall structure of the network, is presented. Several experiments are performed using various data sets from differen...
Significant strides have been made in computer vision over the past few years due to the recent deve...
The autoencoder algorithm and its deep version as traditional dimensionality reduction methods have ...
Deep Learning methods are currently the state-of-the-art in many Computer Vision and Image Processin...
Deep autoencoder neural networks have been widely used in several image classification and recogniti...
This thesis proposes novel techniques in building a generic framework for both the regression and cl...
This paper proposes new nonnegative (shallow and multi-layer) autoencoders by combining the spiking ...
Deep learning uses artificial neural networks to recognize patterns and learn from them to make deci...
Deep learning (DL) is playing an increasingly important role in our lives. It has already made a hug...
Designing large deep learning neural networks by hand requires tuning large sets of method paramete...
To aggregate diverse learners and to train deep architectures are the two principal avenues towards ...
Based on a special type of denoising autoencoder (DAE) and image reconstruction, we present a novel ...
In the past few years, deep learning has become a very important research field that has attracted a...
This paper proposes a novel data classification framework, combining sparse auto-encoders (SAEs) and...
Since the proposal of a fast learning algorithm for deep belief networks in 2006, the deep learning ...
The paper demonstrates the advantages of the deep learning networks over the ordinary neural network...
Significant strides have been made in computer vision over the past few years due to the recent deve...
The autoencoder algorithm and its deep version as traditional dimensionality reduction methods have ...
Deep Learning methods are currently the state-of-the-art in many Computer Vision and Image Processin...
Deep autoencoder neural networks have been widely used in several image classification and recogniti...
This thesis proposes novel techniques in building a generic framework for both the regression and cl...
This paper proposes new nonnegative (shallow and multi-layer) autoencoders by combining the spiking ...
Deep learning uses artificial neural networks to recognize patterns and learn from them to make deci...
Deep learning (DL) is playing an increasingly important role in our lives. It has already made a hug...
Designing large deep learning neural networks by hand requires tuning large sets of method paramete...
To aggregate diverse learners and to train deep architectures are the two principal avenues towards ...
Based on a special type of denoising autoencoder (DAE) and image reconstruction, we present a novel ...
In the past few years, deep learning has become a very important research field that has attracted a...
This paper proposes a novel data classification framework, combining sparse auto-encoders (SAEs) and...
Since the proposal of a fast learning algorithm for deep belief networks in 2006, the deep learning ...
The paper demonstrates the advantages of the deep learning networks over the ordinary neural network...
Significant strides have been made in computer vision over the past few years due to the recent deve...
The autoencoder algorithm and its deep version as traditional dimensionality reduction methods have ...
Deep Learning methods are currently the state-of-the-art in many Computer Vision and Image Processin...