Much work has been done refining and characterizing the receptive fields learned by deep learning algorithms. A lot of this work has focused on the development of Gabor-like filters learned when enforcing sparsity constraints on a natural image dataset. Little work however has investigated how these filters might expand to the temporal domain, namely through training on natural movies. Here we investigate exactly this problem in established temporal deep learning algorithms as well as a new learning paradigm suggested here, the Temporal Autoencoding Restricted Boltzmann Machine (TARBM).
In this thesis, we present a probabilistic generative approach for learning hierarchical structures ...
The Recurrent Temporal Restricted Boltzmann Machine is a promising probabilistic model for processin...
The dynamic Boltzmann machine (DyBM) has been proposed as a stochastic generative model of multi-dim...
The Temporal Restricted Boltzmann Machine (TRBM) is a probabilistic model for sequences that is able...
AbstractIn their natural environment, animals experience a complex and dynamic visual scenery. Under...
We explore the training and usage of the Restricted Boltzmann Machine for unsupervised feature extra...
We present a novel hierarchical and distributed model for learning invariant spatio-temporal feature...
We present a novel hierarchical, distributed model for unsupervised learning of invariant spatio-tem...
We pursue an early stopping technique that helps Gaussian Restricted Boltzmann Machines (GRBMs) to g...
In recent years, sparse restricted Boltzmann machines have gained popularity as unsupervised feature...
Deep Learning, a sub-area of machine learning, has become a buzz word in recent days due to its\ud g...
In this paper we present a method for learning class-specific features for recognition. Recently a g...
For the classification of sequential data, dynamic Bayesian networks and recurrent neural networks (...
In this paper a novel framework capable of both accurate predictions and classifications of dynamic ...
In this paper a novel framework capable of both accurate predictions and classifications of dynamic ...
In this thesis, we present a probabilistic generative approach for learning hierarchical structures ...
The Recurrent Temporal Restricted Boltzmann Machine is a promising probabilistic model for processin...
The dynamic Boltzmann machine (DyBM) has been proposed as a stochastic generative model of multi-dim...
The Temporal Restricted Boltzmann Machine (TRBM) is a probabilistic model for sequences that is able...
AbstractIn their natural environment, animals experience a complex and dynamic visual scenery. Under...
We explore the training and usage of the Restricted Boltzmann Machine for unsupervised feature extra...
We present a novel hierarchical and distributed model for learning invariant spatio-temporal feature...
We present a novel hierarchical, distributed model for unsupervised learning of invariant spatio-tem...
We pursue an early stopping technique that helps Gaussian Restricted Boltzmann Machines (GRBMs) to g...
In recent years, sparse restricted Boltzmann machines have gained popularity as unsupervised feature...
Deep Learning, a sub-area of machine learning, has become a buzz word in recent days due to its\ud g...
In this paper we present a method for learning class-specific features for recognition. Recently a g...
For the classification of sequential data, dynamic Bayesian networks and recurrent neural networks (...
In this paper a novel framework capable of both accurate predictions and classifications of dynamic ...
In this paper a novel framework capable of both accurate predictions and classifications of dynamic ...
In this thesis, we present a probabilistic generative approach for learning hierarchical structures ...
The Recurrent Temporal Restricted Boltzmann Machine is a promising probabilistic model for processin...
The dynamic Boltzmann machine (DyBM) has been proposed as a stochastic generative model of multi-dim...