Feature learning is a technique to automatically extract features from raw data. It is widely used in areas such as computer vision, image processing, data mining and natural language processing. In this thesis, we are interested in the computational aspects of feature learning. We focus on rank matrix and tensor factorization and deep neural network models for image denoising. With respect to matrix and tensor factorization, we first present a technique to speed up alternating least squares (ALS) and gradient descent (GD) - two commonly used strategies for tensor factorization. We introduce an efficient, scalable and distributed algorithm that addresses the data explosion problem. Instead of a computationally challenging sub-step of ALS an...
Image denoising and classification are typically conducted separately and sequentially according to ...
This thesis focuses on some fundamental problems in machine learning that are posed as nonconvex mat...
Deep neural networks have shown great potential in various low-level vision tasks, leading to severa...
Feature learning is a technique to automatically extract features from raw data. It is widely used i...
145 pagesPropelled by large datasets and parallel compute accelerators, deep neural networks have re...
© 2014 IEEE. As compared to the conventional RGB or gray-scale images, multispectral images (MSI) ca...
Multi-dimensional images, such as color images and multi-spectral images (MSIs), are highly correlat...
In this study, the problem of computing a sparse representation of multi-dimensional visual data is ...
International audienceDictionary learning, paired with sparse coding, aims at providing sparse data ...
In this paper, we present tensor-based linear and nonlinear models for hyperspectral data classifica...
With the booming of big data and multi-sensor technology, multi-dimensional data, known as tensors, ...
Hyperspectral imagery (HSI) denoising is an important preprocessing step for real-world applications...
Summarization: In this paper, we present a general tensor-based nonlinear classifier, the Rank-R Fee...
We introduce deep tensor networks, which are exponentially wide neural networks based on the tensor ...
Inverse problems have been widely studied in image processing, with applications in areas such as im...
Image denoising and classification are typically conducted separately and sequentially according to ...
This thesis focuses on some fundamental problems in machine learning that are posed as nonconvex mat...
Deep neural networks have shown great potential in various low-level vision tasks, leading to severa...
Feature learning is a technique to automatically extract features from raw data. It is widely used i...
145 pagesPropelled by large datasets and parallel compute accelerators, deep neural networks have re...
© 2014 IEEE. As compared to the conventional RGB or gray-scale images, multispectral images (MSI) ca...
Multi-dimensional images, such as color images and multi-spectral images (MSIs), are highly correlat...
In this study, the problem of computing a sparse representation of multi-dimensional visual data is ...
International audienceDictionary learning, paired with sparse coding, aims at providing sparse data ...
In this paper, we present tensor-based linear and nonlinear models for hyperspectral data classifica...
With the booming of big data and multi-sensor technology, multi-dimensional data, known as tensors, ...
Hyperspectral imagery (HSI) denoising is an important preprocessing step for real-world applications...
Summarization: In this paper, we present a general tensor-based nonlinear classifier, the Rank-R Fee...
We introduce deep tensor networks, which are exponentially wide neural networks based on the tensor ...
Inverse problems have been widely studied in image processing, with applications in areas such as im...
Image denoising and classification are typically conducted separately and sequentially according to ...
This thesis focuses on some fundamental problems in machine learning that are posed as nonconvex mat...
Deep neural networks have shown great potential in various low-level vision tasks, leading to severa...