نتایج جستجو برای: sparse topical coding

تعداد نتایج: 236626  

2014
Chenglong Bao Yuhui Quan Hui Ji

Recently, sparse coding has been widely used in many applications ranging from image recovery to pattern recognition. The low mutual coherence of a dictionary is an important property that ensures the optimality of the sparse code generated from this dictionary. Indeed, most existing dictionary learning methods for sparse coding either implicitly or explicitly tried to learn an incoherent dicti...

Journal: :CoRR 2013
Will Landecker Rick Chartrand Simon DeDeo

In compressed sensing, we wish to reconstruct a sparse signal x from observed data y. In sparse coding, on the other hand, we wish to find a representation of an observed signal y as a sparse linear combination, with coefficients x, of elements from an overcomplete dictionary. While many algorithms are competitive at both problems when x is very sparse, it can be challenging to recover x when i...

2015
Yunchao Zhang Jing Chen Xiujie Huang Yongtian Wang Rongrong Ji

Feature coding and pooling as a key component of image retrieval have been widely studied over the past several years. Recently sparse coding with max-pooling is regarded as the state-of-the-art for image classification. However there is no comprehensive study concerning the application of sparse coding for image retrieval. In this paper, we first analyze the effects of different sampling strat...

2017
Mohsen Nikpour Mohammad Reza Karami Molaei Reza Ghaderi

Sparse coding is an unsupervised method which learns a set of over-complete bases to represent data such as image, video and etc. In the cases where we have some similar images from the different classes, using the sparse coding method the images may be classified into the same class and devalue classification performance. In this paper, we propose an Affine Graph Regularized Sparse Coding appr...

2011
Sonia Bhaskar Will Zou

For our project, we apply the method of the alternating direction of multipliers and sequential convex optimization to sparse coding of images. The motivation behind sparse coding of images is to model how the brain is able to efficiently utilize the human visual system for a variety of tasks, such as separating a car from a background, as well as general classification tasks. Sparse coding aim...

2015
Ken Takiyama

Sensorimotor transformation is indispensable to the accurate motion of the human body in daily life. For instance, when we grasp an object, the distance from our hands to an object needs to be calculated by integrating multisensory inputs, and our motor system needs to appropriately activate the arm and hand muscles to minimize the distance. The sensorimotor transformation is implemented in our...

Journal: :Neural computation 2010
Laurent U. Perrinet

Neurons in the input layer of primary visual cortex in primates develop edge-like receptive fields. One approach to understanding the emergence of this response is to state that neural activity has to efficiently represent sensory data with respect to the statistics of natural scenes. Furthermore, it is believed that such an efficient coding is achieved using a competition across neurons so as ...

2017
Yingzhen Yang Jiahui Yu Pushmeet Kohli Jianchao Yang Thomas S. Huang

Sparse coding represents a signal by a linear combination of only a few atoms of a learned over-complete dictionary. While sparse coding exhibits compelling performance for various machine learning tasks, the process of obtaining sparse code with fixed dictionary is independent for each data point without considering the geometric information and manifold structure of the entire data. We propos...

Journal: :IEEE Transactions on Image Processing 2015

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