Title :
Denoising predictive sparse decomposition
Author :
Long Qian ; Xingjian Shi
Author_Institution :
Shanghai Key Lab. of Scalable Comput. & Syst., Shanghai Jiao Tong Univ., Shanghai, China
Abstract :
Recent years have witnessed the great success of sparse coding in many areas, including data mining, machine learning, and computer vision. Sparse coding provides a class of unsupervised algorithms for learning a set of over-complete basis functions, allowing to reconstruct the original signal by linearly combining a small subset of the bases. A shortcoming of most existing sparse coding algorithms is that they need to do some sort of iterative minimization to inference the sparse representations for test points, which means that it´s not convenient for these algorithms to perform out-of-sample extension. By additionally training a non-linear regressor that maps input to sparse representation during the training procedure, predictive sparse decomposition (PSD) can naturally be used for out-of-sample extension. Hence, PSD has recently become one of the most famous learning algorithms for sparse coding. However, when the training set is not large enough to capture the variations of the sample, PSD may not achieve satisfactory performance in real applications. In this paper, we propose a novel model, called denoising PSD (DPSD), for robust sparse coding. Experiments on real visual object recognition tasks show that DPSD can dramatically outperform PSD in real applications.
Keywords :
image coding; image denoising; image reconstruction; image representation; iterative methods; minimisation; object recognition; regression analysis; unsupervised learning; DPSD; computer vision; data mining; denoising predictive sparse decomposition; iterative minimization; machine learning; nonlinear regressor; object recognition; out-of-sample extension; over-complete basis functions; signal reconstruction; sparse coding algorithm; sparse representations; test points; unsupervised learning algorithms; Encoding; Gaussian noise; Noise reduction; Prediction algorithms; Signal to noise ratio; Training; Sparse coding; denoising; object recognition; predictive sparse decomposition;
Conference_Titel :
Big Data and Smart Computing (BIGCOMP), 2014 International Conference on
Conference_Location :
Bangkok
DOI :
10.1109/BIGCOMP.2014.6741440