118 research outputs found
Designing A Composite Dictionary Adaptively From Joint Examples
We study the complementary behaviors of external and internal examples in
image restoration, and are motivated to formulate a composite dictionary design
framework. The composite dictionary consists of the global part learned from
external examples, and the sample-specific part learned from internal examples.
The dictionary atoms in both parts are further adaptively weighted to emphasize
their model statistics. Experiments demonstrate that the joint utilization of
external and internal examples leads to substantial improvements, with
successful applications in image denoising and super resolution
Self-Tuned Deep Super Resolution
Deep learning has been successfully applied to image super resolution (SR).
In this paper, we propose a deep joint super resolution (DJSR) model to exploit
both external and self similarities for SR. A Stacked Denoising Convolutional
Auto Encoder (SDCAE) is first pre-trained on external examples with proper data
augmentations. It is then fine-tuned with multi-scale self examples from each
input, where the reliability of self examples is explicitly taken into account.
We also enhance the model performance by sub-model training and selection. The
DJSR model is extensively evaluated and compared with state-of-the-arts, and
show noticeable performance improvements both quantitatively and perceptually
on a wide range of images
Similarity modeling for machine learning
Similarity is the extent to which two objects resemble each other. Modeling similarity is an important topic for both machine learning and computer vision. In this dissertation, we first propose a discriminative similarity learning method, then introduce two novel sparse similarity modeling methods for high dimensional data from the perspective of manifold learning and subspace learning. Our sparse similarity modeling methods learn sparse similarity and consequently generate a sparse graph over the data. The generated sparse graph leads to superior performance in clustering and semi-supervised learning, compared to existing sparse graph based methods such as -graph and Sparse Subspace Clustering (SSC).
More concretely, our discriminative similarity learning method adopts a novel pairwise clustering framework by bridging the gap between clustering and multi-class classification. This pairwise clustering framework learns an unsupervised nonparametric classifier from each data partition, and searches for the optimal partition of the data by minimizing the generalization error of the learned classifiers associated with the data partitions.
Regarding to our sparse similarity modeling methods, we propose a novel regularized -graph (--graph) to improve -graph from the perspective of manifold learning. Our --graph generates a sparse graph that is aligned to the manifold structure of the data for better clustering performance. From the perspective of learning the subspace structures of the high dimensional data, we propose -graph that generates a subspace-consistent sparse graph for clustering and semi-supervised learning. Subspace-consistent sparse graph is a sparse graph where a data point is only connected to other data that lie in the same subspace, and the representative method Sparse Subspace Clustering (SSC) proves to generate subspace-consistent sparse graph under certain assumptions on the subspaces and the data, e.g. independent/disjoint subspaces and subspace incoherence/affinity. In contrast, our -graph can generate subspace-consistent sparse graph for arbitrary distinct underlying subspaces under far less restrictive assumptions, i.e. only i.i.d. random data generation according to arbitrary continuous distribution. Extensive experimental results on various data sets demonstrate the superiority of -graph compared to other methods including SSC for both clustering and semi-supervised learning.
The proposed sparse similarity modeling methods require sparse coding using the entire data as the dictionary, which can be inefficient especially in case of large-scale data. In order to overcome this challenge, we propose Support Regularized Sparse Coding (SRSC) where a compact dictionary is learned. The data similarity induced by the support regularized sparse codes leads to compelling clustering performance. Moreover, a feed-forward neural network, termed Deep-SRSC, is designed as a fast encoder to approximate the codes generated by SRSC, further improving the efficiency of SRSC
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