Classical and modern face recognition approaches: a complete review
Human face recognition have been an active research area for the last few decades.
Especially, during the last five years, it has gained significant research attention from …
Especially, during the last five years, it has gained significant research attention from …
A survey on representation-based classification and detection in hyperspectral remote sensing imagery
This paper reviews the state-of-the-art representation-based classification and detection
approaches for hyperspectral remote sensing imagery, including sparse representation …
approaches for hyperspectral remote sensing imagery, including sparse representation …
Generalized uncorrelated regression with adaptive graph for unsupervised feature selection
Unsupervised feature selection always occupies a key position as a preprocessing in the
tasks of classification or clustering due to the existence of extra essential features within high …
tasks of classification or clustering due to the existence of extra essential features within high …
Two-stage plant species recognition by local mean clustering and Weighted sparse representation classification
S Zhang, H Wang, W Huang - Cluster computing, 2017 - Springer
Aiming at the difficult problem of plant leaf recognition on the large-scale database, a two-
stage local similarity based classification learning (LSCL) method is proposed by combining …
stage local similarity based classification learning (LSCL) method is proposed by combining …
Convex non-negative matrix factorization with adaptive graph for unsupervised feature selection
Unsupervised feature selection (UFS) aims to remove the redundant information and select
the most representative feature subset from the original data, so it occupies a core position …
the most representative feature subset from the original data, so it occupies a core position …
Discriminative block-diagonal representation learning for image recognition
Existing block-diagonal representation studies mainly focuses on casting block-diagonal
regularization on training data, while only little attention is dedicated to concurrently learning …
regularization on training data, while only little attention is dedicated to concurrently learning …
Sequence-based prediction of protein-protein interactions using weighted sparse representation model combined with global encoding
Background Proteins are the important molecules which participate in virtually every aspect
of cellular function within an organism in pairs. Although high-throughput technologies have …
of cellular function within an organism in pairs. Although high-throughput technologies have …
Prior knowledge-based probabilistic collaborative representation for visual recognition
Collaborative representation is an effective way to design classifiers for many practical
applications. In this paper, we propose a novel classifier, called the prior knowledge-based …
applications. In this paper, we propose a novel classifier, called the prior knowledge-based …
Enhanced group sparse regularized nonconvex regression for face recognition
Regression analysis based methods have shown strong robustness and achieved great
success in face recognition. In these methods, convex-norm and nuclear norm are usually …
success in face recognition. In these methods, convex-norm and nuclear norm are usually …
Using Weighted Sparse Representation Model Combined with Discrete Cosine Transformation to Predict Protein‐Protein Interactions from Protein Sequence
Increasing demand for the knowledge about protein‐protein interactions (PPIs) is promoting
the development of methods for predicting protein interaction network. Although high …
the development of methods for predicting protein interaction network. Although high …