With the widely application of high-resolution remote sensing images, its classification has attracted a lot of attention. Most classification methods focus on various combination of features and ignore the similarities between different categories. In this paper we present a modification by combining ScSPM [1] with a dictionary learning method DL-COPAR [2], which separates the particularity and commonality atoms of class-specific sub-dictionaries. With this over-complete dictionary, the sparse representation of a query image can be specified to capture salient and unique properties. Experimental results on two remote sensing datasets show that, this modification achieves state-of-the-art classification accuracy, when merely SIFT feature is...
We present a new approach based on Discriminant Analysis to map a high dimensional image feature spa...
We present a new approach based on Discriminant Analysis to map a high dimensional image feature spa...
In this paper, we propose an Active Learning approach to query by example retrieval, using a retrain...
With deep learning-based methods growing (even with scarce data in some fields), few-shot remote sen...
This contribution studies an approach based on dictionary learning which enables the alignment of th...
Abstract—Remote sensing image fusion can integrate the spatial detail of panchromatic (PAN) image an...
In an effort to detect the region-of-interest (ROI) of remote sensing images with complex data distr...
In this paper, a novel discriminative dictionary learning method is proposed for Sparse Representati...
The problem of classification is shared across various disciplines. Designing even less computation...
In this dissertation, we study sparse coding based feature representation method for the classificat...
A super-resolution method based on sparse representation and classified texture patches was proposed...
In this paper, we consider the problem of remote sensing image classification, in which feature extr...
This paper addresses the recent trends in machine learning methods for the automatic classification ...
Classification of broad area features in satellite imagery is one of the most important applications...
Sparse representation based fusion of optical satellite images that have different spectral and spat...
We present a new approach based on Discriminant Analysis to map a high dimensional image feature spa...
We present a new approach based on Discriminant Analysis to map a high dimensional image feature spa...
In this paper, we propose an Active Learning approach to query by example retrieval, using a retrain...
With deep learning-based methods growing (even with scarce data in some fields), few-shot remote sen...
This contribution studies an approach based on dictionary learning which enables the alignment of th...
Abstract—Remote sensing image fusion can integrate the spatial detail of panchromatic (PAN) image an...
In an effort to detect the region-of-interest (ROI) of remote sensing images with complex data distr...
In this paper, a novel discriminative dictionary learning method is proposed for Sparse Representati...
The problem of classification is shared across various disciplines. Designing even less computation...
In this dissertation, we study sparse coding based feature representation method for the classificat...
A super-resolution method based on sparse representation and classified texture patches was proposed...
In this paper, we consider the problem of remote sensing image classification, in which feature extr...
This paper addresses the recent trends in machine learning methods for the automatic classification ...
Classification of broad area features in satellite imagery is one of the most important applications...
Sparse representation based fusion of optical satellite images that have different spectral and spat...
We present a new approach based on Discriminant Analysis to map a high dimensional image feature spa...
We present a new approach based on Discriminant Analysis to map a high dimensional image feature spa...
In this paper, we propose an Active Learning approach to query by example retrieval, using a retrain...