229 research outputs found
A REVIEW ON MULTIPLE-FEATURE-BASED ADAPTIVE SPARSE REPRESENTATION (MFASR) AND OTHER CLASSIFICATION TYPES
A new technique Multiple-feature-based adaptive sparse representation (MFASR) has been demonstrated for Hyperspectral Images (HSI's) classification. This method involves mainly in four steps at the various stages. The spectral and spatial information reflected from the original Hyperspectral Images with four various features. A shape adaptive (SA) spatial region is obtained in each pixel region at the second step. The algorithm namely sparse representation has applied to get the coefficients of sparse for each shape adaptive region in the form of matrix with multiple features. For each test pixel, the class label is determined with the help of obtained coefficients. The performances of MFASR have much better classification results than other classifiers in the terms of quantitative and qualitative percentage of results. This MFASR will make benefit of strong correlations that are obtained from different extracted features and this make use of effective features and effective adaptive sparse representation. Thus, the very high classification performance was achieved through this MFASR technique
Superpixel based feature specific sparse representation for spectral-spatial classification of hyperspectral images.
To improve the performance of the sparse representation classification (SRC), we propose a superpixel-based feature specific sparse representation framework (SPFS-SRC) for spectral-spatial classification of hyperspectral images (HSI) at superpixel level. First, the HSI is divided into different spatial regions, each region is shape- and size-adapted and considered as a superpixel. For each superpixel, it contains a number of pixels with similar spectral characteristic. Since the utilization of multiple features in HSI classification has been proved to be an effective strategy, we have generated both spatial and spectral features for each superpixel. By assuming that all the pixels in a superpixel belongs to one certain class, a kernel SRC is introduced to the classification of HSI. In the SRC framework, we have employed a metric learning strategy to exploit the commonalities of different features. Experimental results on two popular HSI datasets have demonstrated the efficacy of our proposed methodology
Coupled Convolutional Neural Network with Adaptive Response Function Learning for Unsupervised Hyperspectral Super-Resolution
Due to the limitations of hyperspectral imaging systems, hyperspectral
imagery (HSI) often suffers from poor spatial resolution, thus hampering many
applications of the imagery. Hyperspectral super-resolution refers to fusing
HSI and MSI to generate an image with both high spatial and high spectral
resolutions. Recently, several new methods have been proposed to solve this
fusion problem, and most of these methods assume that the prior information of
the Point Spread Function (PSF) and Spectral Response Function (SRF) are known.
However, in practice, this information is often limited or unavailable. In this
work, an unsupervised deep learning-based fusion method - HyCoNet - that can
solve the problems in HSI-MSI fusion without the prior PSF and SRF information
is proposed. HyCoNet consists of three coupled autoencoder nets in which the
HSI and MSI are unmixed into endmembers and abundances based on the linear
unmixing model. Two special convolutional layers are designed to act as a
bridge that coordinates with the three autoencoder nets, and the PSF and SRF
parameters are learned adaptively in the two convolution layers during the
training process. Furthermore, driven by the joint loss function, the proposed
method is straightforward and easily implemented in an end-to-end training
manner. The experiments performed in the study demonstrate that the proposed
method performs well and produces robust results for different datasets and
arbitrary PSFs and SRFs
X-ModalNet: A Semi-Supervised Deep Cross-Modal Network for Classification of Remote Sensing Data
This paper addresses the problem of semi-supervised transfer learning with
limited cross-modality data in remote sensing. A large amount of multi-modal
earth observation images, such as multispectral imagery (MSI) or synthetic
aperture radar (SAR) data, are openly available on a global scale, enabling
parsing global urban scenes through remote sensing imagery. However, their
ability in identifying materials (pixel-wise classification) remains limited,
due to the noisy collection environment and poor discriminative information as
well as limited number of well-annotated training images. To this end, we
propose a novel cross-modal deep-learning framework, called X-ModalNet, with
three well-designed modules: self-adversarial module, interactive learning
module, and label propagation module, by learning to transfer more
discriminative information from a small-scale hyperspectral image (HSI) into
the classification task using a large-scale MSI or SAR data. Significantly,
X-ModalNet generalizes well, owing to propagating labels on an updatable graph
constructed by high-level features on the top of the network, yielding
semi-supervised cross-modality learning. We evaluate X-ModalNet on two
multi-modal remote sensing datasets (HSI-MSI and HSI-SAR) and achieve a
significant improvement in comparison with several state-of-the-art methods
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