today's sensors are like eyes in the sky, thanks to the growth of satellite remotesensing technologies. Therefore, we see a steady evolution of the usage of different types of sensor, from airborne and satellites...
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ISBN:
(纸本)9781538652398
today's sensors are like eyes in the sky, thanks to the growth of satellite remotesensing technologies. Therefore, we see a steady evolution of the usage of different types of sensor, from airborne and satellites platforms which are generating large quantities of remotesensingimage for divers applications such as;smart city, disaster management, military intelligence and others. As a result, the rate of growth in the amount of data by satellite is increasing dramatically. The velocity has exceeded 1TB per day and it will certainly increase in the future. However, it becomes crucial for these huge volume data to be stored. So, how to store and manage it efficiently becomes a real challenge because traditional ways have intensive issues;they are expensive and difficult to extend. Therefore, we need some scalable and parallel models for remotesensing data storage and processing. In this paper, we describe a scalable and distributed architecture for massive remotesensing data storage based on three No SQL databases (Apache Cassandra, Apache HBase, MongoBD). Also, a Hadoop-based framework is proposed to manage the big remotesensing data in a distributed and parallel manner.
Plane is an important target category in remotesensing targets and it is of great value to detect the plane targets automatically. As remote imaging technology developing continuously, the resolution of the remote se...
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Plane is an important target category in remotesensing targets and it is of great value to detect the plane targets automatically. As remote imaging technology developing continuously, the resolution of the remotesensingimage has been very high and we can get more detailed information for detecting the remotesensing targets automatically. Deep learning network technology is the most advanced technology in image target detection and recognition, which provided great performance improvement in the field of target detection and recognition in the everyday scenes. We combined the technology with the application in the remotesensing target detection and proposed an algorithm with end to end deep network, which can learn from the remotesensingimages to detect the targets in the new images automatically and robustly. Our experiments shows that the algorithm can capture the feature information of the plane target and has better performance in target detection with the old methods.
One unique feature in the remotesensing problems is that a significant amount of data are available, from which desired information must be extracted. Transform methods offer effective procedures to derive the most s...
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ISBN:
(纸本)081944667X
One unique feature in the remotesensing problems is that a significant amount of data are available, from which desired information must be extracted. Transform methods offer effective procedures to derive the most significant information for further processing or human interpretation and to extract important features for pattern classificaiton. In this paper a survey of the use of major transforms in remotesensing is presented. These transforms have significant effects on pattern recognition as features derived from orthogonal or related transforms tend to be very effective for classification, and on data reduction and compression. After the introduction, we will examine the empirical orthogonal function, the discrete Karhunen-Loeve transform and related transforms, the wavelet transform, and the component analysis.
image registration is a fundamental and crucial step in remotesensingimage analysis. However, it is known that image registration method is application-based. The type and content of remotesensingimages affect the...
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ISBN:
(纸本)9780819497611
image registration is a fundamental and crucial step in remotesensingimage analysis. However, it is known that image registration method is application-based. The type and content of remotesensingimages affect the choice of image registration methods. Previous image registration task took experts to manually choose the image registration elements. This paper presents a self-adaptive image registration method which could automatically choose registration elements which are more appropriate for remotesensingimages under processing. The proposed method first chooses several local regions for the representation of the whole image, and then different registration elements are tested on these local regions. The local registration results are evaluated and the registration of the whole image is done with learned registration elements from local registrations. The registration chain is automatic;therefore it is a self-adaptive registration method. The proposed method is demonstrated on several real remotesensingimage pairs, and its feasibility and superiority are proved by the results.
Recently, deep learning methods have greatly enhanced the classification performance because of their strong representation ability in the local receptive field. However, the non-local spatial information always exist...
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ISBN:
(纸本)9781728112954
Recently, deep learning methods have greatly enhanced the classification performance because of their strong representation ability in the local receptive field. However, the non-local spatial information always exist in the images. Moreover, the limited amount of the labeled data imposes great challenges on the supervised representation learning model, especially the remotesensingimages. With the consideration, we propose a generative adversarial network with non-local spatial information (GAN-NL) for remotesensingimage classification. Specifically, a non-local layer is incorporated into a generative adversarial network for unsupervised representation learning. Then, a classification network is designed to infer the labels of the images. The classification results on the challenging NWPU-RESISC45 remotesensingimage dataset show that our proposed method performs favorably against the state-of-the-art methods in terms of the classification accuracy without any pre-training.
Multi-source remotesensingimage matching is crucial for remotesensing technology applications. However, the variations in factors such as grayscale, perspective, and sensors between multi-source images present cert...
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ISBN:
(数字)9798350350920
ISBN:
(纸本)9798350350920
Multi-source remotesensingimage matching is crucial for remotesensing technology applications. However, the variations in factors such as grayscale, perspective, and sensors between multi-source images present certain challenges for image matching. In response to the challenges in matching multi-source remotesensingimages, a matching method based on texture-enhanced region features is proposed. Initially, Gabor filters and the gray-level co-occurrence matrix (GLCM) are used to obtain the texture energy maps, followed by the extraction of maximally stable extremal regions (MSER) on the texture energy maps to acquire region features. Subsequently, the contour descriptors of the features are computed using Fourier descriptors. Finally, feature matching and refinement of the matching results are conducted in conjunction with the fast sample consensus (FSC). We conducted experimental region feature matching on multiple pairs of multi-source remotesensingimages, and the results validate the effectiveness of our method.
remotesensing and astronomical image formation is often complicated by deficiencies in measurement quality, density, or diversity. Penalized likelihood methods can incorporate additional first-principles physical pri...
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ISBN:
(纸本)9781457713033
remotesensing and astronomical image formation is often complicated by deficiencies in measurement quality, density, or diversity. Penalized likelihood methods can incorporate additional first-principles physical prior knowledge and improve the image reconstructions, but a systematic bias is unavoidable as a consequence. This work derives theory to understand the bias and develops a computational tool to probe its effect on the reconstructed image and bound resolution limits. Though the focus is on image formation, the contributions of this paper apply to any inference problem that can be expressed under the linear state-space signal model.
In this paper, we present a new approach to integrate Geographic information System and remotesensing. Its implementation environment is in Grouping Interpretation System (GrIS). GrIS was developed based on applicati...
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ISBN:
(纸本)0819455202
In this paper, we present a new approach to integrate Geographic information System and remotesensing. Its implementation environment is in Grouping Interpretation System (GrIS). GrIS was developed based on application task requirements, visual interpreting procedure and manner, and multi-technique integration. GrIS can operate in both single-computer mode and multi-coniputer mode with client/server structure in LAN and WAN environment. This system was designed to function within an integrated Geographic information System remotesensingprocessing and image interpretation function. Moreover, it allows the incorporation of raster format with vector format for image interpretation, automatic and semi-automatic interpretation mode respectively. The integration result of image interpretation into grouping interpretation system (GrIS) is demonstrated. The use of this integration technology and the relevant information from GIS leads to an enhanced information extraction and effective analysis in remotesensingimages.
remotesensingimage scene classification plays an important role in remotesensingimage retrieval, land-use identification and urban planning. Deep learning brings great opportunity to the research in this field, bu...
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ISBN:
(纸本)9781728136608
remotesensingimage scene classification plays an important role in remotesensingimage retrieval, land-use identification and urban planning. Deep learning brings great opportunity to the research in this field, but it transfers the difficulty of traditional characteristic engineering to the design of network structure. In this paper, we focus on the automatic design of the network model and propose a remotesensing scene classification method based on Neural Architecture Search Network (NASNet). We further use the transfer learning technology to make the designed network well migrated to the remotesensing scene classification data set. This method can automatically build the appropriate network structure according to the application. We compare the proposed method on a publicly large-scale dataset with several convolutional neural network (CNN) models. The experimental results demonstrate that the proposed method provides state-of-the-art performance compared with the traditional artificial neural network.
Land cover is a material present in the earth surface. It consists of forest, farming land, fertile, infertile lands, desert, water bodies and agricultural areas etc., The basic need for capturing the information of t...
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ISBN:
(纸本)9781665428644
Land cover is a material present in the earth surface. It consists of forest, farming land, fertile, infertile lands, desert, water bodies and agricultural areas etc., The basic need for capturing the information of the land cover is to classify the land resources according to their soil, water, climatic condition and to utilize it in the proper manner. Land use gives the knowledge about the uses and the benefits of the land used for man like mining, industrial and cultivation land. The aim of this article is to perform a detailed review of image-based land cover classification with respect to remotesensing applications.
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