2,472 research outputs found
CLiSA: A Hierarchical Hybrid Transformer Model using Orthogonal Cross Attention for Satellite Image Cloud Segmentation
Clouds in optical satellite images are a major concern since their presence
hinders the ability to carry accurate analysis as well as processing. Presence
of clouds also affects the image tasking schedule and results in wastage of
valuable storage space on ground as well as space-based systems. Due to these
reasons, deriving accurate cloud masks from optical remote-sensing images is an
important task. Traditional methods such as threshold-based, spatial filtering
for cloud detection in satellite images suffer from lack of accuracy. In recent
years, deep learning algorithms have emerged as a promising approach to solve
image segmentation problems as it allows pixel-level classification and
semantic-level segmentation. In this paper, we introduce a deep-learning model
based on hybrid transformer architecture for effective cloud mask generation
named CLiSA - Cloud segmentation via Lipschitz Stable Attention network. In
this context, we propose an concept of orthogonal self-attention combined with
hierarchical cross attention model, and we validate its Lipschitz stability
theoretically and empirically. We design the whole setup under adversarial
setting in presence of Lov\'asz-Softmax loss. We demonstrate both qualitative
and quantitative outcomes for multiple satellite image datasets including
Landsat-8, Sentinel-2, and Cartosat-2s. Performing comparative study we show
that our model performs preferably against other state-of-the-art methods and
also provides better generalization in precise cloud extraction from satellite
multi-spectral (MX) images. We also showcase different ablation studies to
endorse our choices corresponding to different architectural elements and
objective functions.Comment: 14 pages, 11 figures, 7 table
SIRAN: Sinkhorn Distance Regularized Adversarial Network for DEM Super-resolution using Discriminative Spatial Self-attention
Digital Elevation Model (DEM) is an essential aspect in the remote sensing
domain to analyze and explore different applications related to surface
elevation information. In this study, we intend to address the generation of
high-resolution DEMs using high-resolution multi-spectral (MX) satellite
imagery by incorporating adversarial learning. To promptly regulate this
process, we utilize the notion of polarized self-attention of discriminator
spatial maps as well as introduce a Densely connected Multi-Residual Block
(DMRB) module to assist in efficient gradient flow. Further, we present an
objective function related to optimizing Sinkhorn distance with traditional GAN
to improve the stability of adversarial learning. In this regard, we provide
both theoretical and empirical substantiation of better performance in terms of
vanishing gradient issues and numerical convergence. We demonstrate both
qualitative and quantitative outcomes with available state-of-the-art methods.
Based on our experiments on DEM datasets of Shuttle Radar Topographic Mission
(SRTM) and Cartosat-1, we show that the proposed model performs preferably
against other learning-based state-of-the-art methods. We also generate and
visualize several high-resolution DEMs covering terrains with diverse
signatures to show the performance of our model.Comment: 15 pages, 14 figure
Enhanced Performance Cooperative Localization Wireless Sensor Networks Based on Received-Signal-Strength Method and ACLM
There has been a rise in research interest in wireless sensor networks (WSNs) due to the potential for his or her widespread use in many various areas like home automation, security, environmental monitoring, and lots more. Wireless sensor network (WSN) localization is a very important and fundamental problem that has received a great deal of attention from the WSN research community. Determining the relative coordinate of sensor nodes within the network adds way more aiming to sense data. The research community is extremely rich in proposals to deal with this challenge in WSN. This paper explores the varied techniques proposed to deal with the acquisition of location information in WSN. In the study of the research paper finding the performance in WSN and those techniques supported the energy consumption in mobile nodes in WSN, needed to implement the technique and localization accuracy (error rate) and discuss some open issues for future research. The thought behind Internet of things is that the interconnection of the Internet-enabled things or devices to every other and human to realize some common goals. WSN localization is a lively research area with tons of proposals in terms of algorithms and techniques. Centralized localization techniques estimate every sensor node's situation on a network from a central Base Station, finding absolute or relative coordinates (positioning) with or without a reference node, usually called the anchor (beacon) node. Our proposed method minimization error rate and finding the absolute position of nodes
Framingham Heart Study
This paper describes the Framingham Heart Study one of the most important epidemiological studies ever conducted, and the underlying analytics that led to our current understanding of cardiovascular disease. The logistic regression algorithm is used to analyse the Framingham data set and predict the heart risk of a patient
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