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  • Haiyan Huang
Haiyan Huang

Haiyan Huang
  • Wuhan University

About

16
Publications
1,256
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156
Citations
Current institution
Wuhan University

Publications

Publications (16)
Preprint
In this paper, we present Change3D, a framework that reconceptualizes the change detection and captioning tasks through video modeling. Recent methods have achieved remarkable success by regarding each pair of bi-temporal images as separate frames. They employ a shared-weight image encoder to extract spatial features and then use a change extractor...
Article
Infrared and visible image fusion (IVIF) aims to integrate the information from source images into a single image, achieving a comprehensive representation of the scene. Existing methods typically focus on either the correlation or complementarity (uncorrelated) between different modalities; however, both aspects are equally important for image fus...
Preprint
Full-text available
Change detection in remote sensing images is essential for tracking environmental changes on the Earth's surface. Despite the success of vision transformers (ViTs) as backbones in numerous computer vision applications, they remain underutilized in change detection, where convolutional neural networks (CNNs) continue to dominate due to their powerfu...
Article
Full-text available
To enhance the accuracy of remote sensing data analysis, cloud detection from the complex ground environment is crucial. We refer to clouds that are easily confused with similar background as weak targets clouds, including thin clouds, tiny clouds, cloud boundaries, clouds with snow's existence or highlighted background's existence. This paper prop...
Article
Full-text available
The effectiveness of hashing methods in big data retrieval has been proved due to their merit in computational and storage efficiency. Recently, encouraged by the strong discriminant capability of deep learning in image representation, various deep hashing methodologies have emerged to enhance retrieval performance. However, maintaining the semanti...
Article
Full-text available
Remote Sensing Image Captioning (RSIC) plays a crucial role in advancing semantic understanding and has increasingly become a focal point of research. Nevertheless, existing RSIC methods grapple with challenges due to the intricate multi-scale nature and multifaceted backgrounds inherent in Remote Sensing Images (RSIs). Compounding these challenges...
Article
Full-text available
As the degradation factors of remote sensing images become increasingly complex, it becomes challenging to infer the high-frequency details of remote sensing images compared to ordinary digital photographs. For super-resolution (SR) tasks, existing deep learning-based single remote sensing image SR methods tend to rely on texture information, leadi...
Article
Dear editor, Cross-modal retrieval in remote sensing (RS) data has inspired increasing enthusiasm due to its merit in flexible input and efficient query. In this letter, we address to establish semantic relationship between RS images and their description sentences. Specially, we propose a multi-attention fusion and fine-grained alignment network,...
Article
Cloud pollution on remote sensing images seriously affects the actual use rate of remote sensing images. Therefore, cloud detection of remote sensing images is an indispensable part of image preprocessing and image availability screening. Aiming at the lack of short wave infrared and thermal infrared bands in ZY-3 high-resolution satellite images r...
Article
Recently, the burgeoning demands for captioning-related applications have inspired great endeavors in the remote sensing community. However, current benchmark datasets are deficient in data volume, category variety, and description richness, which hinders the advancement of new remote sensing image captioning approaches, especially those based on d...
Chapter
Cerebral aneurysms (CAs) detection from unenhanced 3D time-of-flight magnetic resonance angiography (TOF MRA) images is time-consuming, laborious, and error-prone. In this paper we propose a novel architecture, Cerebral Aneurysm Recurrent Classification Network (CARNet), which integrates the spatial information over multi-view Maximum Intensity Pro...
Article
Full-text available
Conventional remote sensing image retrieval (RSIR) systems perform single-label retrieval with a single label to represent the most dominant semantic content for an image. Improved spatial resolution dramatically boosts the remote sensing image scene complexity, as a remote sensing image always contains multiple categories of surface features. In t...
Article
Full-text available
Recently, deep metric learning (DML) has received widespread attention in the field of remote sensing image retrieval (RSIR), owing to its ability to extract discriminative features to represent images and then to measure the similarity between images via learning a distance function among feature vectors. However, the distinguishability of feature...

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