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Keywords = glyph representation

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20 pages, 4451 KB  
Article
Skeleton-Guided Diffusion for Font Generation
by Li Zhao, Shan Dong, Jiayi Liu, Xijin Zhang, Xiaojiao Gao and Xiaojun Wu
Electronics 2025, 14(19), 3932; https://doi.org/10.3390/electronics14193932 - 3 Oct 2025
Viewed by 326
Abstract
Generating non-standard fonts, such as running script (e.g., XingShu), poses significant challenges due to their high stroke continuity, structural flexibility, and stylistic diversity, which traditional component-based prior knowledge methods struggle to model effectively. While diffusion models excel at capturing continuous feature spaces and [...] Read more.
Generating non-standard fonts, such as running script (e.g., XingShu), poses significant challenges due to their high stroke continuity, structural flexibility, and stylistic diversity, which traditional component-based prior knowledge methods struggle to model effectively. While diffusion models excel at capturing continuous feature spaces and stroke variations through iterative denoising, they face critical limitations: (1) style leakage, where large stylistic differences lead to inconsistent outputs due to noise interference; (2) structural distortion, caused by the absence of explicit structural guidance, resulting in broken strokes or deformed glyphs; and (3) style confusion, where similar font styles are inadequately distinguished, producing ambiguous results. To address these issues, we propose a novel skeleton-guided diffusion model with three key innovations: (1) a skeleton-constrained style rendering module that enforces semantic alignment and balanced energy constraints to amplify critical skeletal features, mitigating style leakage and ensuring stylistic consistency; (2) a cross-scale skeleton preservation module that integrates multi-scale glyph skeleton information through cross-dimensional interactions, effectively modeling macro-level layouts and micro-level stroke details to prevent structural distortions; (3) a contrastive style refinement module that leverages skeleton decomposition and recombination strategies, coupled with contrastive learning on positive and negative samples, to establish robust style representations and disambiguate similar styles. Extensive experiments on diverse font datasets demonstrate that our approach significantly improves the generation quality, achieving superior style fidelity, structural integrity, and style differentiation compared to state-of-the-art diffusion-based font generation methods. Full article
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19 pages, 14885 KB  
Article
Extracting Domain-Specific Chinese Named Entities for Aviation Safety Reports: A Case Study
by Xin Wang, Zurui Gan, Yaxi Xu, Bingnan Liu and Tao Zheng
Appl. Sci. 2023, 13(19), 11003; https://doi.org/10.3390/app131911003 - 6 Oct 2023
Cited by 9 | Viewed by 2207
Abstract
Aviation safety reports can provide detailed records of past aviation safety accidents, analyze their problems and hidden dangers, and help airlines and other aviation enterprises avoid similar accidents from happening again. In a novel way, we plan to use named entity recognition technology [...] Read more.
Aviation safety reports can provide detailed records of past aviation safety accidents, analyze their problems and hidden dangers, and help airlines and other aviation enterprises avoid similar accidents from happening again. In a novel way, we plan to use named entity recognition technology to quickly mine important information in reports, helping safety personnel improve efficiency. The development of intelligent civil aviation creates demands for the incorporation of big data and artificial intelligence. Because of the aviation-specific terms and the complexity of identifying named entity boundaries, the mining of aviation safety report texts is a challenging domain. This paper proposes a novel method for aviation safety report entity extraction. First, ten kinds of entities and sequences, such as event, company, city, operation, date, aircraft type, personnel, flight number, aircraft registration and aircraft part, were annotated using the BIO format. Second, we present a semantic representation enhancement approach through the fusion of enhanced representation through knowledge integration embedding (ERNIE), pinyin embedding and glyph embedding. Then, in order to improve the accuracy of specific entity extraction, we constructed and utilized the aviation domain dictionary which includes high-frequency technical aviation terms. After that, we adopted bilinear attention networks (BANs), the feature fusion approach originally used in multi-modal analysis, in our study to incorporate features extracted from both iterated dilated convolutional neural network (IDCNN) and bi-directional long short-term memory (BiLSTM) architectures. A case study of specific entity extraction for an aviation safety events dataset was conducted. The experimental results demonstrate that our proposed algorithm, with an F1 score reaching 97.93%, is superior to several baseline and advanced algorithms. Therefore, the proposed approach offers a robust methodological foundation for the relationship extraction and knowledge graph construction of aviation safety reports. Full article
(This article belongs to the Special Issue Applications of Text Mining in Data Analytics)
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20 pages, 668 KB  
Article
Improving Chinese Named Entity Recognition by Interactive Fusion of Contextual Representation and Glyph Representation
by Ruiming Gu, Tao Wang, Jianfeng Deng and Lianglun Cheng
Appl. Sci. 2023, 13(7), 4299; https://doi.org/10.3390/app13074299 - 28 Mar 2023
Cited by 11 | Viewed by 3157
Abstract
Named entity recognition (NER) is a fundamental task in natural language processing. In Chinese NER, additional resources such as lexicons, syntactic features and knowledge graphs are usually introduced to improve the recognition performance of the model. However, Chinese characters evolved from pictographs, and [...] Read more.
Named entity recognition (NER) is a fundamental task in natural language processing. In Chinese NER, additional resources such as lexicons, syntactic features and knowledge graphs are usually introduced to improve the recognition performance of the model. However, Chinese characters evolved from pictographs, and their glyphs contain rich semantic information, which is often ignored. Therefore, in order to make full use of the semantic information contained in Chinese character glyphs, we propose a Chinese NER model that combines character contextual representation and glyph representation, named CGR-NER (Character–Glyph Representation for NER). First, CGR-NER uses the large-scale pre-trained language model to dynamically generate contextual semantic representations of characters. Secondly, a hybrid neural network combining a three-dimensional convolutional neural network (3DCNN) and bi-directional long short-term memory network (BiLSTM) is designed to extract the semantic information contained in a Chinese character glyph, the potential word formation knowledge between adjacent glyphs and the contextual semantic and global dependency features of the glyph sequence. Thirdly, an interactive fusion method with a crossmodal attention and gate mechanism is proposed to fuse the contextual representation and glyph representation from different models dynamically. The experimental results show that our proposed model achieves 82.97% and 70.70% F1 scores on the OntoNotes 4 and Weibo datasets. Multiple ablation studies also verify the advantages and effectiveness of our proposed model. Full article
(This article belongs to the Section Computing and Artificial Intelligence)
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15 pages, 30526 KB  
Article
Particle System-Based Multi-Hierarchy Dynamic Visualization of Ocean Current Data
by Qingtong Shi, Bo Ai, Yubo Wen, Wenjun Feng, Chenxi Yang and Hongchun Zhu
ISPRS Int. J. Geo-Inf. 2021, 10(10), 667; https://doi.org/10.3390/ijgi10100667 - 1 Oct 2021
Cited by 5 | Viewed by 2983
Abstract
In three-dimensional (3D) digital Earth environment, there are many problems when using the existing methods to express the ocean current, such as uneven distribution of seed points, density leap in scale change and messy visualization. In this paper, a new dynamic visualization method [...] Read more.
In three-dimensional (3D) digital Earth environment, there are many problems when using the existing methods to express the ocean current, such as uneven distribution of seed points, density leap in scale change and messy visualization. In this paper, a new dynamic visualization method of multi-hierarchy flow field based on particle system is proposed; Specifically, three typical spherical uniform algorithms are studied and compared, and the streamline becoming denser from the equator to the poles on globe is eliminated by placing seed points using Marsaglia polar method as the most efficient. In addition, a viewport-adaptive adjustment algorithm is proposed, which realizes that the density of particles is always suitable to any viewing distance during continuous zooming. To solve the visual representation deficiency, we design a new dynamic pattern to enhance the expression and perception of current, which makes up for the shortcoming of the arrow glyph and streamline methods. Finally, a prototype of GPU parallel and viewport coherence is achieved, whose feasibility and effectiveness are verified by a series of experiments. The results show that our method can not only represent ocean current data clearly and efficiently, but also has outstanding uniformity and hierarchy effect. Full article
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19 pages, 5993 KB  
Article
Visualization of the Anisotropy of the Velocity Dispersion and Characteristics of the Multi-Velocity Continuum in the Regions of Multi-Stream Flows of Gas-Dust Media with Polydisperse Dust
by Mikhail A. Bezborodov, Mikhail A. Eremin, Vitaly V. Korolev, Ilya G. Kovalenko and Elena V. Zhukova
J. Imaging 2020, 6(9), 98; https://doi.org/10.3390/jimaging6090098 - 17 Sep 2020
Cited by 1 | Viewed by 2675
Abstract
Collisionless media devoid of intrinsic stresses, for example, a dispersed phase in a multiphase medium, have a much wider variety of space-time structures and features formed in them than collisional media, for example, a carrier, gas, or liquid phase. This is a consequence [...] Read more.
Collisionless media devoid of intrinsic stresses, for example, a dispersed phase in a multiphase medium, have a much wider variety of space-time structures and features formed in them than collisional media, for example, a carrier, gas, or liquid phase. This is a consequence of the fact that evolution in such media occurs in phase space, i.e., in a space of greater dimensions than the usual coordinate space. As a consequence, the process of the formation of features in collisionless media (clustering or vice versa, a loss of continuity) can occur primarily in the velocity space, which, in contrast to the features in the coordinate space (folds, caustics, or voids), is poorly observed directly. To identify such features, it is necessary to use visualization methods that allow us to consider, in detail, the evolution of the medium in the velocity space. This article is devoted to the development of techniques that allow visualizing the degree of anisotropy of the velocity fields of collisionless interpenetrating media. Simultaneously tracking the behavior of different fractions in such media is important, as their behavior can be significantly different. We propose three different techniques for visualizing the anisotropy of velocity fields using the example of two- and three-continuum dispersed media models. We proposed the construction of spatial distributions of eccentricity fields (scalar fields), or fields of principal directions of the velocity dispersion tensor (tensor fields). In the first case, we used some simple eccentricity functions for dispersion tensors for two fractions simultaneously, which we call surrogate entropy. In the second case, to visualize the anisotropy of the velocity fields of three fractions simultaneously, we used an ordered array (3-vector) of eccentricities for the color representation through decomposition in three basic colors. In the case of a multi-stream flow, we used cluster analysis methods to identify sections of a multi-stream flow (beams) and used glyphs to visualize the entire set of beams (vector-tensor fields). Full article
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21 pages, 6163 KB  
Article
Depicting More Information in Enriched Squarified Treemaps with Layered Glyphs
by Anderson Gregório Marques Soares, Elvis Thermo Carvalho Miranda, Rodrigo Santos do Amor Divino Lima, Carlos Gustavo Resque dos Santos and Bianchi Serique Meiguins
Information 2020, 11(2), 123; https://doi.org/10.3390/info11020123 - 22 Feb 2020
Cited by 7 | Viewed by 4727
Abstract
The Treemap is one of the most relevant information visualization (InfoVis) techniques to support the analysis of large hierarchical data structures or data clusters. Despite that, Treemap still presents some challenges for data representation, such as the few options for visual data mappings [...] Read more.
The Treemap is one of the most relevant information visualization (InfoVis) techniques to support the analysis of large hierarchical data structures or data clusters. Despite that, Treemap still presents some challenges for data representation, such as the few options for visual data mappings and the inability to represent zero and negative values. Additionally, visualizing high dimensional data requires many hierarchies, which can impair data visualization. Thus, this paper proposes to add layered glyphs to Treemap’s items to mitigate these issues. Layered glyphs are composed of N partially visible layers, and each layer maps one data dimension to a visual variable. Since the area of the upper layers is always smaller than the bottom ones, the layers can be stacked to compose a multidimensional glyph. To validate this proposal, we conducted a user study to compare three scenarios of visual data mappings for Treemaps: only Glyphs (G), Glyphs and Hierarchy (GH), and only Hierarchy (H). Thirty-six volunteers with a background in InfoVis techniques, organized into three groups of twelve (one group per scenario), performed 8 InfoVis tasks using only one of the proposed scenarios. The results point that scenario GH presented the best accuracy while having a task-solving time similar to scenario H, which suggests that representing more data in Treemaps with layered glyphs enriched the Treemap visualization capabilities without impairing the data readability. Full article
(This article belongs to the Section Information Applications)
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18 pages, 2916 KB  
Article
Multivariate Maps—A Glyph-Placement Algorithm to Support Multivariate Geospatial Visualization
by Liam McNabb and Robert S. Laramee
Information 2019, 10(10), 302; https://doi.org/10.3390/info10100302 - 28 Sep 2019
Cited by 12 | Viewed by 7685
Abstract
Maps are one of the most conventional types of visualization used when conveying information to both inexperienced users and advanced analysts. However, the multivariate representation of data on maps is still considered an unsolved problem. We present a multivariate map that uses geo-space [...] Read more.
Maps are one of the most conventional types of visualization used when conveying information to both inexperienced users and advanced analysts. However, the multivariate representation of data on maps is still considered an unsolved problem. We present a multivariate map that uses geo-space to guide the position of multivariate glyphs and enable users to interact with the map and glyphs, conveying meaningful data at different levels of detail. We develop an algorithm pipeline for this process and demonstrate how the user can adjust the level-of-detail of the resulting imagery. The algorithm features a unique combination of guided glyph placement, level-of-detail, dynamic zooming, and smooth transitions. We present a selection of user options to facilitate the exploration process and provide case studies to support how the application can be used. We also compare our placement algorithm with previous geo-spatial glyph placement algorithms. The result is a novel glyph placement solution to support multi-variate maps. Full article
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28 pages, 24627 KB  
Article
AirInsight: Visual Exploration and Interpretation of Latent Patterns and Anomalies in Air Quality Data
by Huijie Zhang, Ke Ren, Yiming Lin, Dezhan Qu and Zhenxin Li
Sustainability 2019, 11(10), 2944; https://doi.org/10.3390/su11102944 - 23 May 2019
Cited by 9 | Viewed by 3817
Abstract
Nowadays, huge volume of air quality data provides unprecedented opportunities for analyzing pollution. However, due to the high complexity, most traditional analytical methods focus on abstracting data, so these techniques discard the original structure and limit the understanding of the results. Visual analysis [...] Read more.
Nowadays, huge volume of air quality data provides unprecedented opportunities for analyzing pollution. However, due to the high complexity, most traditional analytical methods focus on abstracting data, so these techniques discard the original structure and limit the understanding of the results. Visual analysis is a powerful technique for exploring unknown patterns since it retains the details of the original data and gives visual feedback to users. In this paper, we focus on air quality data and propose the AirInsight design, an interactive visual analytic system for recognizing, exploring, and summarizing regular patterns, as well as detecting, classifying, and interpreting abnormal cases. Based on the time-varying and multivariate features of air quality data, a dimension reduction method Composite Least Square Projection (CLSP) is proposed, which allows appreciating and interpreting the data patterns in the context of attributes. On the basis of the observed regular patterns, multiple abnormal cases are further detected, including the multivariate anomalies by the proposed Noise Hierarchical Clustering (NHC) method, abruptly changing timestamps by Time diversity (TD) indicator, and cities with unique patterns by the Geographical Surprise (GS) measure. Moreover, we combine TD and GS to group anomalies based on their underlying spatiotemporal correlations. AirInsight includes multiple coordinated views and rich interactive functions to provide contextual information from different aspects and facilitate a comprehensive understanding. In particular, a pair of glyphs are designed that provide a visual representation of the temporal variation in air quality conditions for a user-selected city. Experiments show that CLSP improves the accuracy of Least Square Projection (LSP) and that NHC has the ability to separate noises. Meanwhile, several case studies and task-based user evaluation demonstrate that our system is effective and practical for exploring and interpreting multivariate spatiotemporal patterns and anomalies in air quality data. Full article
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