38 results on '"Wang, Yunhai"'
Search Results
2. Scribble-Supervised Semantic Segmentation by Uncertainty Reduction on Neural Representation and Self-Supervision on Neural Eigenspace
- Author
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Pan, Zhiyi, Jiang, Peng, Wang, Yunhai, Tu, Changhe, and Cohn, Anthony G.
- Subjects
FOS: Computer and information sciences ,Computer Vision and Pattern Recognition (cs.CV) ,Computer Science - Computer Vision and Pattern Recognition - Abstract
Scribble-supervised semantic segmentation has gained much attention recently for its promising performance without high-quality annotations. Due to the lack of supervision, confident and consistent predictions are usually hard to obtain. Typically, people handle these problems to either adopt an auxiliary task with the well-labeled dataset or incorporate the graphical model with additional requirements on scribble annotations. Instead, this work aims to achieve semantic segmentation by scribble annotations directly without extra information and other limitations. Specifically, we propose holistic operations, including minimizing entropy and a network embedded random walk on neural representation to reduce uncertainty. Given the probabilistic transition matrix of a random walk, we further train the network with self-supervision on its neural eigenspace to impose consistency on predictions between related images. Comprehensive experiments and ablation studies verify the proposed approach, which demonstrates superiority over others; it is even comparable to some full-label supervised ones and works well when scribbles are randomly shrunk or dropped., Comment: arXiv admin note: substantial text overlap with arXiv:2011.05621
- Published
- 2021
3. Data-Driven Colormap Adjustment for Exploring Spatial Variations in Scalar Fields.
- Author
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Zeng, Qiong, Zhao, Yongwei, Wang, Yinqiao, Zhang, Jian, Cao, Yi, Tu, Changhe, Viola, Ivan, and Wang, Yunhai
- Subjects
SPATIAL variation ,DATA distribution ,IMAGE color analysis ,STATISTICS ,HISTOGRAMS ,SCALAR field theory - Abstract
Colormapping is an effective and popular visualization technique for analyzing patterns in scalar fields. Scientists usually adjust a default colormap to show hidden patterns by shifting the colors in a trial-and-error process. To improve efficiency, efforts have been made to automate the colormap adjustment process based on data properties (e.g., statistical data value or histogram distribution). However, as the data properties have no direct correlation to the spatial variations, previous methods may be insufficient to reveal the dynamic range of spatial variations hidden in the data. To address the above issues, we conduct a pilot analysis with domain experts and summarize three requirements for the colormap adjustment process. Based on the requirements, we formulate colormap adjustment as an objective function, composed of a boundary term and a fidelity term, which is flexible enough to support interactive functionalities. We compare our approach with alternative methods under a quantitative measure and a qualitative user study (25 participants), based on a set of data with broad distribution diversity. We further evaluate our approach via three case studies with six domain experts. Our method is not necessarily more optimal than alternative methods of revealing patterns, but rather is an additional color adjustment option for exploring data with a dynamic range of spatial variations. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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4. An Intelligent Model for Solving Manpower Scheduling Problems
- Author
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Zhang, Lingyu, primary, Liu, Tianyu, additional, and Wang, Yunhai, additional
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- 2021
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5. Mid-Air Finger Sketching for Tree Modeling
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Zhang, Fanxing, primary, Liu, Zhihao, additional, Cheng, Zhanglin, additional, Deussen, Oliver, additional, Chen, Baoquan, additional, and Wang, Yunhai, additional
- Published
- 2021
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6. KD-Box: Line-segment-based KD-tree for Interactive Exploration of Large-scale Time-Series Data.
- Author
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Zhao, Yue, Wang, Yunhai, Zhang, Jian, Fu, Chi-Wing, Xu, Mingliang, and Moritz, Dominik
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TIME series analysis ,KALMAN filtering - Abstract
Time-series data-usually presented in the form of lines-plays an important role in many domains such as finance, meteorology, health, and urban informatics. Yet, little has been done to support interactive exploration of large-scale time-series data, which requires a clutter-free visual representation with low-latency interactions. In this paper, we contribute a novel line-segment-based KD-tree method to enable interactive analysis of many time series. Our method enables not only fast queries over time series in selected regions of interest but also a line splatting method for efficient computation of the density field and selection of representative lines. Further, we develop KD-Box, an interactive system that provides rich interactions, e.g., timebox, attribute filtering, and coordinated multiple views. We demonstrate the effectiveness of KD-Box in supporting efficient line query and density field computation through a quantitative comparison and show its usefulness for interactive visual analysis on several real-world datasets. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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7. Pyramid-based Scatterplots Sampling for Progressive and Streaming Data Visualization.
- Author
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Chen, Xin, Zhang, Jian, Fu, Chi-Wing, Fekete, Jean-Daniel, and Wang, Yunhai
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DATA visualization ,SCATTER diagrams ,SPECIFIC gravity ,VISUAL analytics ,ELECTRONIC data processing ,PROGRESSIVE collapse - Abstract
We present a pyramid-based scatterplot sampling technique to avoid overplotting and enable progressive and streaming visualization of large data. Our technique is based on a multiresolution pyramid-based decomposition of the underlying density map and makes use of the density values in the pyramid to guide the sampling at each scale for preserving the relative data densities and outliers. We show that our technique is competitive in quality with state-of-the-art methods and runs faster by about an order of magnitude. Also, we have adapted it to deliver progressive and streaming data visualization by processing the data in chunks and updating the scatterplot areas with visible changes in the density map. A quantitative evaluation shows that our approach generates stable and faithful progressive samples that are comparable to the state-of-the-art method in preserving relative densities and superior to it in keeping outliers and stability when switching frames. We present two case studies that demonstrate the effectiveness of our approach for exploring large data. [ABSTRACT FROM AUTHOR]
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- 2022
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8. SPEULER: Semantics-preserving Euler Diagrams.
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Kehlbeck, Rebecca, Gortler, Jochen, Wang, Yunhai, and Deussen, Oliver
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REPRESENTATIONS of graphs ,VISUALIZATION ,TASK analysis ,INFORMATION design - Abstract
Creating comprehensible visualizations of highly overlapping set-typed data is a challenging task due to its complexity. To facilitate insights into set connectivity and to leverage semantic relations between intersections, we propose a fast two-step layout technique for Euler diagrams that are both well-matched and well-formed. Our method conforms to established form guidelines for Euler diagrams regarding semantics, aesthetics, and readability. First, we establish an initial ordering of the data, which we then use to incrementally create a planar, connected, and monotone dual graph representation. In the next step, the graph is transformed into a circular layout that maintains the semantics and yields simple Euler diagrams with smooth curves. When the data cannot be represented by simple diagrams, our algorithm always falls back to a solution that is not well-formed but still well-matched, whereas previous methods often fail to produce expected results. We show the usefulness of our method for visualizing set-typed data using examples from text analysis and infographics. Furthermore, we discuss the characteristics of our approach and evaluate our method against state-of-the-art methods. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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9. Joint t -SNE for Comparable Projections of Multiple High-Dimensional Datasets.
- Author
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Wang, Yinqiao, Chen, Lu, Jo, Jaemin, and Wang, Yunhai
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DISTRIBUTION (Probability theory) ,TASK analysis - Abstract
We present Joint t-Stochastic Neighbor Embedding (Joint t-SNE), a technique to generate comparable projections of multiple high-dimensional datasets. Although t-SNE has been widely employed to visualize high-dimensional datasets from various domains, it is limited to projecting a single dataset. When a series of high-dimensional datasets, such as datasets changing over time, is projected independently using t-SNE, misaligned layouts are obtained. Even items with identical features across datasets are projected to different locations, making the technique unsuitable for comparison tasks. To tackle this problem, we introduce edge similarity, which captures the similarities between two adjacent time frames based on the Graphlet Frequency Distribution (GFD). We then integrate a novel loss term into the t-SNE loss function, which we call vector constraints, to preserve the vectors between projected points across the projections, allowing these points to serve as visual landmarks for direct comparisons between projections. Using synthetic datasets whose ground-truth structures are known, we show that Joint t-SNE outperforms existing techniques, including Dynamic t-SNE, in terms of local coherence error, Kullback-Leibler divergence, and neighborhood preservation. We also showcase a real-world use case to visualize and compare the activation of different layers of a neural network. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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10. Revisiting Dimensionality Reduction Techniques for Visual Cluster Analysis: An Empirical Study.
- Author
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Xia, Jiazhi, Zhang, Yuchen, Song, Jie, Chen, Yang, Wang, Yunhai, and Liu, Shixia
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CLUSTER analysis (Statistics) ,NONNEGATIVE matrices ,MATRIX decomposition ,EMPIRICAL research ,TASK analysis - Abstract
Dimensionality Reduction (DR) techniques can generate 2D projections and enable visual exploration of cluster structures of high-dimensional datasets. However, different DR techniques would yield various patterns, which significantly affect the performance of visual cluster analysis tasks. We present the results of a user study that investigates the influence of different DR techniques on visual cluster analysis. Our study focuses on the most concerned property types, namely the linearity and locality, and evaluates twelve representative DR techniques that cover the concerned properties. Four controlled experiments were conducted to evaluate how the DR techniques facilitate the tasks of 1) cluster identification, 2) membership identification, 3) distance comparison, and 4) density comparison, respectively. We also evaluated users' subjective preference of the DR techniques regarding the quality of projected clusters. The results show that: 1) Non-linear and Local techniques are preferred in cluster identification and membership identification; 2) Linear techniques perform better than non-linear techniques in density comparison; 3) UMAP (Uniform Manifold Approximation and Projection) and t-SNE (t-Distributed Stochastic Neighbor Embedding) perform the best in cluster identification and membership identification; 4) NMF (Nonnegative Matrix Factorization) has competitive performance in distance comparison; 5) t-SNLE (t-Distributed Stochastic Neighbor Linear Embedding) has competitive performance in density comparison. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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11. F2-Bubbles: Faithful Bubble Set Construction and Flexible Editing.
- Author
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Wang, Yunhai, Cheng, Da, Wang, Zhirui, Zhang, Jian, Zhou, Liang, He, Gaoqi, and Deussen, Oliver
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MICROELECTROMECHANICAL systems ,APPROXIMATION algorithms ,VISUALIZATION ,SPANNING trees ,EDITING - Abstract
In this paper, we propose F2-Bubbles, a set overlay visualization technique that addresses overlapping artifacts and supports interactive editing with intelligent suggestions. The core of our method is a new, efficient set overlay construction algorithm that approximates the optimal set overlay by considering set elements and their non-set neighbors. Thanks to the efficiency of the algorithm, interactive editing is achieved, and with intelligent suggestions, users can easily and flexibly edit visualizations through direct manipulations with local adaptations. A quantitative comparison with state-of-the-art set visualization techniques and case studies demonstrate the effectiveness of our method and suggests that F2-Bubbles is a helpful technique for set visualization. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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12. Visual Clustering Factors in Scatterplots.
- Author
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Xia, Jiazhi, Lin, Weixing, Jiang, Guang, Wang, Yunhai, Chen, Wei, and Schreck, Tobias
- Subjects
SCATTER diagrams ,ARTIFICIAL neural networks ,CLUSTER analysis (Statistics) ,EMPIRICAL research - Abstract
Cluster analysis is an important technique in data analysis. However, there is no encompassing theory on scatterplots to evaluate clustering. Human visual perception is regarded as a gold standard to evaluate clustering. The cluster analysis based on human visual perception requires the participation of many probands, to obtain diverse data, and hence is a challenge to do. We contribute an empirical and data-driven study on human perception for visual clustering of large scatterplot data. First, we systematically construct and label a large, publicly available scatterplot dataset. Second, we carry out a qualitative analysis based on the dataset and summarize the influence of visual factors on clustering perception. Third, we use the labeled datasets to train a deep neural network for modeling human visual clustering perception. Our experiments show that the data-driven model successfully models the human visual perception, and outperforms conventional clustering algorithms in synthetic and real datasets. [ABSTRACT FROM AUTHOR]
- Published
- 2021
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13. Data-Driven Colormap Optimization for 2D Scalar Field Visualization
- Author
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Zeng, Qiong, primary, Wang, Yinqiao, additional, Zhang, Jian, additional, Zhang, Wenting, additional, Tu, Changhe, additional, Viola, Ivan, additional, and Wang, Yunhai, additional
- Published
- 2019
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14. Implicit Multidimensional Projection of Local Subspaces.
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Bian, Rongzheng, Xue, Yumeng, Zhou, Liang, Zhang, Jian, Chen, Baoquan, Weiskopf, Daniel, and Wang, Yunhai
- Subjects
IMPLICIT functions ,DATA structures ,VISUALIZATION ,NEIGHBORHOODS ,DATA modeling - Abstract
We propose a visualization method to understand the effect of multidimensional projection on local subspaces, using implicit function differentiation. Here, we understand the local subspace as the multidimensional local neighborhood of data points. Existing methods focus on the projection of multidimensional data points, and the neighborhood information is ignored. Our method is able to analyze the shape and directional information of the local subspace to gain more insights into the global structure of the data through the perception of local structures. Local subspaces are fitted by multidimensional ellipses that are spanned by basis vectors. An accurate and efficient vector transformation method is proposed based on analytical differentiation of multidimensional projections formulated as implicit functions. The results are visualized as glyphs and analyzed using a full set of specifically-designed interactions supported in our efficient web-based visualization tool. The usefulness of our method is demonstrated using various multi- and high-dimensional benchmark datasets. Our implicit differentiation vector transformation is evaluated through numerical comparisons; the overall method is evaluated through exploration examples and use cases. [ABSTRACT FROM AUTHOR]
- Published
- 2021
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15. Palettailor: Discriminable Colorization for Categorical Data.
- Author
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Lu, Kecheng, Feng, Mi, Chen, Xin, Sedlmair, Michael, Deussen, Oliver, Lischinski, Dani, Cheng, Zhanglin, and Wang, Yunhai
- Subjects
CATEGORIES (Mathematics) ,VISUAL discrimination ,COLORS ,COLOR vision ,IMAGE color analysis ,SIMULATED annealing - Abstract
We present an integrated approach for creating and assigning color palettes to different visualizations such as multi-class scatterplots, line, and bar charts. While other methods separate the creation of colors from their assignment, our approach takes data characteristics into account to produce color palettes, which are then assigned in a way that fosters better visual discrimination of classes. To do so, we use a customized optimization based on simulated annealing to maximize the combination of three carefully designed color scoring functions: point distinctness, name difference, and color discrimination. We compare our approach to state-of-the-art palettes with a controlled user study for scatterplots and line charts, furthermore we performed a case study. Our results show that Palettailor, as a fully-automated approach, generates color palettes with a higher discrimination quality than existing approaches. The efficiency of our optimization allows us also to incorporate user modifications into the color selection process. [ABSTRACT FROM AUTHOR]
- Published
- 2021
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16. SineStream: Improving the Readability of Streamgraphs by Minimizing Sine Illusion Effects.
- Author
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Bu, Chuan, Zhang, Quanjie, Wang, Qianwen, Zhang, Jian, Sedlmair, Michael, Deussen, Oliver, and Wang, Yunhai
- Subjects
HIERARCHICAL clustering (Cluster analysis) ,ALGORITHMS ,GEOMETRY ,TASK analysis - Abstract
In this paper, we propose SineStream, a new variant of streamgraphs that improves their readability by minimizing sine illusion effects. Such effects reflect the tendency of humans to take the orthogonal rather than the vertical distance between two curves as their distance. In SineStream, we connect the readability of streamgraphs with minimizing sine illusions and by doing so provide a perceptual foundation for their design. As the geometry of a streamgraph is controlled by its baseline (the bottom-most curve) and the ordering of the layers, we re-interpret baseline computation and layer ordering algorithms in terms of reducing sine illusion effects. For baseline computation, we improve previous methods by introducing a Gaussian weight to penalize layers with large thickness changes. For layer ordering, three design requirements are proposed and implemented through a hierarchical clustering algorithm. Quantitative experiments and user studies demonstrate that SineStream improves the readability and aesthetics of streamgraphs compared to state-of-the-art methods. [ABSTRACT FROM AUTHOR]
- Published
- 2021
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17. Deep-Learning Inversion of Seismic Data.
- Author
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Li, Shucai, Liu, Bin, Ren, Yuxiao, Chen, Yangkang, Yang, Senlin, Wang, Yunhai, and Jiang, Peng
- Abstract
We propose a new method to tackle the mapping challenge from time-series data to spatial image in the field of seismic exploration, i.e., reconstructing the velocity model directly from seismic data by deep neural networks (DNNs). The conventional way of addressing this ill-posed inversion problem is through iterative algorithms, which suffer from poor nonlinear mapping and strong nonuniqueness. Other attempts may either import human intervention errors or underuse seismic data. The challenge for DNNs mainly lies in the weak spatial correspondence, the uncertain reflection–reception relationship between seismic data and velocity model, as well as the time-varying property of seismic data. To tackle these challenges, we propose end-to-end seismic inversion networks (SeisInvNets) with novel components to make the best use of all seismic data. Specifically, we start with every seismic trace and enhance it with its neighborhood information, its observation setup, and the global context of its corresponding seismic profile. From the enhanced seismic traces, the spatially aligned feature maps can be learned and further concatenated to reconstruct a velocity model. In general, we let every seismic trace contribute to the reconstruction of the whole velocity model by finding spatial correspondence. The proposed SeisInvNet consistently produces improvements over the baselines and achieves promising performance on our synthesized and proposed SeisInv data set according to various evaluation metrics. The inversion results are more consistent with the target from the aspects of velocity values, subsurface structures, and geological interfaces. Moreover, the mechanism and the generalization of the proposed method are discussed and verified. Nevertheless, the generalization of deep-learning-based inversion methods on real data is still challenging and considering physics may be one potential solution. [ABSTRACT FROM AUTHOR]
- Published
- 2020
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18. A Recursive Subdivision Technique for Sampling Multi-class Scatterplots.
- Author
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Chen, Xin, Ge, Tong, Zhang, Jian, Chen, Baoquan, Fu, Chi-Wing, Deussen, Oliver, and Wang, Yunhai
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SCATTER diagrams ,SAMPLING (Process) ,IMAGE color analysis - Abstract
We present a non-uniform recursive sampling technique for multi-class scatterplots, with the specific goal of faithfully presenting relative data and class densities, while preserving major outliers in the plots. Our technique is based on a customized binary kd-tree, in which leaf nodes are created by recursively subdividing the underlying multi-class density map. By backtracking, we merge leaf nodes until they encompass points of all classes for our subsequently applied outlier-aware multi-class sampling strategy. A quantitative evaluation shows that our approach can better preserve outliers and at the same time relative densities in multi-class scatterplots compared to the previous approaches, several case studies demonstrate the effectiveness of our approach in exploring complex and real world data. [ABSTRACT FROM AUTHOR]
- Published
- 2020
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19. ShapeWordle: Tailoring Wordles using Shape-aware Archimedean Spirals.
- Author
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Wang, Yunhai, Lee, Bongshin, Chu, Xiaowei, Zhang, Kaiyi, Bao, Chen, Li, Xiaotong, Zhang, Jian, Fu, Chi-Wing, Hurter, Christophe, and Deussen, Oliver
- Subjects
DIFFERENTIAL forms ,IMAGE color analysis ,TAGS (Metadata) ,GEOMETRIC shapes - Abstract
We present a new technique to enable the creation of shape-bounded Wordles, we call ShapeWordle, in which we fit words to form a given shape. To guide word placement within a shape, we extend the traditional Archimedean spirals to be shape-aware by formulating the spirals in a differential form using the distance field of the shape. To handle non-convex shapes, we introduce a multi-centric Wordle layout method that segments the shape into parts for our shape-aware spirals to adaptively fill the space and generate word placements. In addition, we offer a set of editing interactions to facilitate the creation of semantically-meaningful Wordles. Lastly, we present three evaluations: a comprehensive comparison of our results against the state-of-the-art technique (WordArt), case studies with 14 users, and a gallery to showcase the coverage of our technique. [ABSTRACT FROM AUTHOR]
- Published
- 2020
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20. Improving the Robustness of Scagnostics.
- Author
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Wang, Yunhai, Wang, Zeyu, Liu, Tingting, Correll, Michael, Cheng, Zhanglin, Deussen, Oliver, and Sedlmair, Michael
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DATA binning ,SCATTER diagrams - Abstract
In this paper, we examine the robustness of scagnostics through a series of theoretical and empirical studies. First, we investigate the sensitivity of scagnostics by employing perturbing operations on more than 60M synthetic and real-world scatterplots. We found that two scagnostic measures, Outlying and Clumpy, are overly sensitive to data binning. To understand how these measures align with human judgments of visual features, we conducted a study with 24 participants, which reveals that i) humans are not sensitive to small perturbations of the data that cause large changes in both measures, and ii) the perception of clumpiness heavily depends on per-cluster topologies and structures. Motivated by these results, we propose Robust Scagnostics (RScag) by combining adaptive binning with a hierarchy-based form of scagnostics. An analysis shows that RScag improves on the robustness of original scagnostics, aligns better with human judgments, and is equally fast as the traditional scagnostic measures. [ABSTRACT FROM AUTHOR]
- Published
- 2020
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21. Follow the Smoke: Immersive Display of Motion Data With Synthesized Smoke.
- Author
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Zhu, Lifeng, Wang, Zian, Wang, Yunhai, Song, Aiguo, and Potel, Mike
- Subjects
SMOKE ,MOTION capture (Human mechanics) ,MOTION ,VIRTUAL reality - Abstract
With the development of motion capture and graphics technology, visual feedback becomes increasingly important for tasks such as motion training. In order to engage users with immersive visual feedback, we introduce smoke simulation to enhance the motion display. Boundary conditions in the smoke simulation are designed to produce smoke which follows and implies the corresponding complex human motion. We also synthesize multilayer smoke, which is shown to be useful for emphasizing the motion of specified limbs. We implement our technique in an HMD-based virtual reality (VR) system for Tai-Chi training. User study results show that synthesized smoke is useful for enhancing the motion display, and that the training process is generally preferred in terms of engagement. [ABSTRACT FROM AUTHOR]
- Published
- 2019
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22. Is There a Robust Technique for Selecting Aspect Ratios in Line Charts?
- Author
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Wang, Yunhai, Wang, Zeyu, Zhu, Lifeng, Zhang, Jian, Fu, Chi-Wing, Cheng, Zhanglin, Tu, Changhe, and Chen, Baoquan
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MARKETING research ,VISUAL perception ,PARAMETERIZATION ,LINE integrals ,ARC length - Abstract
The aspect ratio of a line chart heavily influences the perception of the underlying data. Different methods explore different criteria in choosing aspect ratios, but so far, it was still unclear how to select aspect ratios appropriately for any given data. This paper provides a guideline for the user to choose aspect ratios for any input 1D curves by conducting an in-depth analysis of aspect ratio selection methods both theoretically and experimentally. By formulating several existing methods as line integrals, we explain their parameterization invariance. Moreover, we derive a new and improved aspect ratio selection method, namely the $L_1$ -LOR (local orientation resolution), with a certain degree of parameterization invariance. Furthermore, we connect different methods, including AL (arc length based method), the banking to 45 $^\circ$ principle, RV (resultant vector) and AS (average absolute slope), as well as $L_1$ -LOR and AO (average absolute orientation). We verify these connections by a comparative evaluation involving various data sets, and show that the selections by RV and $L_1$ -LOR are complementary to each other for most data. Accordingly, we propose the dual-scale banking technique that combines the strengths of RV and $L_1$ -LOR, and demonstrate its practicability using multiple real-world data sets. [ABSTRACT FROM AUTHOR]
- Published
- 2018
- Full Text
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23. Mathematical foundations of arc length-based aspect ratio selection
- Author
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Han, Fubo, primary, Wang, Yunhai, additional, Zhang, Jian, additional, Deussen, Oliver, additional, and Chen, Baoquan, additional
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- 2016
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24. A Perception-Driven Approach to Supervised Dimensionality Reduction for Visualization.
- Author
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Wang, Yunhai, Feng, Kang, Chu, Xiaowei, Yu, Xiaohui, Chen, Baoquan, Zhang, Jian, Fu, Chi-Wing, and Sedlmair, Michael
- Subjects
VISUALIZATION ,DIMENSION reduction (Statistics) ,DATA ,ALGORITHMS ,GAUSSIAN distribution - Abstract
Dimensionality reduction (DR) is a common strategy for visual analysis of labeled high-dimensional data. Low-dimensional representations of the data help, for instance, to explore the class separability and the spatial distribution of the data. Widely-used unsupervised DR methods like PCA do not aim to maximize the class separation, while supervised DR methods like LDA often assume certain spatial distributions and do not take perceptual capabilities of humans into account. These issues make them ineffective for complicated class structures. Towards filling this gap, we present a perception-driven linear dimensionality reduction approach that maximizes the perceived class separation in projections. Our approach builds on recent developments in perception-based separation measures that have achieved good results in imitating human perception. We extend these measures to be density-aware and incorporate them into a customized simulated annealing algorithm, which can rapidly generate a near optimal DR projection. We demonstrate the effectiveness of our approach by comparing it to state-of-the-art DR methods on 93 datasets, using both quantitative measure and human judgments. We also provide case studies with class-imbalanced and unlabeled data. [ABSTRACT FROM PUBLISHER]
- Published
- 2018
- Full Text
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25. Line Graph or Scatter Plot? Automatic Selection of Methods for Visualizing Trends in Time Series.
- Author
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Wang, Yunhai, Han, Fubo, Zhu, Lifeng, Deussen, Oliver, and Chen, Baoquan
- Subjects
DATA visualization ,TIME series analysis ,GRAPHIC methods ,ALGORITHMS ,FACTOR analysis - Abstract
Line graphs are usually considered to be the best choice for visualizing time series data, whereas sometimes also scatter plots are used for showing main trends. So far there are no guidelines that indicate which of these visualization methods better display trends in time series for a given canvas. Assuming that the main information in a time series is its overall trend, we propose an algorithm that automatically picks the visualization method that reveals this trend best. This is achieved by measuring the visual consistency between the trend curve represented by a LOESS fit and the trend described by a scatter plot or a line graph. To measure the consistency between our algorithm and user choices, we performed an empirical study with a series of controlled experiments that show a large correspondence. In a factor analysis we furthermore demonstrate that various visual and data factors have effects on the preference for a certain type of visualization. [ABSTRACT FROM AUTHOR]
- Published
- 2018
- Full Text
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26. Revisiting Stress Majorization as a Unified Framework for Interactive Constrained Graph Visualization.
- Author
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Wang, Yunhai, Wang, Yanyan, Sun, Yinqi, Zhu, Lifeng, Lu, Kecheng, Fu, Chi-Wing, Sedlmair, Michael, Deussen, Oliver, and Chen, Baoquan
- Subjects
MULTIDIMENSIONAL scaling ,DATA visualization ,COMPUTER graphics ,GRAPH algorithms ,CONSTRAINTS (Physics) - Abstract
We present an improved stress majorization method that incorporates various constraints, including directional constraints without the necessity of solving a constraint optimization problem. This is achieved by reformulating the stress function to impose constraints on both the edge vectors and lengths instead of just on the edge lengths (node distances). This is a unified framework for both constrained and unconstrained graph visualizations, where we can model most existing layout constraints, as well as develop new ones such as the star shapes and cluster separation constraints within stress majorization. This improvement also allows us to parallelize computation with an efficient GPU conjugant gradient solver, which yields fast and stable solutions, even for large graphs. As a result, we allow the constraint-based exploration of large graphs with 10K nodes — an approach which previous methods cannot support. [ABSTRACT FROM PUBLISHER]
- Published
- 2018
- Full Text
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27. EdWordle: Consistency-Preserving Word Cloud Editing.
- Author
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Wang, Yunhai, Chu, Xiaowei, Bao, Chen, Zhu, Lifeng, Deussen, Oliver, Chen, Baoquan, and Sedlmair, Michael
- Subjects
DATA visualization ,CLOUD computing ,DYNAMICAL systems ,EUCLIDEAN distance ,ALGORITHMS - Abstract
We present EdWordle, a method for consistently editing word clouds. At its heart, EdWordle allows users to move and edit words while preserving the neighborhoods of other words. To do so, we combine a constrained rigid body simulation with a neighborhood-aware local Wordle algorithm to update the cloud and to create very compact layouts. The consistent and stable behavior of EdWordle enables users to create new forms of word clouds such as storytelling clouds in which the position of words is carefully edited. We compare our approach with state-of-the-art methods and show that we can improve user performance, user satisfaction, as well as the layout itself. [ABSTRACT FROM PUBLISHER]
- Published
- 2018
- Full Text
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28. Unsupervised Feature Selection via Adaptive Multimeasure Fusion.
- Author
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Zhang, Rui, Nie, Feiping, Wang, Yunhai, and Li, Xuelong
- Subjects
FEATURE selection ,SIMILARITY (Geometry) ,SPARSE matrices ,MATHEMATICAL regularization - Abstract
Since multiple criteria can be adopted to estimate the similarity among the given data points, problem regarding diverse representations of pairwise relations is brought about. To address this issue, a novel self-adaptive multimeasure (SAMM) fusion problem is proposed, such that different measure functions can be adaptively merged into a unified similarity measure. Different from other approaches, we optimize similarity as a variable instead of presetting it as a priori, such that similarity can be adaptively evaluated based on integrating various measures. To further obtain the associated subspace representation, a graph-based dimensionality reduction problem is incorporated into the proposed SAMM problem, such that the related subspace can be achieved according to the unified similarity. In addition, sparsity-inducing $\ell _{2,0}$ regularization is introduced, such that a sparse projection is obtained for efficient feature selection (FS). Consequently, the SAMM-FS method can be summarized correspondingly. [ABSTRACT FROM AUTHOR]
- Published
- 2019
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29. A visual voting framework for weather forecast calibration
- Author
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Liao, Hongsen, primary, Wu, Yingcai, additional, Chen, Li, additional, Hamill, Thomas M., additional, Wang, Yunhai, additional, Dai, Kan, additional, Zhang, Hui, additional, and Chen, Wei, additional
- Published
- 2015
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30. Research on natural disaster forecasting data processing and visualization technology
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Li, Chunmin, primary, Wang, Yunhai, additional, and Liu, Xin, additional
- Published
- 2011
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31. Community survey for human cystic echinococcosis in Northwest China: A long term follow-up study
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Zhang, WenBin, primary, Wang, YunHai, additional, Xing, Yan, additional, and Xu, Xincai, additional
- Published
- 2011
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32. Volume exploration using ellipsoidal Gaussian transfer functions
- Author
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Wang, Yunhai, primary, Chen, Wei, additional, Shan, Guihua, additional, Dong, Tingxin, additional, and Chi, Xuebin, additional
- Published
- 2010
- Full Text
- View/download PDF
33. Research on the planned failure and recovery in airline overbooking
- Author
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Zhang, Xiang, primary, Chen, Jun, additional, Huang, Jin, additional, Wang, Huimin, additional, Wang, Yunhai, additional, and Wang, Guoxin, additional
- Published
- 2009
- Full Text
- View/download PDF
34. Symbolic Computation for a Class Vector Field with Double Resonance Hopf Bifurcation
- Author
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Wang, Yunhai, primary and Han, Jinglong, additional
- Published
- 2009
- Full Text
- View/download PDF
35. Positive Solutions for Quasilinear Second Order Differential Equation
- Author
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Dong, Shijie, primary, Gao, Zhifeng, additional, and Wang, Yunhai, additional
- Published
- 2007
- Full Text
- View/download PDF
36. Positive solutions of m-point boundary value problems for second order differential equations with an advanced argument
- Author
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Guo, Yanping, primary, Wang, Yunhai, additional, and Yu, Changlong, additional
- Published
- 2007
- Full Text
- View/download PDF
37. Multiple Positive Solutions for Second Order m-Point Boundary Value Problems
- Author
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Gao, Zhenfeng, primary, Wang, Yunhai, additional, and Guo, Yanping, additional
- Published
- 2007
- Full Text
- View/download PDF
38. Efficient Volume Exploration Using the Gaussian Mixture Model.
- Author
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Wang, Yunhai, Chen, Wei, Zhang, Jian, Dong, Tingxing, Shan, Guihua, and Chi, Xuebin
- Subjects
MATHEMATICAL models ,GAUSSIAN processes ,TRANSFER functions ,RENDERING (Computer graphics) ,ESTIMATION theory ,FEATURE extraction ,COMPUTER simulation - Abstract
The multidimensional transfer function is a flexible and effective tool for exploring volume data. However, designing an appropriate transfer function is a trial-and-error process and remains a challenge. In this paper, we propose a novel volume exploration scheme that explores volumetric structures in the feature space by modeling the space using the Gaussian mixture model (GMM). Our new approach has three distinctive advantages. First, an initial feature separation can be automatically achieved through GMM estimation. Second, the calculated Gaussians can be directly mapped to a set of elliptical transfer functions (ETFs), facilitating a fast pre-integrated volume rendering process. Third, an inexperienced user can flexibly manipulate the ETFs with the assistance of a suite of simple widgets, and discover potential features with several interactions. We further extend the GMM-based exploration scheme to time-varying data sets using an incremental GMM estimation algorithm. The algorithm estimates the GMM for one time step by using itself and the GMM generated from its previous steps. Sequentially applying the incremental algorithm to all time steps in a selected time interval yields a preliminary classification for each time step. In addition, the computed ETFs can be freely adjusted. The adjustments are then automatically propagated to other time steps. In this way, coherent user-guided exploration of a given time interval is achieved. Our GPU implementation demonstrates interactive performance and good scalability. The effectiveness of our approach is verified on several data sets. [ABSTRACT FROM PUBLISHER]
- Published
- 2011
- Full Text
- View/download PDF
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