24 research outputs found
Data Embroidery with Black-and-White Textures
We investigated data embroidery with black-and-white textures, identifying
challenges in the use of textures for machine embroidery based on our own
experience. Data embroidery, as a method of physically representing data,
offers a unique way to integrate personal data into one's everyday fabric-based
objects. Owing to their monochromatic characteristics, black-and-white textures
promise to be easy to employ in machine embroidery. We experimented with
different textured visualizations designed by experts and, in this paper, we
detail our workflow and evaluate the performance and suitability of different
textures. We then conducted a survey on vegetable preferences within a family
and created a canvas bag as a case study, featuring the embroidered family data
to show how embroidered data can be used in practice
Design Characterization for Black-and-White Textures in Visualization
We investigate the use of 2D black-and-white textures for the visualization
of categorical data and contribute a summary of texture attributes, and the
results of three experiments that elicited design strategies as well as
aesthetic and effectiveness measures. Black-and-white textures are useful, for
instance, as a visual channel for categorical data on low-color displays, in
2D/3D print, to achieve the aesthetic of historic visualizations, or to retain
the color hue channel for other visual mappings. We specifically study how to
use what we call geometric and iconic textures. Geometric textures use patterns
of repeated abstract geometric shapes, while iconic textures use repeated icons
that may stand for data categories. We parameterized both types of textures and
developed a tool for designers to create textures on simple charts by adjusting
texture parameters. 30 visualization experts used our tool and designed 66
textured bar charts, pie charts, and maps. We then had 150 participants rate
these designs for aesthetics. Finally, with the top-rated geometric and iconic
textures, our perceptual assessment experiment with 150 participants revealed
that textured charts perform about equally well as non-textured charts, and
that there are some differences depending on the type of chart
Visualizing Information on Smartwatch Faces: A Review and Design Space
We present a systematic review and design space for visualizations on
smartwatches and the context in which these visualizations are
displayed--smartwatch faces. A smartwatch face is the main smartwatch screen
that wearers see when checking the time. Smartwatch faces are small data
dashboards that present a variety of data to wearers in a compact form. Yet,
the usage context and form factor of smartwatch faces pose unique design
challenges for visualization. In this paper, we present an in-depth review and
analysis of visualization designs for popular premium smartwatch faces based on
their design styles, amount and types of data, as well as visualization styles
and encodings they included. From our analysis we derive a design space to
provide an overview of the important considerations for new data displays for
smartwatch faces and other small displays. Our design space can also serve as
inspiration for design choices and grounding of empirical work on smartwatch
visualization design. We end with a research agenda that points to open
opportunities in this nascent research direction. Supplementary material is
available at: https://osf.io/nwy2r/.Comment: 13 pages, appendi
Reflections on Visualization in Motion for Fitness Trackers
International audienceIn this paper, we reflect on our past work towards understanding how to design visualizations for fitness trackers that are used in motion. We have coined the term "visualization in motion" for visualizations that are used in the presence of relative motion between a viewer and the visualization. Here, we describe how visualization in motion is relevant to sports scenarios. We also provide new data on current smartwatch visualizations for sports and discuss future challenges for visualizations in motion for fitness trackers
Data Embroidery with Black-and-White Textures
International audienceWe investigated data embroidery with black-and-white textures, identifying challenges in the use of textures for machine embroidery based on our own experience. Data embroidery, as a method of physically representing data, offers a unique way to integrate personal data into one's everyday fabric-based objects. Owing to their monochromatic characteristics, black-and-white textures promise to be easy to employ in machine embroidery. We experimented with different textured visualizations designed by experts and, in this paper, we detail our workflow and evaluate the performance and suitability of different textures. We then conducted a survey on vegetable preferences within a family and created a canvas bag as a case study, featuring the embroidered family data to show how embroidered data can be used in practice
Data Embroidery with Black-and-White Textures
International audienceWe investigated data embroidery with black-and-white textures, identifying challenges in the use of textures for machine embroidery based on our own experience. Data embroidery, as a method of physically representing data, offers a unique way to integrate personal data into one's everyday fabric-based objects. Owing to their monochromatic characteristics, black-and-white textures promise to be easy to employ in machine embroidery. We experimented with different textured visualizations designed by experts and, in this paper, we detail our workflow and evaluate the performance and suitability of different textures. We then conducted a survey on vegetable preferences within a family and created a canvas bag as a case study, featuring the embroidered family data to show how embroidered data can be used in practice
Data Embroidery with Black-and-White Textures
We investigated data embroidery with black-and-white textures, identifying challenges in the use of textures for machine embroidery based on our own experience. Data embroidery, as a method of physically representing data, offers a unique way to integrate personal data into one's everyday fabric-based objects. Owing to their monochromatic characteristics, black-and-white textures promise to be easy to employ in machine embroidery. We experimented with different textured visualizations designed by experts and, in this paper, we detail our workflow and evaluate the performance and suitability of different textures. We then conducted a survey on vegetable preferences within a family and created a canvas bag as a case study, featuring the embroidered family data to show how embroidered data can be used in practice
Design Characterization for Black-and-White Textures in Visualization
International audienceWe investigate the use of 2D black-and-white textures for the visualization of categorical data and contribute a summary of texture attributes, and the results of three experiments that elicited design strategies as well as aesthetic and effectiveness measures. Black-and-white textures are useful, for instance, as a visual channel for categorical data on low-color displays, in 2D/3D print, to achieve the aesthetic of historic visualizations, or to retain the color hue channel for other visual mappings. We specifically study how to use what we call geometric and iconic textures. Geometric textures use patterns of repeated abstract geometric shapes, while iconic textures use repeated icons that may stand for data categories. We parameterized both types of textures and developed a tool for designers to create textures on simple charts by adjusting texture parameters. \hty{30 visualization experts used our tool and designed 66 textured bar charts, pie charts, and maps.} We then had 150 participants rate these designs for aesthetics. Finally, with the top-rated geometric and iconic textures, our perceptual assessment experiment with 150 participants revealed that textured charts perform about equally well as non-textured charts, and that there are some differences depending on the type of chart
BeauVis: A Validated Scale for Measuring the Aesthetic Pleasure of Visual Representations
International audienceWe developed and validated a rating scale to assess the aesthetic pleasure (or beauty) of a visual data representation: the BeauVis scale. With our work we offer researchers and practitioners a simple instrument to compare the visual appearance of different visualizations, unrelated to data or context of use. Our rating scale can, for example, be used to accompany results from controlled experiments or be used as informative data points during in-depth qualitative studies. Given the lack of an aesthetic pleasure scale dedicated to visualizations, researchers have mostly chosen their own terms to study or compare the aesthetic pleasure of visualizations. Yet, many terms are possible and currently no clear guidance on their effectiveness regarding the judgment of aesthetic pleasure exists. To solve this problem, we engaged in a multi-step research process to develop the first validated rating scale specifically for judging the aesthetic pleasure of a visualization (osf.io/fxs76). Our final BeauVis scale consists of five items, "enjoyable," "likable," "pleasing," "nice," and "appealing." Beyond this scale itself, we contribute (a) a systematic review of the terms used in past research to capture aesthetics, (b) an investigation with visualization experts who suggested terms to use for judging the aesthetic pleasure of a visualization, and (c) a confirmatory survey in which we used our terms to study the aesthetic pleasure of a set of 3 visualizations