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| 3.77 MB | Adobe PDF |
Autores
Orientador(es)
Resumo(s)
Data visualizations remain widely inaccessible for screen reader users on the web. Despite recent research, developers still lack the experience, knowledge, and time to consistently implement
accessible features. As a result, screen reader users lose access to information and are compelled
to resort to tabular alternatives, when available, limiting their access to information. These issues
make it impossible for users of screen readers to work in areas like financial fraud detection and
demand the exploration of data through different chart types. We worked with screen reader users
and chart creators at Feedzai to develop AutoVizuA11y, a tool that automates the addition of accessible features to web-based charts. It enables keyboard navigation, offers shortcuts for faster
exploration, provides automatic labeling, and generates human-like descriptions of the data using
a large language model. Through a series of task-based tests (16 tasks and 15 users) comparing
two interfaces — one with AutoVizuA11y charts resembling Feedzai’s environment and the other
with accessible tables — we show that with AutoVizuA11y users are, on average, faster (66 vs 78
seconds) and more accurate (89% vs 79% accuracy).
Descrição
Tese de mestrado, Engenharia Informática, 2023, Universidade de Lisboa, Faculdade de Ciências
Palavras-chave
Acessibilidade Visualização Leitores de ecrã Descrições automáticas AutoVizuA11y Teses de mestrado - 2024
