PixelatedScatter: Arbitrary-level Visual Abstraction for Large-scale Multiclass Scatterplots
 Ziheng Guo -
 Tianxiang Wei -
 Zeyu Li -
 Lianghao Zhang -
 Sisi Li -
 Jiawan Zhang -

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Room: Hall M2
2025-11-05T08:30:00.000ZGMT-0600Change your timezone on the schedule page
2025-11-05T08:30:00.000Z
Keywords
Scatterplot Abstraction, Overlap-free, Overdraw, Arbitrary Abstraction Level
Abstract
Overdraw is inevitable in large-scale scatterplots. Current scatterplot abstraction methods lose features in medium-to-low density regions. We propose a visual abstraction method designed to provide better feature preservation across arbitrary abstraction levels for large-scale scatterplots, particularly in medium-to-low density regions. The method consists of three closely interconnected steps: first, we partition the scatterplot into iso-density regions and equalize visual density; then, we allocate pixels for different classes within each region; finally, we reconstruct the data distribution based on pixels. User studies, quantitative and qualitative evaluations demonstrate that, compared to previous methods, our approach better preserves features and exhibits a special advantage when handling ultra-high dynamic range data distributions.