MultiSegVA: Using Visual Analytics to Segment Biologging Time Series on Multiple Scales

Philipp Meschenmoser, Juri Buchmuller, Daniel Seebacher, Martin Wikelski, Daniel Keim

View presentation:2020-10-28T16:30:00ZGMT-0600Change your timezone on the schedule page
2020-10-28T16:30:00Z
Exemplar figure
We present our multi-window web platform MultiSegVA to easily segment biologging time series on multiple scales. We contribute tailored visual-interactive features for multi-scale time series segmentation, a new visual query language, and a domain-oriented set of techniques that are consumed by the VQL.
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Direct link to video on YouTube: https://youtu.be/Zqqlgv7ZaV0

Keywords

Visual analytics, time series segmentation, multi-scale analyses, movement ecology

Abstract

Segmenting biologging time series of animals on multiple temporal scales is an essential step that requires complex techniques with careful parameterization and possibly cross-domain expertise. Yet, there is a lack of visual-interactive tools that strongly support such multi-scale segmentation. To close this gap, we present our MultiSegVA platform for interactively defining segmentation techniques and parameters on multiple temporal scales. MultiSegVA primarily contributes tailored, visual-interactive means and visual analytics paradigms for segmenting unlabeled time series on multiple scales. Further, to flexibly compose the multi-scale segmentation, the platform contributes a new visual query language that links a variety of segmentation techniques. To illustrate our approach, we present a domain-oriented set of segmentation techniques derived in collaboration with movement ecologists. We demonstrate the applicability and usefulness of MultiSegVA in two real-world use cases from movement ecology, related to behavior analysis after environment-aware segmentation, and after progressive clustering. Expert feedback from movement ecologists shows the effectiveness of tailored visual-interactive means and visual analytics paradigms at segmenting multi-scale data, enabling them to perform semantically meaningful analyses. A third use case demonstrates that MultiSegVA is generalizable to other domains.