Efficient Pipelines for Vision-Based Context Sensing
Xiaochen Liu

TL;DR
This paper presents scalable, efficient vision-based context sensing pipelines that leverage advanced algorithms to improve accuracy and reduce manual effort in large-scale data collection and analysis for mobile and ubiquitous computing.
Contribution
It introduces novel solutions across the sensing task, sensor types, and task locations dimensions, achieving state-of-the-art accuracy and providing design guidelines for such systems.
Findings
Developed scalable vision sensing solutions
Achieved state-of-the-art accuracy in context recognition
Provided design guidelines for vision-based sensing systems
Abstract
Context awareness is an essential part of mobile and ubiquitous computing. Its goal is to unveil situational information about mobile users like locations and activities. The sensed context can enable many services like navigation, AR, and smarting shopping. Such context can be sensed in different ways including visual sensors. There is an emergence of vision sources deployed worldwide. The cameras could be installed on roadside, in-house, and on mobile platforms. This trend provides huge amount of vision data that could be used for context sensing. However, the vision data collection and analytics are still highly manual today. It is hard to deploy cameras at large scale for data collection. Organizing and labeling context from the data are also labor intensive. In recent years, advanced vision algorithms and deep neural networks are used to help analyze vision data. But this approach…
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Taxonomy
TopicsVideo Surveillance and Tracking Methods · Indoor and Outdoor Localization Technologies · Context-Aware Activity Recognition Systems
