CMU-HCII-19-103 Human-Computer Interaction Institute School of Computer Science, Carnegie Mellon University
Context-Driven Implicit Interactions Gierad Laput August 2019 Ph.D. Thesis
In this dissertation, I discuss the construction and evaluation of sensing technologies that can be practically deployed and yet still greatly enhance contextual awareness, primarily drawing upon machine learning to unlock a wide range of applications. I attack this problem area on two fronts: 1) supporting sensing expressiveness via context-sensitive wearable devices, and 2) achieving general-purpose sensing through sparse environment instrumentation. Finally, I explore how such sensing schemes can become more practical, by reducing user burden through data-driven approaches. I discuss algorithms and pipelines that extract meaningful signals and patterns from sensor data to enable high-level abstraction and interaction. I also discuss system and human-centric challenges, and I conclude with a vision of how rich contextual awareness can enable more powerful experiences across broader domains.
237 pages
Jodi Forlizzi, Head, Human-Computer Interaction Institute
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