GlimpseData: Towards Continuous Vision-Based Personal Analytics
- Seungyeop Han ,
- Rajalakshmi Nandakumar ,
- Matthai Philipose ,
- Arvind Krishnamurthy ,
- David Wetherall
Workshop on Physical Analytics |
Published by ACM - Association for Computing Machinery
Emerging wearable devices provide a new opportunity for mobile context-aware applications to use continuous audio/video sensing data as primitive inputs. Due to the highdatarate and compute-intensive nature of the inputs, it is important to design frameworks and applications to be efficient. We present the GlimpseData framework to collect and analyze data for studying continuous high-datarate mobile perception. As a case study, we show that we can use lowpowered sensors as a filter to avoid sensing and processing video for face detection. Our relatively simple mechanism avoids processing roughly 60% of video frames while missing only 10% of frames with faces in them.
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