SAPPHIRE: an always-on context-aware computer vision system for portable devices

DATE(2015)

引用 13|浏览97
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摘要
Being aware of objects in the ambient provides a new dimension of context awareness. Towards this goal, we present a system that exploits powerful computer vision algorithms in the cloud by collecting data through always-on cameras on portable devices. To reduce comunication-energy costs, our system allows client devices to continually analyze streams of video and distill out frames that contain objects of interest. Through a dedicated image-classification engine SAPPHIRE, we show that if an object is found in 5% of all frames, we end up selecting 30% of them to be able to detect the object 90% of the time: 70% data reduction on the client device at a cost of ≤ 60mW of power (45nm ASIC). By doing so, we demonstrate system-level energy reductions of ≥ 2x. Thanks to multiple levels of pipelining and parallel vector-reduction stages, SAPPHIRE consumes only 3.0 mJ/frame and 38 pJ/OP - estimated to be lower by 11.4x than a 45 nm GPU - and a slightly higher level of peak performance (29 vs. 20 GFLOPS). Further, compared to a parallelized sofware implementation on a mobile CPU, it provides a processing speed up of up to 235x (1.81 s vs. 7.7 ms/frame), which is necessary to meet the real-time processing needs of an always-on context-aware system.
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关键词
asic,computational modeling,energy efficiency,application specific integrated circuits,data reduction,object recognition,algorithm design and analysis,ubiquitous computing,hardware acceleration,engines,mobile cpu,computer vision,image classification
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