Flexible computational photodetectors for self-powered activity sensing

Conventional vision-based systems, such as cameras, have demonstrated their enormous versatility in sensing human activities and developing interactive environments. However, these systems have long been criticized for incurring privacy, power, and latency issues due to their underlying structure of...

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Veröffentlicht in:Npj flexible electronics 2022-01, Vol.6 (1), p.1-8, Article 7
Hauptverfasser: Zhang, Dingtian, Fuentes-Hernandez, Canek, Vijayan, Raaghesh, Zhang, Yang, Li, Yunzhi, Park, Jung Wook, Wang, Yiyang, Zhao, Yuhui, Arora, Nivedita, Mirzazadeh, Ali, Do, Youngwook, Cheng, Tingyu, Swaminathan, Saiganesh, Starner, Thad, Andrew, Trisha L., Abowd, Gregory D.
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Sprache:eng
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Zusammenfassung:Conventional vision-based systems, such as cameras, have demonstrated their enormous versatility in sensing human activities and developing interactive environments. However, these systems have long been criticized for incurring privacy, power, and latency issues due to their underlying structure of pixel-wise analog signal acquisition, computation, and communication. In this research, we overcome these limitations by introducing in-sensor analog computation through the distribution of interconnected photodetectors in space, having a weighted responsivity, to create what we call a computational photodetector. Computational photodetectors can be used to extract mid-level vision features as a single continuous analog signal measured via a two-pin connection. We develop computational photodetectors using thin and flexible low-noise organic photodiode arrays coupled with a self-powered wireless system to demonstrate a set of designs that capture position, orientation, direction, speed, and identification information, in a range of applications from explicit interactions on everyday surfaces to implicit activity detection.
ISSN:2397-4621
2397-4621
DOI:10.1038/s41528-022-00137-z