Actuation Confirmation and Negation via Facial-Identity and -Expression Recognition

Conference Paper (2018)
Author(s)

A. Cheng (TU Delft - Architectural Engineering, Universidad Internacional SEK, Quito)

Henriette Bier (TU Delft - Architectural Engineering, Anhalt University of Applied Sciences Dessau)

Galoget Latorre (Escuela Politecnica Nacional)

Research Group
Digital Architecture
Copyright
© 2018 Alexander Liu Cheng, H.H. Bier, Galoget Latorre
DOI related publication
https://doi.org/10.1109/ETCM.2018.8580319
More Info
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Publication Year
2018
Language
English
Copyright
© 2018 Alexander Liu Cheng, H.H. Bier, Galoget Latorre
Related content
Research Group
Digital Architecture
Pages (from-to)
168-173
ISBN (print)
9781538666586
ISBN (electronic)
9781538666579
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Abstract

This paper presents the implementation of a facial-identity and-expression recognition mechanism that confirms or negates physical and/or computational actuations in an intelligent built-environment. Said mechanism is built via Google Brain's TensorFlow (as regards facial identity recognition) and Google Cloud Platform's Cloud Vision API (as regards facial gesture recognition); and it is integrated into the ongoing development of an intelligent built-environment framework, viz., Design-To-Robotic-Production &-Operation (D2RP&O), conceived at Delft University of Technology (TUD). The present work builds on the inherited technological ecosystem and technical functionality of the Design-To-Robotic-Operation (D2RO) component of said framework; and its implementation is validated via two scenarios (physical and computational). In the first scenario-and building on an inherited adaptive mechanism-if building-skin components perceive a rise in interior temperature levels, natural ventilation is promoted by increasing degrees of aperture. This measure is presently confirmed or negated by a corresponding facial expression on the part of the user in response to said reaction, which serves as an intuitive override / feedback mechanism to the intelligent building-skin mechanism's decision-making process. In the second scenario-and building on another inherited mechanism-if an accidental fall is detected and the user remains consciously or unconsciously collapsed, a series of automated emergency notifications (e.g., SMS, email, etc.) are sent to family and/or care-Takers by particular mechanisms in the intelligent built-environment. The precision of this measure and its execution are presently confirmed by (a) identity detection of the victim, and (b) recognition of a reflexive facial gesture of pain and/or displeasure. The work presented in this paper promotes a considered relationship between the architecture of the built-environment and the Information and Communication Technologies (ICTs) embedded and/or deployed.

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