A Deep Learning-Based Face Mask Detector for Autonomous Nano-Drones (Student Abstract)

Eiman Alnuaimi, Elia Cereda, Rafail Psiakis, Suresh Sugumar, Alessandro Giusti, Daniele Palossi

[AAAI-22] Student Abstract and Poster Program
Abstract: We present a deep neural network (DNN) for visually classifying whether a person is wearing a protective face mask. Our DNN can be deployed on a resource-limited, sub-10-cm nano-drone: this robotic platform is an ideal candidate to fly in human proximity and perform ubiquitous visual perception safely. This paper describes our pipeline, starting from the dataset collection; the selection and training of a full-precision (i.e., float32) DNN; a quantization phase (i.e., int8), enabling the DNN's deployment on a parallel ultra-low power (PULP) system-on-chip aboard our target nano-drone. Results demonstrate the efficacy of our pipeline with a mean area under the ROC curve score of 0.81, which drops by only ~2% when quantized to 8-bit for deployment.

Sessions where this paper appears

  • Poster Session 5

    Sat, February 26 12:45 AM - 2:30 AM (+00:00)
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  • Poster Session 12

    Mon, February 28 8:45 AM - 10:30 AM (+00:00)
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