A Tiny CNN Architecture for Medical Face Mask Detection for Resource-Constrained Endpoints
Autor: | Aditya Jyoti Paul, Abhay Chirania, Puranjay Mohan |
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Rok vydání: | 2021 |
Předmět: |
Framebuffer
business.industry Computer science 020209 energy 020208 electrical & electronic engineering Resource constrained Inference 02 engineering and technology Microcontroller Transmission (telecommunications) Software deployment Face (geometry) 0202 electrical engineering electronic engineering information engineering Architecture business Computer hardware |
Zdroj: | Lecture Notes in Electrical Engineering ISBN: 9789811607486 |
DOI: | 10.1007/978-981-16-0749-3_52 |
Popis: | The world is going through one of the most dangerous pandemics of all time with the rapid spread of the novel coronavirus (COVID-19). According to the World Health Organisation, the most effective way to thwart the transmission of coronavirus is to wear medical face masks. Monitoring the use of face masks in public places has been a challenge because manual monitoring could be unsafe. This paper proposes an architecture for detecting medical face masks for deployment on resource-constrained endpoints having extremely low memory footprints. A small development board with an ARM Cortex-M7 microcontroller clocked at 480 Mhz and having just 496 KB of framebuffer RAM, has been used for the deployment of the model. Using the TensorFlow Lite framework, the model is quantized to further reduce its size. The proposed model is 138 KB post quantization and runs at the inference speed of 30 FPS. |
Databáze: | OpenAIRE |
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