This study presents a proof of concept for a contactless elevator operation
system aimed at minimizing human intervention while enhancing safety,
intelligence, and efficiency. A microcontroller-based edge device executing
tiny Machine Learning (tinyML) inferences is developed for elevator operation.
Using person detection and keyword spotting algorithms, the system offers
cost-effective and robust units requiring minimal infrastructural changes. The
design incorporates preprocessing steps and quantized convolutional neural
networks in a multitenant framework to optimize accuracy and response time.
Results show a person detection accuracy of 83.34% and keyword spotting
efficacy of 80.5%, with an overall latency under 5 seconds, indicating
effectiveness in real-world scenarios. Unlike current high-cost and
inconsistent contactless technologies, this system leverages tinyML to provide
a cost-effective, reliable, and scalable solution, enhancing user safety and
operational efficiency without significant infrastructural changes. The study
highlights promising results, though further exploration is needed for
scalability and integration with existing systems. The demonstrated energy
efficiency, simplicity, and safety benefits suggest that tinyML adoption could
revolutionize elevator systems, serving as a model for future technological
advancements. This technology could significantly impact public health and
convenience in multi-floor buildings by reducing physical contact and improving
operational efficiency, particularly relevant in the context of pandemics or
hygiene concerns