Abstract

Artificial intelligence (AI) is fundamentally transforming smart buildings by increasing energy efficiency and operational productivity, improving life experience, and providing better healthcare services. Sudden Infant Death Syndrome (SIDS) is an unexpected and unexplained death of infants under one year old. Previous research reports that sleeping on the back can significantly reduce the risk of SIDS. Existing sensor-based wearable or touchable monitors have serious drawbacks such as inconvenience and false alarm, so they are not attractive in monitoring infant sleeping postures. Several recent studies use a camera, portable electronics, and AI algorithm to monitor the sleep postures of infants. However, there are two major bottlenecks that prevent AI from detecting potential baby sleeping hazards in smart buildings. In order to overcome these bottlenecks, in this work, we create a complete dataset containing 10,240 day and night vision samples, and use post-training weight quantization to solve the huge memory demand problem. Experimental results verify the effectiveness and benefits of our proposed idea. Compared with the state-of-the-art AI algorithms in the literature, the proposed method reduces memory footprint by at least 89%, while achieving a similar high detection accuracy of about 90%. Our proposed AI algorithm only requires 6.4 MB of memory space, while other existing AI algorithms for sleep posture detection require 58.2 MB to 275 MB of memory space. This comparison shows that the memory is reduced by at least 9 times without sacrificing the detection accuracy. Therefore, our proposed memory-efficient AI algorithm has great potential to be deployed and to run on edge devices, such as micro-controllers and Raspberry Pi, which have low memory footprint, limited power budget, and constrained computing resources.

Highlights

  • Information technology, especially the Internet of Things (IoT) and artificial intelligence (AI), becomes increasingly popular in smart building applications, such as occupancy estimation for energy-efficient building operations [1,2], and demand-oriented air conditioners [3]

  • The rule of thumb is that a sufficient dataset needs to contain at least times the number of trainable parameters in an AI algorithm

  • All the weights of the AI algorithm are trained by the stochastic gradient descent (SGD) optimizer [39,40]

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Summary

Introduction

Information technology, especially the Internet of Things (IoT) and artificial intelligence (AI), becomes increasingly popular in smart building applications, such as occupancy estimation for energy-efficient building operations [1,2], and demand-oriented air conditioners [3]. With the help of distributed household IoT devices, AI algorithms have been widely used to model the energy consumption characteristics of smart buildings and find the optimal solutions of parameter thresholds and control parameters. Smart buildings can adjust the indoor thermal environment, such as temperature, humidity, or airflow, to improve the comfort of building occupants [4]. Large companies, such as IBM or Intel, are committed to developing AI algorithms for building performance optimization

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