Abstract

Smart homes are the most important sustainability technology of our future. In smart homes, intelligent monitoring is an important component. However, there is currently no effective method for human posture detection for monitoring in smart homes. So, in this paper, we provide an infrared human posture recognition method for monitoring in sustainable smart homes based on a Hidden Markov Model (HMM). We also trained the model parameters. Our model can be used to effectively classify human postures. Compared with the traditional HMM, this paper puts forward a method to solve the problem of human posture recognition. This paper tries to establish a model of training data according to the characteristics of human postures. Accordingly, this complex problem can be decomposed. Thereby, it can reduce computational complexity. In practical applications, it can improve system performance. Through experimentation in a real environment, the model can identify the different body movement postures by observing the human posture sequence, matching identification and classification process. The results show that the proposed method is feasible and effective for human posture recognition. In addition, for human movement target detection, this paper puts forward a human movement target detection method based on a Gaussian mixture model. For human object contour extraction, this paper puts forward a human object contour extraction method based on the Sobel edge detection operator. Here, we have presented an experiment for human posture recognition, and have also examined our cloud-based monitoring system for elderly people using our method. We have used our method in our actual projects, and the experimental results show that our method is feasible and effective.

Highlights

  • As we all know, the smart house is a platform that integrates network communication technology, intelligent electronic technology, safety technology, remote control, lighting control, surveillance, etc

  • In this paper, we provide an infrared human posture recognition method for monitoring in sustainable smart homes based on a Hidden Markov Model (HMM)

  • The Experiment of Human Posture Recognition Method Based on HMM

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Summary

Introduction

The smart house is a platform that integrates network communication technology, intelligent electronic technology, safety technology, remote control, lighting control, surveillance, etc. There is a need for a human posture recognition system for monitoring in the smart homes of elderly people. In this system, we can recognize sudden illness in old people automatically and contact the hospital. The probability network method is more widely used in human posture recognition. The template matching method transforms the image sequence into a set of static templates and matches the template of the test sequence to a defined reference sequence. In this way, it can obtain a recognition result.

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