Abstract

The human body generates infrared radiation through the thermal movement of molecules. Based on this phenomenon, infrared images of the human body are often used for monitoring and tracking. Among them, key point location on infrared images of the human body is an important technology in medical infrared image processing. However, the fuzzy edges, poor detail resolution, and uneven brightness distribution of the infrared image of the human body cause great difficulties in positioning. Therefore, how to improve the positioning accuracy of key points in human infrared images has become the main research direction. In this study, a multi-scale convolution fusion deep residual network (Mscf-ResNet) model is proposed for human body infrared image positioning. This model is based on the traditional ResNet, changing the single-scale convolution to multi-scale and fusing the information of different receptive fields, so that the extracted features are more abundant and the degradation problem, caused by the excessively deep network, is avoided. The experiments show that our proposed method has higher key point positioning accuracy than other methods. At the same time, because the network structure of this paper is too deep, there are too many parameters and a large volume of calculations. Therefore, a more lightweight network model is the direction of future research.

Highlights

  • IntroductionIn addition to military applications, infrared imaging technology is widely used in many civilian fields, such as industrial monitoring [2], medical treatment [3], remote sensing [4], and night vision [5]

  • Infrared imaging technology has the advantages of night vision, good concealment, strong transmission ability, and immunity from electromagnetic wave interference [1].In addition to military applications, infrared imaging technology is widely used in many civilian fields, such as industrial monitoring [2], medical treatment [3], remote sensing [4], and night vision [5]

  • In order to solve these problems, in this paper, we propose a multi-scale convolutional fusion residual network (Mscf-ResNet)

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Summary

Introduction

In addition to military applications, infrared imaging technology is widely used in many civilian fields, such as industrial monitoring [2], medical treatment [3], remote sensing [4], and night vision [5]. Key point detection in human body infrared images is an important research direction in relation to human body pose estimation, and it is widely used in various fields of computer vision. Changes in human body posture caused by body bending or deformation make it difficult to locate key points. Human body key point positioning consists of locating the key parts of the human body in pictures or videos, such as the shoulders, elbows, wrists, and other areas.

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