Abstract

Millimeter-wave (MMW) imaging scanners can see through clothing to form a three-dimensional holographic image of the human body and suspicious objects, providing a harmless alternative for non-contacting searches in security check. Suspicious object detection in MMW images is challenging, since most of them are small, reflection-weak, shape, and reflection-diverse. Conventional detectors with artificial neural networks, like convolution neural network (CNN), usually take the problem of finding suspicious objects as an object recognition task, yielding difficulties in developing large-amount and complete sample sets of objects. In this paper, a new algorithm is developed using the human pose segmentation followed by the deep CNN detection. The algorithm is emphasized to learn the similarity with humans’ body clutter applied to training corresponding CNNs after the image segmentation base of the pose estimation. Moreover, the suspicious object recognition in the MMW image is converted to a binary classification task. Instead of recognizing all sorts of suspicious objects, the CNN detector determines whether the body part images present the abnormal patterns containing suspicious objects. The proposed algorithm that is based on CNN with the pose segmentation has concise configuration, but optimal performance in the suspicious object detection. Extensive experiments confirm the effectiveness and superiority of the proposal.

Highlights

  • More security checks have been deployed to react the high-risk security environment due to the ongoing threat of terrorism [1]

  • Clutter feature learning rather than suspicious object feature learning is applied in our algorithm, a novel suspicious object detection algorithm based on MMW human image segmentation followed by deep convolution neural network (CNN) detection is developed in this paper in order to overcome these difficulties

  • The improved Convolution pose machine (CPM) is used for the pose estimation on complete MMW human images to obtain the coordinates of every joints

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Summary

Introduction

More security checks have been deployed to react the high-risk security environment due to the ongoing threat of terrorism [1]. Traditional security-check measures, such as X-ray equipment, arched metal detectors, and manual inspection, have shortcomings. X-rays harm the human body, arched metal detectors only discern metal objects, and manual inspection poses the risk of personal discomfort. The millimeter-wave (MMW) three-dimensional imaging scanner [2,3,4,5,6,7] based on the near-field synthetic aperture radar (NF-SAR) three-dimensional imaging technology [8,9,10,11] offers an alternative. When compared with the traditional security-check measures, the MMW three-dimensional imaging scanner can provide the following advantages: 1. Active MMW three-dimensional imaging scanner can see through clothing to imaging suspicious objects. Sensors 2020, 20, 4974 based on the application requirements of the MMW three-dimensional imaging scanner, studying the automatic object detection and recognition algorithms for the MMW image is of great significance

Related Work
The Proposed Algorithm
2: CPM until convergence and obtain the well-trained weights and biases
Human Posture Estimation and Image Segmentation
Suspicious Object Detector
Experimental Dataset and Environment
Experiments and Discussion
Findings
Methods
Conclusions
Full Text
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