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A Convolutional Neural Network Target Detection and Recognition Method Based on Polarization Scattering Characteristics

A convolutional neural network and target detection technology, which is applied in the field of human security inspection, can solve the problems of complex signal processing and slow detection speed, and achieve the effect of improving item recognition rate, fast detection speed, and simple system structure requirements

Active Publication Date: 2020-12-25
INST OF ELECTRONICS ENG CHINA ACAD OF ENG PHYSICS
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Problems solved by technology

[0004] The present invention provides a convolutional neural network target detection and recognition method based on polarization scattering characteristics, which can not only overcome the relatively complex technical defects in the signal processing process of the existing station-opening security inspection system, but also effectively solve the problem of slow detection speed. This method can play a certain role in the detection and identification of dangerous goods in the background of the human body, and the speed is fast, and the system structure requirements are simple

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  • A Convolutional Neural Network Target Detection and Recognition Method Based on Polarization Scattering Characteristics
  • A Convolutional Neural Network Target Detection and Recognition Method Based on Polarization Scattering Characteristics

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Embodiment Construction

[0019] Such as figure 1 Shown, among them: SHM is the harmonic mixer, LAN is the low noise amplifier.

[0020] The broadband linear frequency modulation continuous wave is generated by the linear frequency modulation source and the frequency multiplication link of the transceiver, and then the target is irradiated by the co-polarized transmitting antenna and the cross-polarized transmitting antenna respectively, and the transmitting time does not overlap with each other, and the receiving antenna adopts time-division multiplexing In this way, the echoes of different polarization modes are respectively received, thereby generating four channels of echo data, which are respectively VV polarization channel, VH polarization channel, HH polarization channel, HV polarization channel and other four channels of echo data. The system adopts the method of deskewing to receive the echo, and the digital receiver samples the target polarization echo. After the chirp signal is deskewed and ...

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Abstract

The invention discloses a convolutional neural network target detection and recognition method based on polarization scattering characteristics. The method comprises the following steps: carrying outirradiation and signal polarization on a target; an echo fed back from the target is received by means of dechirp, wherein the received echo is a target polarized echo; the target polarized echo is sampled, each frame of sampled radar echo data include echo data of a VV polarization channel, a VH polarization channel, an HH polarization channel, and an HV polarization channel; and the four-channelecho data are inputted by a convolutional neural network and thus the dangerous article on the target is detected and identified based on the target polarization characteristics. According to the invention, no imaging processing is required; the detection processing process is simple; the detection speed is fast; and the detection frame rate can reach 10Hz. With the convolutional neural network identification method, the fusion mode of the four-channel echo data with different polarization characteristics is found out, so that the article recognition rate is increased; and thus the certain detection and identification effect for dangerous articles under the body background is realized.

Description

technical field [0001] The invention relates to the technical field of human body security inspection, in particular to a non-imaging dangerous article detection and identification method based on target polarization scattering characteristics in the background of human body. Background technique [0002] The remote security inspection and early warning of human dangerous goods is a difficult problem of anti-terrorism in the world today. Due to its special frequency band, millimeter wave or terahertz has special properties such as penetrating clothing, so it has broad application prospects in the field of security inspection. [0003] At present, the stand-up human body security inspection mainly adopts the active imaging method to realize the detection of dangerous goods. The basic principle is to rely on the mechanical scanning structure to scan the target two-dimensionally to obtain the target image information. The mechanical scanning method greatly reduces its security...

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G01V8/10G01V8/00
CPCG01V8/005G01V8/10
Inventor 崔振茂安健飞成彬彬陆彬岑冀娜刘杰
Owner INST OF ELECTRONICS ENG CHINA ACAD OF ENG PHYSICS
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