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Fatigue driving electroencephalographic monitoring method

A fatigue driving and EEG technology, applied in the field of EEG monitoring, can solve problems such as lack of universal applicability, inconvenient steering wheel operation, and inability to solve the problem of falling asleep suddenly

Inactive Publication Date: 2016-06-01
XIAN UNIV OF SCI & TECH
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  • Summary
  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

Nowadays, various technical means to reduce the occurrence of traffic accidents and reduce casualties have been applied. Currently, the most used fatigue detection method is the analysis of driver's driving behavior, that is, by recording and analyzing the driver's steering wheel, stepping on the brakes, etc. and other behavioral characteristics to judge whether the driver is fatigued; however, this method is greatly affected by the driver's driving habits, and there is no unified, scientific and effective judgment theory to support it
Another type of fatigue detection method is to evaluate the fatigue of the driver's face and eye features through image analysis. This method uses the image acquisition and processing system to analyze whether the current driver is fatigued. It has certain real-time performance, but it is still not widely used. Applicability, because the biological characteristics of each person are different, and the external performance of some people's eyes does not represent the mental state at the moment, so there are also large errors; in addition, the current image acquisition and processing methods used in this method The system mainly includes ARM-based fatigue driving detection system, ear-mounted fatigue warning device, watch-type fatigue driving detection system, steering wheel touch-type fatigue driving detection system, etc. The problem with the ARM-based fatigue driving detection system is that the system structure is too complicated , the function is single, and the reliability is poor; the function of the ear-hanging fatigue alarm is very simple, and the alarm is issued when the head is lowered. ;The watch-type fatigue driving detection system uses the beating of the pulse to estimate whether a person is tired. There is no scientific theoretical support and authoritative scientific basis, and it cannot solve the problem of falling asleep suddenly; Some sensors are used to sense whether the driver is holding the steering wheel, and whether the driver is holding the steering wheel is not directly related to the fatigue state, and the installation of the sensor makes the steering wheel operation inconvenient
[0003] In addition, most of the fatigue driving detection methods currently used are measured before or after driving, which are leading or lagging, rather than real-time. Moreover, it is very difficult to install complex detection instruments in the limited space of the cab; and , the driver's mental state is different when he leaves the cab or does not enter the cab

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  • Fatigue driving electroencephalographic monitoring method
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  • Fatigue driving electroencephalographic monitoring method

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Embodiment Construction

[0100] Such as figure 1 A kind of fatigue driving EEG monitoring method shown, comprises the following steps:

[0101] Step 1, equipment connection and parameter initialization: connect the EEG signal acquisition device 1 to the EEG signal monitoring terminal 2, and set the fatigue step parameter s_c through the main control chip 2-1 of the EEG signal monitoring terminal 2; , the value of the fatigue step parameter s_c is 0;

[0102] The EEG acquisition device 1 is a MindwaveMobile brain cube earphone or a TGAM module; the EEG monitoring device 2 includes a master chip 2-1 and a clock circuit 2-6 connected to the master chip 2-1 and an alarm respectively. Tip Unit 2-2.

[0103] In actual use, the EEG signal monitoring device 2 is located in the vehicle driven by the driver.

[0104] Step 2. Brain wave signal collection: use the brain wave signal acquisition device 1 to collect and preprocess the driver's brain wave signal according to the preset sampling frequency, and tran...

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Abstract

The invention discloses a fatigue driving electroencephalographic monitoring method. The method includes steps: firstly, device connection and parameter initialization, to be more specific, connecting an electroencephalographic signal acquisition device to an electroencephalographic signal monitoring terminal, and setting fatigue step parameters; secondly, electroencephalographic signal acquisition, to be more specific, using the electroencephalographic signal acquisition device for acquiring and preprocessing electroencephalographic signals of a driver and synchronously transmitting the electroencephalographic signals to the electroencephalographic signal monitoring terminal; thirdly, electroencephalographic signal analytical processing, to be more specific, using the electroencephalographic signal monitoring terminal for calling an electrooculogram judgment module to analytically process the electroencephalographic signals acquired and preprocessed by the electroencephalographic signal acquisition device, namely blink frequency judgment threshold determination, electroencephalographic signal analytical processing before fatigue driving judgment and electroencephalographic signal analytical processing after starting of fatigue driving judgment. The fatigue driving electroencephalographic monitoring method has the advantages of simple procedures, reasonable design, convenience in implementation, effectiveness and simplicity, convenience, quickness and timeliness in accurate monitoring of a fatigue driving state of the driver.

Description

technical field [0001] The invention belongs to the technical field of electroencephalogram monitoring, and in particular relates to an electroencephalogram monitoring method for fatigue driving. Background technique [0002] With the development of my country's economy and society, the rapid growth of my country's highway road construction, the number of cars and drivers has also increased rapidly, which brings convenience to daily life. At the same time, frequent traffic accidents have also brought major social consequences loss. Nowadays, various technical means to reduce the occurrence of traffic accidents and reduce casualties have been applied. Currently, the most used fatigue detection method is the analysis of driver's driving behavior, that is, by recording and analyzing the driver's steering wheel, stepping on the brakes, etc. Behavior characteristics such as driver fatigue can be judged; however, this method is greatly affected by the driver's driving habits, and ...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): A61B5/0476A61B5/18
CPCA61B5/0006A61B5/18A61B5/72A61B5/7405A61B5/746A61B2503/22A61B5/369
Inventor 汪梅程松贺开明高唱
Owner XIAN UNIV OF SCI & TECH
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