CN110400468A - A kind of low speed in long tunnel is with shooting system - Google Patents

A kind of low speed in long tunnel is with shooting system Download PDF

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Publication number
CN110400468A
CN110400468A CN201910794088.1A CN201910794088A CN110400468A CN 110400468 A CN110400468 A CN 110400468A CN 201910794088 A CN201910794088 A CN 201910794088A CN 110400468 A CN110400468 A CN 110400468A
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China
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tunnel
module
study
inspection
exercise data
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CN201910794088.1A
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CN110400468B (en
Inventor
程归兵
余成
柴晓波
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Ningbo Quanhang Machinery Technology Co Ltd
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Ningbo Quanhang Machinery Technology Co Ltd
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Priority to CN201910794088.1A priority Critical patent/CN110400468B/en
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    • GPHYSICS
    • G08SIGNALLING
    • G08GTRAFFIC CONTROL SYSTEMS
    • G08G1/00Traffic control systems for road vehicles
    • G08G1/01Detecting movement of traffic to be counted or controlled
    • G08G1/017Detecting movement of traffic to be counted or controlled identifying vehicles
    • G08G1/0175Detecting movement of traffic to be counted or controlled identifying vehicles by photographing vehicles, e.g. when violating traffic rules

Abstract

The invention discloses the low speed in a kind of long tunnel with shooting system, obtains exercise data stream with shooting system server and inspection mechanism, including fixed point testing agency including being set to the fixed point testing agency of tunnel face, being set in tunnel;Exercise data stream is transmitted to system server by the first communication module;Exercise data stream is analyzed by the study module in system server, and confirms concrete model;According to the learning outcome of concrete model, inspection instruction is issued to inspection mechanism;After inspection mechanism receives inspection instruction, inspection movement can be completed according to described instruction, by, with shooting system server, communication and Data Management Analysis, differentiating different situations in the fixed point testing agency cooperation tunnel of tunnel face, control inspection mechanism action, fastest response is done to the lawbreaker and vehicle that enter tunnel, and warns and reminds illegal activities, while danger early warning is made to the vehicle in tunnel, actively prevent potential dangerous security risk in reduction tunnel.

Description

A kind of low speed in long tunnel is with shooting system
Technical field
The present invention relates to the low speed in Traffic monitoring technical field more particularly to a kind of long tunnel with shooting system.
Background technique
Tunnel is an important location of road, carries most vehicle on road, the current safety in tunnel Always one of the focus that pays attention to of traffic control department.Recently as the continuous development of urban construction, the continuous expansion of city size, The continuous increase of traffic pressure!In Municipal engineering project, the quantity in urban transportation tunnel and high-speed transit tunnel and Scale is constantly riseing, and tunnel operation security has attracted increasing attention!It is car lane pedestrian unrest road in tunnel, non-maneuver The danger that vehicle is strayed into generation is ridden, and agri-vehicle accidentally sails the traffic pressure and hidden peril of accident of tunnel generation, compact car, large size Vehicle runs at a low speed the traffic pressure and hidden trouble of traffic of generation in violation of rules and regulations, traditional capturing system be usually 24 hours along guide rail back and forth Operation, it is passively lasting to being monitored in tunnel, there are the drawbacks of be when tunnel is longer, if capturing system is run to tunnel Tail, and illegal activities tunnel face occur when, capturing system can not be concerned about tunnel face, and there is a situation where only work as capturing system It reruns after an impulse stroke, the exception information in tunnel can be obtained, not only cause information delay, related personnel can not obtain It wins the confidence breath, and can not remind and warn the illegal activities into tunnel, so that the hidden danger for sending traffic accident in tunnel increases.
Summary of the invention
The present invention is in view of the shortcomings of the prior art, provide a kind of low speed in the higher long tunnel of initiative with shooting system, energy The illegal activities entered in tunnel are responded in enough short periods.
In order to solve the above technical problems, the present invention is addressed by the following technical programs: the low speed in a kind of long tunnel With shooting system, including be set to the fixed point testing agency of tunnel face, be set in tunnel with shooting system server and inspection Mechanism includes the following steps: Step 1: pinpointing testing agency obtains exercise data stream;Step 2: exercise data stream passes through first Communication module is transmitted to system server;Step 3: analyzing exercise data stream by the study module in system server, and really Recognize concrete model;Step 4: issuing inspection instruction to inspection mechanism according to the learning outcome of concrete model;Step 5: work as inspection After mechanism receives inspection instruction, inspection movement can be completed according to described instruction.
In above-mentioned technical proposal, the exercise data stream is video flowing.
In above-mentioned technical proposal, the study module includes the first study module, the second study module and third Module is practised, when exercise data stream is uploaded to system server, first by the first study module to the object in exercise data stream Body is identified, and the tool for judging object if the tool judged meets first kind situation as model, is directly sentenced as model Be set to exception, then skip the second study module and be directly entered in third study module progress scene study, if the tool judged as When model does not meet first kind situation, tool is obtained as the speed of model as model depth study to tool by the second study module Information, and calculate and have as whether the velocity information of model abnormal, when tool does not meet systemic presupposition value as the velocity information of model, sentence Determine exercise data throat floater, then scene study is carried out to abnormal exercise data stream by third study module, and according to study As a result inspection instruction is sent.
In above-mentioned technical proposal, when the exercise data determined in the second study module is normal, system server refreshes, existing Some data will newly be obtained the covering of exercise data stream.
In above-mentioned technical proposal, first study module, second study module and the third study module In be all made of YOLOV3 algorithm.
In above-mentioned technical proposal, the inspection instruction is instructed including pedestrian with scene, non-motor vehicle uses scene instruction, Agri-vehicle is instructed with scene instruction, motor vehicles with scene.
In above-mentioned technical proposal, the fixed point testing agency is high-definition camera.
In above-mentioned technical proposal, the inspection mechanism includes audio and inspection host, is provided on the inspection host Patrol checking server, main control module, motion module, the second communication module, alarm warning module, radar module and holder module.
In above-mentioned technical proposal, the transmission mode of the exercise data stream and inspection instruction passes through wifi or 4g/ 5g network.
Compared with prior art, the application has the following beneficial effects: under normal conditions, and car lane pedestrian is random in tunnel The danger that road, non-motor vehicle are strayed into generation is ridden, and agri-vehicle accidentally sails the traffic pressure and hidden peril of accident of tunnel generation To be begun to from tunnel face, therefore, by tunnel face fixed point testing agency cooperate tunnel in shooting system service Device differentiates different situations by communication and Data Management Analysis, controls inspection mechanism action, to the illegal of entrance tunnel Personnel and vehicle make most fast response, and warn and remind illegal activities, while making danger early warning to the vehicle in tunnel, Actively prevent potential dangerous security risk in reduction tunnel.
Specific embodiment
Present invention is further described in detail With reference to embodiment.
Embodiment 1, when occur pedestrian use scene, the system utilization it is as follows.
A kind of low speed in long tunnel with shooting system, including be set to tunnel face for car lane on the outside of tunnel face into The fixed point testing agency of row detection is suitble to fixed point testing agency and crusing robot logical with the setting of shooting system server in tunnel Believe good set-point, inspection mechanism is arranged on the guide rail in tunnel, includes the following steps: Step 1: pinpointing testing agency Exercise data stream is obtained, the various moving objects that will enter tunnel are captured by fixed point testing agency, and will be after candid photograph Obtained various exercise data streams;Pinpoint testing agency is high definition imaging camera machine, and the imaging definition of video camera is Certain, because this time the data flow of acquisition is both for low speed object moving;
Step 2: capturing obtained video flowing the first communication module being located on system server in the form of data traffic System server is uploaded to,
Step 3: system server receives the data flow of fixed point testing agency transmission, data stream transmitting is given to the first study module, The various objects run in the exercise data stream that YOLOV3 can transmit system are screened, and the model for having built up completion is compared Model in library confirms the tool of object moving on car lane as model is pedestrian, non-motor vehicle, agri-vehicle;Third study Module to the pedestrian of identification, non-motor vehicle, agri-vehicle tool as model carry out scene study, by in third study module It is compared with scene library content, confirms that abnormal scene is that pedestrian uses scene;
Step 4: system server can will test pedestrian's fortune after third study module identification scene is that pedestrian uses scene The patrol checking server of inspection mechanism is uploaded to scene instruction;
Step 5: main control module control motion module runs to fixed point inspection after patrol checking server receives pedestrian with scene instruction It surveys mechanism and detects the tunnel face occurred extremely, the abnormal line trace of going forward side by side of confirmation, while main control module controls the second communication module To the distributed audio communication in tunnel, the voice broadcast of the time difference is carried out to the vehicle run in tunnel, prompts tunnel face motor-driven Lane pedestrian's mistake road, vehicle drive with caution, while the in-house alarm modules set certainly of inspection can be continued working uninterruptedly, be prompted Pedestrian leaves car lane, and warns to vehicular traffic around pedestrian, and radar module track really to the exception of car lane Recognize, detects that tunnel car lane restores normal to radar module, each module response releases, and autonomous inspection restores in inspection mechanism.
Long tunnel under normal circumstances there is no the road behavior of pedestrian's mistake, this scene be intended to occur under special fortuitous event to Tunnel face or the pedestrian that will enter on the car lane in tunnel make protection, actively prevent potential dangerous.
Embodiment 2, when occur non-motor vehicle use scene, the system utilization it is as follows.
A kind of low speed in long tunnel with shooting system, including be set to tunnel face for car lane on the outside of tunnel face into The fixed point testing agency of row detection is suitble to fixed point testing agency and crusing robot logical with the setting of shooting system server in tunnel Believe good set-point, inspection mechanism is arranged on the guide rail in tunnel, includes the following steps: Step 1: pinpointing testing agency Exercise data stream is obtained, the various moving objects that will enter tunnel are captured by fixed point testing agency, and will be after candid photograph Obtained various exercise data streams;Pinpoint testing agency is high definition imaging camera machine, and the imaging definition of video camera is Certain, because this time the data flow of acquisition is both for low speed object moving;
Step 2: capturing obtained video flowing the first communication module being located on system server in the form of data traffic System server is uploaded to,
Step 3: system server receives the data flow of fixed point testing agency transmission, data stream transmitting is given to the first study module, The various objects run in the exercise data stream that YOLOV3 can transmit system are screened, and the model for having built up completion is compared Model in library confirms the tool of object moving on car lane as model is pedestrian, non-motor vehicle, agri-vehicle;Third study Module to the pedestrian of identification, non-motor vehicle, agri-vehicle tool as model carry out scene study, by in third study module It is compared with scene library content, confirms that abnormal scene is that non-motor vehicle uses scene;
Step 4: system server can will test non-after third study module identification scene is that non-motor vehicle uses scene Motor vehicle is uploaded to the patrol checking server of inspection mechanism with scene instruction;
Step 5: after patrol checking server receives non-motor vehicle with scene instruction, it is fixed that main control module control motion module is run to Point testing agency detects the tunnel face occurred extremely, the abnormal line trace of going forward side by side of confirmation, while the second communication of main control module control Module is communicated to distributed audio in tunnel, when non-motor vehicle does not enter tunnel, carries out the time difference to the vehicle run in tunnel Voice broadcast, prompt tunnel face non-motor vehicle that will drive into tunnel, traffic drives with caution, while being located at abnormal tunnel face The inspection mechanism of top sounds an alarm non-motor vehicle and it is notified not drive into tunnel, and leaves safely, if it does not listen advice Continue to travel, inspection mechanism main control module communication control module is communicated to distributed audio again, to the vehicle run in long tunnel Carry out the time difference voice broadcast, warning non-motor vehicle be strayed into tunnel, ask traffic to drive with caution, the cloud in inspection mechanism Platform module can carry out candid photograph evidence obtaining, while alarm voice module non-stop run to it, radar module it is abnormal to car lane into Line trace confirmation restores normal to radar module detection tunnel car lane, and each module accordingly releases, and inspection mechanism restores autonomous Inspection.
There is no non-motor vehicles to ride under normal circumstances for long tunnel, this scene is intended to surprisingly drive into tunnel to special occasions Non-motor vehicle protected.
Embodiment 3, when occur agri-vehicle use scene, the system utilization it is as follows.
A kind of low speed in long tunnel with shooting system, including be set to tunnel face for car lane on the outside of tunnel face into The fixed point testing agency of row detection is suitble to fixed point testing agency and crusing robot logical with the setting of shooting system server in tunnel Believe good set-point, inspection mechanism is arranged on the guide rail in tunnel, includes the following steps: Step 1: pinpointing testing agency Exercise data stream is obtained, the various moving objects that will enter tunnel are captured by fixed point testing agency, and will be after candid photograph Obtained various exercise data streams;Pinpoint testing agency is high definition imaging camera machine, and the imaging definition of video camera is Certain, because this time the data flow of acquisition is both for low speed object moving;
Step 2: capturing obtained video flowing the first communication module being located on system server in the form of data traffic System server is uploaded to,
Step 3: system server receives the data flow of fixed point testing agency transmission, data stream transmitting is given to the first study module, The various objects run in the exercise data stream that YOLOV3 can transmit system are screened, and the model for having built up completion is compared Model in library confirms the tool of object moving on car lane as model is pedestrian, non-motor vehicle, agri-vehicle;Third study Module to the pedestrian of identification, non-motor vehicle, agri-vehicle tool as model carry out scene study, by in third study module It is compared with scene library content, confirms that abnormal scene is that agri-vehicle uses scene;
Step 4: system server can will test agriculture after third study module identification scene is that agri-vehicle uses scene The patrol checking server of inspection mechanism is uploaded to scene instruction with vehicle;
Step 5: main control module control motion module runs to fixed point after inspection mechanism receives agri-vehicle with scene instruction Testing agency detects the tunnel face occurred extremely, the abnormal line trace of going forward side by side of confirmation, while main control module communication control module is given Distributed audio communicates in tunnel, and when agri-vehicle does not enter tunnel, the voice of the time difference is carried out to the vehicle run in tunnel Casting prompts tunnel face agri-vehicle that will drive into tunnel, and traffic drives with caution.It is located above abnormal tunnel face simultaneously Inspection mechanism sounds an alarm agri-vehicle and it is notified not drive into tunnel, and leaves safely, if it does not listen advice after continuing It sails, inspection mechanism main control module communication control module is communicated to distributed audio again, is carried out to the vehicle run in long tunnel The voice broadcast of the time difference, warning agri-vehicle are strayed into tunnel, ask traffic to drive with caution, inspection machine user tripod head module and meeting A candid photograph evidence obtaining, while alarm voice module non-stop run are carried out to it, and the traffic around agricultural vehicle is shown It is alert, and front vehicle is prompted to drive safely, it please don't overtake other vehicles, radar module carries out tracking confirmation to car lane extremely, to agricultural Vehicle leaves tunnel, and radar module detects tunnel car lane and restores normal, and each module accordingly releases, and inspection mechanism restores autonomous Inspection.
Tunnel often has agri-vehicle to be strayed into happen, and what tunnel generated, which overtake other vehicles and knock into the back, happens occasionally, this scene is intended to Agri-vehicle itself and front vehicle are protected.
Embodiment 4, when occur motor vehicles use scene, the system utilization it is as follows.
A kind of low speed in long tunnel with shooting system, including be set to tunnel face for car lane on the outside of tunnel face into The fixed point testing agency of row detection is suitble to fixed point testing agency and crusing robot logical with the setting of shooting system server in tunnel Believe good set-point, inspection mechanism is arranged on the guide rail in tunnel, includes the following steps: Step 1: pinpointing testing agency Exercise data stream is obtained, the various moving objects that will enter tunnel are captured by fixed point testing agency, and will be after candid photograph Obtained various exercise data streams;Pinpoint testing agency is high definition imaging camera machine, and the imaging definition of video camera is Certain, because this time the data flow of acquisition is both for low speed object moving;
Step 2: capturing obtained video flowing the first communication module being located on system server in the form of data traffic System server is uploaded to,
Step 3: system server receives the data flow of fixed point testing agency transmission, data stream transmitting is given to the first study module, The various objects run in the exercise data stream that YOLOV3 can transmit system are screened, and the model for having built up completion is compared Model in library confirms the tool of object moving on car lane as model is motor vehicle (including trolley, motorcycle, lorry);With Afterwards have motor vehicle as model depth study by the second study module, obtains the velocity information having as model, the view pulled out Frequency stream calculates the speed of object, obtains a values for actual speed V, and a speed pre-settings lowest bid is set in YOLOV3 Quasi- V0, when values for actual speed V is less than the speed pre-settings standard V0 of setting, confirmation motor vehicle is operating abnormally, and otherwise, which will It can be covered by new exercise data stream;Third study module as model progress scene study, leads to the motorcycle model tool of identification It crosses and uses scene with comparing in third study module with scene library content, the abnormal scene of confirmation for motor vehicles;
Step 4: system server can will test machine after third study module identification scene is that motor vehicles use scene Motor-car is uploaded to the patrol checking server of inspection mechanism with scene instruction;
Step 5: main control module control motion module runs to fixed point after inspection mechanism receives agri-vehicle with scene instruction Testing agency detects the tunnel face occurred extremely, the abnormal line trace of going forward side by side of confirmation, the main control module communication control of inspection mechanism Module is communicated to distributed audio, and the voice broadcast of the time difference is carried out to the vehicle run in long tunnel, and warning tunnel has vehicle different Often traveling, asks traffic to drive with caution, and inspection mechanism holder module simultaneously can carry out a candid photograph evidence obtaining to it, while alarm language Sound module non-stop run, warns to the traffic around abnormal motor vehicle, and front vehicle is prompted to drive safely, asks It does not overtake other vehicles, radar module carries out tracking confirmation to car lane extremely, restores normally travel to motor vehicles or leaves tunnel, thunder Restore normal up to module detection tunnel car lane, each module accordingly releases, and autonomous inspection restores in inspection mechanism.
Often there is motor vehicles low-velocity anomal traveling in tunnel, brings tunnel current very big hidden trouble of traffic, this scene is intended to Hidden danger is checked in tunnel face in advance, and the accident potential in tunnel is brought to avoid driving vehicle abnormal in tunnel.
Protection scope of the present invention includes but is not limited to embodiment of above, and protection scope of the present invention is with claims Subject to, replacement, deformation, the improvement that those skilled in the art that any pair of this technology is made is readily apparent that each fall within of the invention Protection scope.

Claims (9)

1. the low speed in a kind of long tunnel is with shooting system, which is characterized in that including being set to the fixed point testing agency of tunnel face, setting Be placed in tunnel with shooting system server and inspection mechanism, include the following steps: Step 1: pinpoint testing agency obtain fortune Dynamic data flow;Step 2: exercise data stream is transmitted to system server by the first communication module;Step 3: being taken by system The study module being engaged in device analyzes exercise data stream, and confirms concrete model;Step 4: according to the learning outcome of concrete model, Inspection instruction is issued to inspection mechanism;Step 5: after inspection mechanism receives inspection instruction, inspection can be completed according to described instruction Movement.
2. the low speed in a kind of long tunnel according to claim 1 is with shooting system, which is characterized in that the exercise data stream For video data.
3. the low speed in a kind of long tunnel according to claim 1 is with shooting system, which is characterized in that the study module Including the first study module, the second study module and third study module, when exercise data stream is uploaded to system server, The object in exercise data stream is identified by the first study module first, and judges the tool of object as model, if sentencing It is disconnected go out tool when meeting first kind situation as model, then be directly determined as exception, then skip the second study module and be directly entered the Scene study is carried out in three study modules, if the tool judged does not meet first kind situation as model, passes through the second study mould Block, as model depth study, obtains tool as the velocity information of model to tool, and calculates and have as whether the velocity information of model is abnormal, When tool does not meet systemic presupposition value as the velocity information of model, exercise data throat floater is determined, then pass through third study module pair Abnormal exercise data stream carries out scene study, and sends inspection instruction according to learning outcome.
4. the low speed in a kind of long tunnel according to claim 3 is with shooting system, which is characterized in that when the second study module When the exercise data of middle judgement is normal, system server refreshes, and existing data cover the exercise data stream newly obtained, the Two study modules continue to identify the exercise data stream after refreshing.
5. the low speed in a kind of long tunnel according to claim 3 is with shooting system, which is characterized in that the first study mould YOLOV3 algorithm has been all made of in block, second study module and the third study module.
6. the low speed in a kind of long tunnel according to claim 1 is with shooting system, which is characterized in that the inspection instruction packet It includes pedestrian and uses scene instruction, motor vehicles with scene with scene instruction, agri-vehicle with scene instruction, non-motor vehicle Instruction.
7. the low speed in a kind of long tunnel according to claim 1 is with shooting system, which is characterized in that the fixed point detection machine Structure is high-definition camera.
8. the low speed in a kind of long tunnel according to claim 1 is with shooting system, which is characterized in that inspection mechanism packet Audio and inspection host are included, patrol checking server, main control module, motion module, the second communication are provided on the inspection host Module, alarm warning module, radar module and holder module.
9. the low speed in a kind of long tunnel according to claim 1 is with shooting system, which is characterized in that the exercise data stream And the transmission mode of inspection instruction passes through wifi 4g/5g network.
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