CN208297367U - A kind of diseases and pests of agronomic crop information detector based on Machine Vision Recognition - Google Patents
A kind of diseases and pests of agronomic crop information detector based on Machine Vision Recognition Download PDFInfo
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- CN208297367U CN208297367U CN201820778497.3U CN201820778497U CN208297367U CN 208297367 U CN208297367 U CN 208297367U CN 201820778497 U CN201820778497 U CN 201820778497U CN 208297367 U CN208297367 U CN 208297367U
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Abstract
The utility model discloses a kind of diseases and pests of agronomic crop information detector based on Machine Vision Recognition, data storage server, computer, network data console module, data receiver client modules including the image capture device for acquiring crop image information, the crop image information for storing image capture device transmission;Described image acquisition equipment is sequentially connected data storage server, computer, data receiver client modules;The computer connects network data console module;The features such as high timeliness, big workload and repetitive operation that the utility model is detected for diseases and pests of agronomic crop, the image processing techniques of Machine Vision Recognition is applied into diseases and pests of agronomic crop automatic detection, by the fine extraction to crop plant blade, limb feature, realize to the real-time monitoring of disease plant and by defect information warning function.
Description
Technical field
The utility model relates to Machine Vision Recognition Technology field more particularly to a kind of farmings based on Machine Vision Recognition
Object disease and insect information detection device.
Background technique
Plant pest disaster is one of natural calamity, identification, monitoring, early warning be prevention and control decision information source.
In actual production, people still rely on experience, diagnose with feeling to corps diseases, this method is yielded poor results, imitated
Rate is low, far from meeting the needs of domestic agricultural development.It is simple to judge by artificial, often miss diseases and pests of agronomic crop most
The good prevention and treatment phase usually can just be identified when pest and disease damage occurs more serious by naked eyes, and then large dosage is sprayed insecticide, and will cause
The problems such as Practice for Pesticide Residue in Agricultural Products is exceeded, environmental pollution.
Realize diseases and pests of agronomic crop real-time online, cheap lossless machine automatic identification, it can be anti-for diseases and pests of agronomic crop
Control prevention and control provide reliable basis, strive for prevent and treat the time, effectively reduce because manually caused by unnecessary economic loss, reduce simultaneously
Maintenance cost relevant to crops.
Summary of the invention
The shortcomings that the purpose of the utility model is to overcome the above-mentioned prior arts and deficiency, provide that a kind of structure is simple, behaviour
Make the easily diseases and pests of agronomic crop information detector based on Machine Vision Recognition.With the technical solution of machine vision, improve
The timeliness and accuracy of corps diseases detection, have the characteristics that real-time row and automation, avoid the artificial judgment bring time
The problems such as lag is insufficient with detection accuracy.
The utility model is achieved through the following technical solutions:
A kind of diseases and pests of agronomic crop information detector based on Machine Vision Recognition, including for acquiring crop map picture
The image capture device of information, the data storage service for storing the crop image information that image capture device transmission comes
Device, computer, network data console module, data receiver client modules;
Described image acquisition equipment is sequentially connected data storage server, computer, data receiver client modules;It is described
Computer connects network data console module.
It includes Image Acquisition unmanned plane and industrial camera that described image, which acquires equipment,.
The industrial camera, Image Acquisition unmanned plane are located at farmland region, are sent to image information by internet
Data storage server.
The computer, data storage server, data receiver client modules, network data console module pass through interconnection
Net connection.
The pixel of the industrial camera is 5,000,000 pixel industrial cameras.
The data receiver client modules are mobile phone or tablet computer.
The utility model compared with the existing technology, have following advantages and effects
The features such as high timeliness, big workload and repetitive operation that the utility model is detected for diseases and pests of agronomic crop,
The image processing techniques of Machine Vision Recognition is applied into diseases and pests of agronomic crop automatic detection, by crop plant leaf
The fine extraction of piece, limb feature is realized to the real-time monitoring of disease plant and by defect information warning function.
Detailed description of the invention
FIG. 1 is a schematic structural view of the utility model.
Specific embodiment
The utility model is more specifically described in detail combined with specific embodiments below.
Embodiment
As shown in Figure 1.The utility model discloses a kind of diseases and pests of agronomic crop infomation detection based on Machine Vision Recognition
Device, including the image capture device for acquiring crop image information, the agriculture for storing image capture device transmission
Data storage server, computer, network data console module, the data receiver client modules of crop image information;
Described image acquisition equipment is sequentially connected data storage server, computer, data receiver client modules;It is described
Computer connects network data console module.
It includes Image Acquisition unmanned plane and industrial camera that described image, which acquires equipment,.
The industrial camera, Image Acquisition unmanned plane are located at farmland region, are sent to image information by internet
Data storage server.
The computer, data storage server, data receiver client modules, network data console module pass through interconnection
Net connection.
The industrial camera uses DS-2CD3T56WD-I3, and pixel is 5,000,000.
The data receiver client modules are mobile phone or tablet computer.
Network data console module is that Java, html language write software, includes image processing function, can use calculating
Machine, which directly operates, checks monitoring situation and plant diseases information.
Described image acquires unmanned plane and thinks four axis aerial photography aircraft of X4S holder camera using big boundary Inspire2- buddhist.
The computer use Intel (R) Core (TM) i5CPU 1.80GHz, 2G memory, 10G or more hard drive space,
The configuration of Windows 10-64bit operating system.
The data storage server uses DELL-430-E5-2603v3 server.
The computer is connect by internet with data storage server, can be read directly or delete data storage clothes
It is engaged in storing image in device;Computer can be with operational network data platform module, can be to reading by network data console module
To crop image information handled and analyzed, judge that monitored crops whether by disease, are formed simultaneously and export
The disease warning information of crops, disease warning information pass through the Internet transmission simultaneously and are stored in data storage server.
After network data console module exports disease warning information, data receiver client modules are can be used in user, pass through
Mobile Internet connection receives disease warning information, according to information planning and carries out further work.
As described above, the utility model can be realized preferably.
The embodiments of the present invention is simultaneously not restricted to the described embodiments, other are any without departing from the utility model
Made changes, modifications, substitutions, combinations, simplifications under spiritual essence and principle, should be equivalent substitute mode, are included in
Within the protection scope of the utility model.
Claims (6)
1. a kind of diseases and pests of agronomic crop information detector based on Machine Vision Recognition, it is characterised in that:
Including the image capture device for acquiring crop image information, the farming for storing image capture device transmission
Data storage server, computer, network data console module, the data receiver client modules of object image information;
Described image acquisition equipment is sequentially connected data storage server, computer, data receiver client modules;The calculating
Machine connects network data console module.
2. the diseases and pests of agronomic crop information detector based on Machine Vision Recognition according to claim 1, it is characterised in that:
It includes Image Acquisition unmanned plane and industrial camera that described image, which acquires equipment,.
3. the diseases and pests of agronomic crop information detector based on Machine Vision Recognition according to claim 2, it is characterised in that:
The industrial camera, Image Acquisition unmanned plane are located at farmland region, and image information is sent to data storage by internet
Server.
4. the diseases and pests of agronomic crop information detector based on Machine Vision Recognition according to claim 3, it is characterised in that:
The computer, data storage server, data receiver client modules, network data console module are connected by internet.
5. the diseases and pests of agronomic crop information detector based on Machine Vision Recognition according to claim 2, it is characterised in that:
The pixel of the industrial camera is 5,000,000 pixel industrial cameras.
6. the diseases and pests of agronomic crop information detector based on Machine Vision Recognition according to claim 2, it is characterised in that:
The data receiver client modules are mobile phone or tablet computer.
Priority Applications (1)
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CN201820778497.3U CN208297367U (en) | 2018-05-24 | 2018-05-24 | A kind of diseases and pests of agronomic crop information detector based on Machine Vision Recognition |
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CN201820778497.3U CN208297367U (en) | 2018-05-24 | 2018-05-24 | A kind of diseases and pests of agronomic crop information detector based on Machine Vision Recognition |
Publications (1)
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CN208297367U true CN208297367U (en) | 2018-12-28 |
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