CN110135342A - Kitchen monitoring device based on artificial intelligence - Google Patents
Kitchen monitoring device based on artificial intelligence Download PDFInfo
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- CN110135342A CN110135342A CN201910404711.8A CN201910404711A CN110135342A CN 110135342 A CN110135342 A CN 110135342A CN 201910404711 A CN201910404711 A CN 201910404711A CN 110135342 A CN110135342 A CN 110135342A
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Abstract
The present embodiments relate to computer technology artificial intelligence fields, and in particular to the kitchen monitoring device based on artificial intelligence.By obtaining cooking apparatus image, the cooking apparatus image that will acquire is input to cooking apparatus monitoring model trained in advance, obtain the corresponding parameter of cooking apparatus, parameter includes the type and operating status of cooking apparatus, to improve the degree of automation, intelligence degree, accuracy rate and the efficiency of kitchen monitoring.
Description
Technical field
The invention relates to computer technology artificial intelligence fields, and in particular to the kitchen monitoring based on artificial intelligence
Method and apparatus.
Background technique
With the development of artificial intelligence technology, image recognition technology is widely used.Image recognition refers to utilization
Computer handles image, analyzed and is understood, to identify the target of various different modes and to the technology of picture.Image recognition
Development experience three phases: Text region, Digital Image Processing and identification, object identification.
Extensive with household electrical appliance is popularized, and becoming for this has also been complied in emphasis area of the kitchen as home life
Gesture.However, household electrical appliance are while the home life to user brings and facilitates, there is also many inconvenience, such as it is adjoint
Intelligence degree is lower, security risk or mismanagement, etc. caused by ageing equipment or misoperation.
Therefore, the real time monitoring for how realizing cooking apparatus, kitchen nobody in the state of or the case where misoperation keep away
The generation for exempting from harm ensures safety or reduces waste, becomes a technical problem to be solved urgently.
Summary of the invention
The embodiment of the present application proposes a kind of kitchen monitoring method and device based on artificial intelligence.
In a first aspect, the embodiment of the present application provides a kind of kitchen monitoring method based on artificial intelligence, comprising:
Obtain cooking apparatus image;
The cooking apparatus image that will acquire is input to cooking apparatus monitoring model trained in advance, and it is corresponding to obtain cooking apparatus
Parameter, parameter include the type and operating status of cooking apparatus.
In some embodiments, this method comprises: calculating corresponding runing time based on parameter.
In some embodiments, this method comprises: being based on parameter and runing time, corresponding preset is taken according to pre-seting
Movement.
In some embodiments, operating status include combustion state be more than preset condition, combustion state include burning time,
Combustion range, ignition temperature.
In some embodiments, operating status includes the corresponding safe condition of cooking apparatus, and safe condition is pre- including meeting
Quasi- easy of bidding falls, children are close, the safe condition of child resistant and/or operator.
In some embodiments, training obtains cooking apparatus monitoring model trained in advance as follows:
Acquire the sample image of default cooking apparatus;
Collected sample image is demarcated by presetting method, obtains known recognition result;
Using machine learning method, using sample image as input, using the corresponding known recognition result of the sample image as defeated
Out, universal monitor model trained in advance is trained to obtain cooking apparatus monitoring model.
In some embodiments, collected sample image is demarcated by presetting method, obtains known identification knot
Fruit includes the following steps:
Default cooking apparatus is adjusted to preset operating status;
Notice plate is placed into the corresponding pre-set image region of cooking apparatus;
Obtain the cooking apparatus image for having notice plate;
Cooking apparatus image is input to markup model trained in advance, obtains known recognition result.
In some embodiments, training obtains universal monitor model trained in advance as follows:
Obtain sample data sets, wherein each sample data in sample data sets include sample kitchen equipment image and
Known recognition result, it is known that recognition result includes the preset kind and preset operating state of cooking apparatus.
It is using sample kitchen equipment image as input, the sample input data is corresponding using machine learning method
Know that recognition result as output, is trained to obtain model to preset initial model.
Second aspect, the embodiment of the present application provide a kind of electronic equipment, comprising:
One or more processors;
Storage device is stored thereon with one or more programs, when one or more programs are executed by one or more processors,
So that one or more processors realize the method as described in any in the embodiment of the present invention.
The third aspect, the embodiment of the present application provide a kind of computer-readable medium, are stored thereon with computer program,
In, the method as described in any in the embodiment of the present invention is realized when which is executed by processor.
Fourth aspect, the embodiment of the present application provide a kind of kitchen monitoring device based on artificial intelligence, which is characterized in that
Include:
Image acquisition unit is configured for obtaining cooking apparatus image;
Parameter monitoring unit, the cooking apparatus image for being configured for will acquire are input to cooking apparatus prison trained in advance
Model is controlled, obtains the corresponding parameter of cooking apparatus, parameter includes the type and operating status of cooking apparatus.
In some embodiments, which includes:
Time calculating unit is configured for calculating corresponding runing time based on parameter.
In some embodiments, which includes:
Action execution unit is configured for taking corresponding deliberate action according to pre-seting based on parameter and runing time.
In some embodiments, operating status include combustion state be more than preset condition, combustion state include burning time,
Combustion range, ignition temperature.
In some embodiments, operating status includes the corresponding safe condition of cooking apparatus, and safe condition is pre- including meeting
Quasi- easy of bidding falls, children are close, the safe condition of child resistant and/or operator.
In some embodiments, training obtains cooking apparatus monitoring model trained in advance as follows:
Acquire the sample image of default cooking apparatus;
Collected sample image is demarcated by presetting method, obtains known recognition result;
Using machine learning method, using sample image as input, using the corresponding known recognition result of the sample image as defeated
Out, universal monitor model trained in advance is trained to obtain cooking apparatus monitoring model.
In some embodiments, collected sample image is demarcated by presetting method, obtains known identification knot
Fruit includes the following steps:
Default cooking apparatus is adjusted to preset operating status;
Notice plate is placed into the corresponding pre-set image region of cooking apparatus;
Obtain the cooking apparatus image for having notice plate;
Cooking apparatus image is input to markup model trained in advance, obtains known recognition result.
In some embodiments, training obtains universal monitor model trained in advance as follows:
Obtain sample data sets, wherein each sample data in sample data sets include sample kitchen equipment image and
Known recognition result, it is known that recognition result includes the preset kind and preset operating state of cooking apparatus.
It is using sample kitchen equipment image as input, the sample input data is corresponding using machine learning method
Know that recognition result as output, is trained to obtain model to preset initial model.
5th aspect, the embodiment of the present application provides a kind of system, including the dress as described in any in the embodiment of the present invention
It sets.
6th aspect, the embodiment of the present application provide a kind of video equipment, including as described in any in the embodiment of the present invention
Device.
Kitchen monitoring method and device provided by the embodiments of the present application based on artificial intelligence, by obtaining cooking apparatus figure
Picture, the cooking apparatus image that will acquire are input to cooking apparatus monitoring model trained in advance, it is corresponding to obtain cooking apparatus
Parameter, parameter include the type and operating status of cooking apparatus, to improve the degree of automation of kitchen monitoring, intelligent journey
Degree, accuracy rate and efficiency.
Detailed description of the invention
By reading a detailed description of non-restrictive embodiments in the light of the attached drawings below, the application's is other
Feature, objects and advantages will become more apparent upon:
Fig. 1 is that one embodiment of the application can be applied to exemplary system architecture figure therein;
Fig. 2 is the base according to the application based on the flow chart of one embodiment of the kitchen monitoring method of artificial intelligence;
Fig. 3 is the schematic diagram according to an application scenarios of the kitchen monitoring method based on artificial intelligence of the application;
Fig. 4 is another reality according to the kitchen monitoring method and the relevant various models of device based on artificial intelligence of the application
Apply the flow chart of example;
Fig. 5 is the structural schematic diagram according to one embodiment of the kitchen monitoring device based on artificial intelligence of the application;
Fig. 6 is adapted for the structural schematic diagram for the computer system for realizing the server of the embodiment of the present application.
Specific embodiment
The application is described in further detail with reference to the accompanying drawings and examples.It is understood that this place is retouched
The specific embodiment stated is used only for explaining related invention, rather than the restriction to the invention.It also should be noted that in order to
Convenient for description, part relevant to related invention is illustrated only in attached drawing.
It should be noted that in the absence of conflict, the features in the embodiments and the embodiments of the present application can phase
Mutually combination.The application is described in detail below with reference to the accompanying drawings and in conjunction with the embodiments.
It should be noted that the terms "and/or", only a kind of incidence relation for describing affiliated partner, is indicated
There may be three kinds of relationships, for example, A and/or B, can indicate: individualism A, exist simultaneously A and B, individualism B these three
Situation.In addition, character "/" herein, typicallys represent the relationship that forward-backward correlation object is a kind of "or".
It should be noted that the terms " default ", indicate it is pre-set, preset, choosing in advance,
The these types of meaning of prespecified or preparatory training.In general, preset model refers to model trained in advance, and default route refers to
Pre-set route, preset rules refer to pre-set rule, pre-set and refer to preset setting, and default cooking apparatus refers to
The cooking apparatus chosen in advance.
Fig. 1 is shown can showing using the embodiment of the kitchen monitoring method and device based on artificial intelligence of the application
Example property system architecture 100.
As shown in Figure 1, system architecture 100 may include terminal device 101,102,103, network 104 and server 105.
Network 104 between terminal device 101,102,103 and server 105 to provide the medium of communication link.Network 104 can be with
Including various connection types, such as wired, wireless communication link or fiber optic cables etc..
Can be equipped on terminal device 101,102 or 103 radar (such as coherent infrared radar), speech ciphering equipment (such as
Microphone, loudspeaker, loudspeaker etc.), imaging device (camera, Graphics/Image scanning means etc.), picture reproducer (such as show
Screen, throws screen equipment, AR/VR equipment, naked eye 3D picture reproducer such as laser imaging etc. at projector), it is the application of text input class, empty
Between object identification class application, image object identification class application, speech recognition class application etc..User can be used terminal device 101,
102, it 103 is interacted by network 104 with server 105, to receive or send message etc..
Terminal device 101,102,103 can be hardware, be also possible to software.When terminal device 101,102,103 is hard
When part, it can be various electronic equipments, the including but not limited to various flights such as camera, video camera, smart phone, unmanned plane
Device, tablet computer, pocket computer on knee and desktop computer etc..It, can when terminal device 101,102,103 is software
To be mounted in above-mentioned cited electronic equipment.Multiple softwares or software module may be implemented into it, and list also may be implemented into
A software or software module.It is not specifically limited herein.
Server 105 can be to provide the server of various services, such as to the mesh that terminal device 101,102,103 is sent
Logo image is analyzed and is handled, and the cooking apparatus monitoring server of parameter corresponding with target image is generated.Cooking apparatus prison
Control server can be analyzed and processed the target image got, then determine pre- place corresponding with target image if necessary
Information is managed, then identified information is handled, to generate parameter corresponding with target image.
It should be noted that the kitchen monitoring method based on artificial intelligence provided by the embodiment of the present application can be by servicing
Device 105 executes, and correspondingly, the kitchen monitoring device based on artificial intelligence is set at this moment in server 105.
It should be pointed out that the local of server 105 is also available and/or image that be stored with parameter to be extracted, clothes
Business device 105 can directly acquire image or extract the image of local parameter to be extracted, at this point, exemplary system architecture 100 can
Not include terminal device 101,102,103 and network 104.
It should be noted that server 105 can be hardware, it is also possible to software.It, can when server 105 is hardware
To be implemented as the distributed server cluster that multiple servers form, individual server also may be implemented into.When server is soft
When part, multiple softwares or software module may be implemented into, single software or software module also may be implemented into.It does not do herein specific
It limits.
It should be noted that the kitchen monitoring method based on artificial intelligence provided by the embodiment of the present application is also usually by end
End equipment 101,102 or 103 executes, and correspondingly, the kitchen monitoring device based on artificial intelligence is set to terminal device at this time
101, in 102 or 103.
It should be pointed out that the local of terminal device 101,102 or 103 is also available and/or is stored with ginseng to be extracted
Several images, terminal device 101,102 or 103 can directly acquire image or extract the image of local parameter to be extracted, this
When, exemplary system architecture 100 can not include server 105 and network 104.
It should be understood that the number of terminal device, network and server in Fig. 1 is only schematical.According to realization need
It wants, can have any number of terminal device, network and server.
With continued reference to Fig. 2, one embodiment of the kitchen monitoring method based on artificial intelligence according to the application is shown
Process 200.Kitchen monitoring method based on artificial intelligence, comprising the following steps:
Step 201, cooking apparatus image is obtained.
In the present embodiment, the kitchen monitoring method based on artificial intelligence executing subject (such as it is shown in FIG. 1 intelligence eventually
End) cooking apparatus image can be obtained by image acquisition units, or by way of wired connection mode or wireless connection
Read the cooking apparatus image for parameter to be extracted from other terminal devices or receive that other terminals send for be extracted
The cooking apparatus image of parameter.Herein, above-mentioned executing subject can pre-process cooking apparatus image, and pretreatment includes
Gray processing, binaryzation, denoising and/or normalized are carried out to target image.Herein, image includes image, video, three
Dimension space data etc. also include the image of two dimension or three dimensional form.
In some optional implementations, the pretreatment of target image has been completed before obtaining the first image.
In some optional implementations, pretreatment include object identification, target detection, subject image extract and/or
Image segmentation.
Step 202, the cooking apparatus image that will acquire is input to cooking apparatus monitoring model trained in advance, obtains kitchen
The corresponding parameter of room equipment, parameter include the type and operating status of cooking apparatus.
In the present embodiment, the kitchen monitoring method based on artificial intelligence executing subject (such as it is shown in FIG. 1 intelligence eventually
End) cooking apparatus monitoring model trained in advance can be input to by the cooking apparatus image that will acquire, it obtains kitchen and sets
Standby corresponding parameter, parameter includes the type and operating status of cooking apparatus.Herein, operating status includes that following can pass through
One of state of image recognition or any combination:
The open or close of plant machinery structure;
The operation and stopping of function;
Fault message;
It is on fire;
Abnormality, such as boiling, overflow;
Heated condition;
Clean-up performance;
Temperature;
Operation hours is more than preset condition.
In some optional implementations, above-mentioned executing subject carries out object identification, Zhi Houji to cooking apparatus image
Subject image is extracted in object identification result, and the subject image extracted is identified one by one.
In some optional implementations, operating status includes that combustion state is more than preset condition, and combustion state includes
Burning time, combustion range, ignition temperature.
In some optional implementations, operating status includes the corresponding safe condition of cooking apparatus, safe condition packet
Include meet preset standard it is easy fall, children are close, the safe condition of child resistant and/or operator.
Step 203, corresponding runing time is calculated based on parameter.
In the present embodiment, the kitchen monitoring method based on artificial intelligence executing subject (such as it is shown in FIG. 1 intelligence eventually
End) corresponding runing time can be calculated based on parameter.Such as combustion state duration.
Step 204, it is based on parameter and runing time, takes corresponding deliberate action according to pre-seting.
In the present embodiment, the kitchen monitoring method based on artificial intelligence executing subject (such as it is shown in FIG. 1 intelligence eventually
End) it can be based on parameter and runing time, corresponding deliberate action is taken according to pre-seting.Above-mentioned deliberate action includes herein
It reminds, reminds and include at least one of following manner or any combination:
Sound;
Light;
Communication, the communication include data communication, phone and/or short message;
Control third party device.
With continued reference to the application scenarios that Fig. 3, Fig. 3 are according to the kitchen monitoring method based on artificial intelligence of the present embodiment
One schematic diagram.In the application scenarios of Fig. 3, user is had input to server 302 based on by having by intelligent terminal 301
The image of cooking apparatus obtains the request of the corresponding parameter of cooking apparatus.Server 302 is upon receiving the request, available
Image with cooking apparatus, and pretreatment information is obtained by pretreatment.Later, the kitchen that server 302 will acquire is set
Standby image is input in cooking apparatus monitoring model trained in advance, obtains the corresponding parameter of cooking apparatus, which includes kitchen
The type and operating status of room equipment.Cooking apparatus can include but is not limited to: frying pan, ceramic vessel, the equipment that stews, electricity are stewed
Pot, electric steamer, smoke exhaust ventilator, gas-cooker, micro-wave oven, electric oven, water purifier, electric cooker, electric pressure pot, soy bean milk making machine, boiling water pot,
One or more equipment in cooking machine, juice extractor and electromagnetic oven
Kitchen monitoring method and device provided by the embodiments of the present application based on artificial intelligence, by by the image of parameter to be extracted
Or cooking apparatus monitoring model trained in advance is input to by pretreated image, obtain ginseng corresponding with target image
Number, to improve the degree of automation, intelligence degree, accuracy and the efficiency of cooking apparatus monitoring.
With further reference to Fig. 4, it illustrates the kitchen monitoring methods and device phase based on artificial intelligence according to the application
The process 400 of the embodiment of one training method of the various models closed.This process 400, comprising the following steps:
Step 401, the sample image of default cooking apparatus is acquired.
In the present embodiment, the executing subject (such as intelligent terminal shown in FIG. 1) of the kitchen monitoring based on artificial intelligence
It can be by way of wired connection mode or wireless connection from the storage server or storage device for being stored with sample image
Middle acquisition sample data sets.
Step 402, collected sample image is demarcated by presetting method, obtains known recognition result.
In the present embodiment, the executing subject (such as intelligent terminal shown in FIG. 1) of the kitchen monitoring based on artificial intelligence
Collected sample image can be demarcated by presetting method, obtain known recognition result.Herein, calibration is included in
It demarcated before capturing sample image, just carrying out calibration in capturing sample image or in the laggard rower of capturing sample image
It is fixed.
In some optional implementations, collected sample image is demarcated by presetting method, is obtained
Knowledge is not as a result, include the following steps:
Default cooking apparatus is adjusted to preset operating status;
Notice plate is placed into the corresponding pre-set image region of cooking apparatus;
Obtain the cooking apparatus image for having notice plate;
Cooking apparatus image is input to markup model trained in advance, obtains known recognition result.
Step 403, using machine learning method, using sample image as input, by the corresponding knowledge of the sample image
Other result is trained to obtain cooking apparatus monitoring model as output to universal monitor model trained in advance.
In the present embodiment, the executing subject (such as intelligent terminal shown in FIG. 1) of the kitchen monitoring based on artificial intelligence
It can use machine learning method, using sample image as input, using the corresponding known recognition result of the sample image as defeated
Out, universal monitor model trained in advance is trained to obtain cooking apparatus monitoring model.
In some optional implementations, training obtains trained universal monitor model as follows in advance:
Obtain sample data sets, wherein each sample data in sample data sets include sample kitchen equipment image and
Known recognition result, it is known that recognition result includes the preset kind and preset operating state of cooking apparatus.
It is using sample kitchen equipment image as input, the sample input data is corresponding using machine learning method
Know that recognition result as output, is trained to obtain model to preset initial model.
In some optional ways of the present embodiment, the type of above-mentioned model is CNN or RNN, and CNN includes MASK-RCNN,
MASK-RCNN writes Mask R-CNN again.
In the present embodiment, above-mentioned executing subject can choose sample data from sample data sets, execute following training step
It is rapid:
Firstly, by the image in each sample data of selection as the defeated of initial convolutional neural networks after pretreatment
Enter, will known recognition result corresponding with sample image as desired output, initial convolutional neural networks are trained, are obtained
Forecasting recognition result corresponding with sample image.Then, based on default loss function, determine that the penalty values of default loss function are
It is no to reach predetermined target value.When the penalty values in response to determining default loss function reach predetermined target value, can determine just
Beginning neural metwork training is completed, and the initial neural network that training is completed is determined as universal monitor model.Herein, damage is preset
Losing function can be used for characterizing the difference between the known recognition result in Forecasting recognition result and sample data.
For above-mentioned executing subject when the penalty values in response to determining default loss function are not up to predetermined target value, adjustment is just
The parameter of beginning convolutional neural networks, and choose sample again from above-mentioned training sample set or increase sample size, it will adjust
Initial convolutional neural networks after whole continue to execute above-mentioned training step as initial convolutional neural networks.Herein, adjustment is first
Number, the size of convolution kernel of the convolutional layer of for example adjustable initial convolutional neural networks of the parameter of beginning convolutional neural networks.
The training process of above-mentioned markup model is consistent with the training method of universal monitor model.
Above-mentioned cooking apparatus monitoring model is consistent with the training method of universal monitor model
In some optional implementations, it can directly use universal monitor model as cooking apparatus monitoring model.
In some optional implementations, when universal monitor model is unable to complete scheduled work, by using kitchen
The training method of room monitoring of tools model obtains instant image at the scene, and completes the training to cooking apparatus monitoring model, with
Scheduled work is completed, the technical effect for the example that originally carries out an invention is better achieved.
Figure 4, it is seen that the present embodiment is highlighted to based on artificial intelligence unlike embodiment shown in Fig. 2
The training step of the relevant various models of kitchen monitoring method and device of energy.So that extracting parameter is more quasi- from image
Really.
With further reference to Fig. 5, as the realization to method shown in above-mentioned Fig. 4, this application provides based on artificial intelligence
One embodiment of kitchen monitoring device, the Installation practice is corresponding with embodiment of the method shown in Fig. 2, which specifically may be used
To be applied in various electronic equipments.
As shown in figure 5, the kitchen monitoring device 500 based on artificial intelligence of the present embodiment includes:
Image acquisition unit 501 is configured for obtaining cooking apparatus image;
Parameter monitoring unit 502, the cooking apparatus image for being configured for will acquire are input to kitchen trained in advance and set
Standby monitoring model, obtains the corresponding parameter of cooking apparatus, parameter includes the type and operating status of cooking apparatus.
Time calculating unit 503 is configured for calculating corresponding runing time based on parameter.
Action execution unit 504, is configured for based on parameter and runing time, according to pre-set take it is corresponding pre-
If movement.
In the present embodiment, in the kitchen monitoring device 500 based on artificial intelligence: image acquisition unit 501, parameter monitoring
Unit 502, the specific processing of time calculating unit 503 and action execution unit 504 and its bring beneficial effect can be referring to Fig. 2
The associated description of the implementation of step 201, step 202, step 203 and step 204 in corresponding embodiment, it is no longer superfluous herein
It states.The training step of correlation model is referring to step step 401, step 402 and the step 403 in Fig. 4 corresponding embodiment.
Below with reference to Fig. 6, it is (such as shown in FIG. 1 that it illustrates the electronic equipments for being suitable for being used to realize the embodiment of the present application
Server) computer system 600 structural schematic diagram.Electronic equipment shown in Fig. 6 is only an example, should not be to this Shen
Please embodiment function and use scope bring any restrictions.
As shown in fig. 6, computer system 600 includes central processing unit (CPU) 601, it can be read-only according to being stored in
Program in memory (ROM) 602 or be loaded into the program in random access storage device (RAM) 603 from storage section 608 and
Execute various movements appropriate and processing.In RAM 603, also it is stored with system 600 and operates required various programs and data.
CPU 601, ROM 602 and RAM 603 are connected with each other by bus 604.Input/output (I/O) interface 605 is also connected to always
Line 604.
I/O interface 605 is connected to lower component: the importation 606 including keyboard, mouse etc.;It is penetrated including such as cathode
The output par, c 607 of spool (CRT), liquid crystal display (LCD) etc. and loudspeaker etc.;Storage section 608 including hard disk etc.;
And the communications portion 609 of the network interface card including LAN card, modem etc..Communications portion 609 via such as because
The network of spy's net executes communication process.Driver 610 is also connected to I/O interface 605 as needed.Detachable media 611, such as
Disk, CD, magneto-optic disk, semiconductor memory etc. are mounted on as needed on driver 610, in order to read from thereon
Computer program be mounted into storage section 608 as needed.
Particularly, in accordance with an embodiment of the present disclosure, it may be implemented as computer above with reference to the process of flow chart description
Software program.For example, embodiment of the disclosure includes a kind of computer program product comprising be carried on computer-readable medium
On computer program, which includes the program code for method shown in execution flow chart.In such reality
It applies in example, which can be downloaded and installed from network by communications portion 609, and/or from detachable media
611 are mounted.When the computer program is executed by central processing unit (CPU) 601, limited in execution the present processes
Above-mentioned function.It should be noted that the computer-readable medium that the application is somebody's turn to do can be computer-readable signal media or meter
Calculation machine readable storage medium storing program for executing either the two any combination.Computer readable storage medium can be for example but not limited to
Electricity, magnetic, optical, electromagnetic, infrared ray or semiconductor system, device or device, or any above combination.It is computer-readable
The more specific example of storage medium can include but is not limited to: have electrical connection, the portable computing of one or more conducting wires
Machine disk, hard disk, random access storage device (RAM), read-only memory (ROM), erasable programmable read only memory (EPROM
Or flash memory), optical fiber, portable compact disc read-only memory (CD-ROM), light storage device, magnetic memory device or above-mentioned
Any appropriate combination.In this application, computer readable storage medium can be it is any include or storage program it is tangible
Medium, the program can be commanded execution system, device or device use or in connection.And in this application,
Computer-readable signal media may include in a base band or as the data-signal that carrier wave a part is propagated, wherein carrying
Computer-readable program code.The data-signal of this propagation can take various forms, and including but not limited to electromagnetism is believed
Number, optical signal or above-mentioned any appropriate combination.Computer-readable signal media can also be computer-readable storage medium
Any computer-readable medium other than matter, the computer-readable medium can be sent, propagated or transmitted for being held by instruction
Row system, device or device use or program in connection.The program code for including on computer-readable medium
It can transmit with any suitable medium, including but not limited to: wireless, electric wire, optical cable, RF etc. or above-mentioned any conjunction
Suitable combination.
The calculating of the operation for executing the application can be write with one or more programming languages or combinations thereof
Machine program code, the programming language include object oriented program language-such as Java, Smalltalk, C++,
Further include conventional procedural programming language-such as " C " language or similar programming language.Program code can be with
It fully executes, partly execute on the user computer on the user computer, being executed as an independent software package, portion
Divide and partially executes or executed on a remote computer or server completely on the remote computer on the user computer.?
Be related in the situation of remote computer, remote computer can pass through the network of any kind --- including local area network (LAN) or
Wide area network (WAN)-be connected to subscriber computer, or, it may be connected to outer computer (such as mentioned using Internet service
It is connected for quotient by internet).
Flow chart and block diagram in attached drawing are illustrated according to the system of the various embodiments of the application, method and computer journey
The architecture, function and operation in the cards of sequence product.In this regard, each box in flowchart or block diagram can generation
A part of one module, program segment or code of table, a part of the module, program segment or code include one or more use
The executable instruction of the logic function as defined in realizing.It should also be noted that in some implementations as replacements, being marked in box
The function of note can also occur in a different order than that indicated in the drawings.For example, two boxes succeedingly indicated are actually
It can be basically executed in parallel, they can also be executed in the opposite order sometimes, and this depends on the function involved.Also it to infuse
Meaning, the combination of each box in block diagram and or flow chart and the box in block diagram and or flow chart can be with holding
The dedicated hardware based system of functions or operations as defined in row is realized, or can use specialized hardware and computer instruction
Combination realize.
Being described in unit involved in the embodiment of the present application can be realized by way of software, can also be by hard
The mode of part is realized.Described unit also can be set in the processor, for example, can be described as: a kind of processor packet
It includes: image acquisition unit, parameter monitoring unit, time calculating unit and action execution unit.Wherein, the title of these units exists
The restriction to the unit itself is not constituted in the case of certain, for example, image acquisition unit is also described as " being configured to
For obtaining cooking apparatus image " unit.
As on the other hand, present invention also provides a kind of computer-readable medium, which be can be
Included in electronic equipment described in above-described embodiment;It is also possible to individualism, and without in the supplying electronic equipment.
Above-mentioned computer-readable medium carries one or more program, when said one or multiple programs are held by the electronic equipment
When row, so that the electronic equipment: obtaining cooking apparatus image;The cooking apparatus image that will acquire is input to kitchen trained in advance
Room monitoring of tools model, obtains the corresponding parameter of cooking apparatus, and parameter includes the type and operating status of cooking apparatus.
Above description is only the preferred embodiment of the application and the explanation to institute's application technology principle.Those skilled in the art
Member is it should be appreciated that invention scope involved in the application, however it is not limited to technology made of the specific combination of above-mentioned technical characteristic
Scheme, while should also cover in the case where not departing from foregoing invention design, it is carried out by above-mentioned technical characteristic or its equivalent feature
Any combination and the other technical solutions formed.Such as features described above has similar function with (but being not limited to) disclosed herein
Can technical characteristic replaced mutually and the technical solution that is formed.
Claims (10)
1. the kitchen monitoring device based on artificial intelligence characterized by comprising
Image acquisition unit is configured for obtaining cooking apparatus image;
Parameter monitoring unit, the cooking apparatus image for being configured for will acquire are input to kitchen trained in advance and set
Standby monitoring model, obtains the corresponding parameter of the cooking apparatus, and the parameter includes the type and operation shape of the cooking apparatus
State.
2. the apparatus according to claim 1 characterized by comprising
Time calculating unit is configured for calculating corresponding runing time based on the parameter.
3. the apparatus of claim 2 characterized by comprising
Action execution unit, be configured for based on the parameter with the runing time, according to pre-set take it is corresponding
Deliberate action.
4. the apparatus according to claim 1, which is characterized in that the operating status includes that combustion state is more than default item
Part, the combustion state include burning time, combustion range, ignition temperature.
5. the apparatus according to claim 1, which is characterized in that the operating status includes the corresponding peace of the cooking apparatus
Total state, the safe condition include meet preset standard it is easy fall, children are close, child resistant and/or operator
Safe condition.
6. device described in -5 according to claim 1, which is characterized in that the cooking apparatus monitoring model trained in advance passes through
Following steps training obtains:
Acquire the sample image of default cooking apparatus;
Collected sample image is demarcated by presetting method, obtains known recognition result;
The corresponding known recognition result of the sample image is made using the sample image as input using machine learning method
For output, universal monitor model trained in advance is trained to obtain the cooking apparatus monitoring model.
7. device according to claim 6, which is characterized in that it is described by presetting method to collected sample image into
Rower is fixed, obtains known recognition result, includes the following steps:
The default cooking apparatus is adjusted to preset operating status;
Notice plate is placed into the corresponding pre-set image region of the cooking apparatus;
Obtain the cooking apparatus image for having the notice plate;
The cooking apparatus image is input to markup model trained in advance, obtains known recognition result.
8. device according to claim 6, which is characterized in that the universal monitor model trained in advance by walking as follows
Rapid training obtains:
Obtain sample data sets, wherein each sample data in the sample data sets includes sample kitchen equipment drawing
Picture and known recognition result, the known recognition result include the preset kind and preset operating state of cooking apparatus;
It is using the sample kitchen equipment image as input, the sample input data is corresponding using machine learning method
Know that recognition result as output, is trained preset initial model to obtain the model.
9. a kind of system, including such as device described in any one of claims 1-8.
10. a kind of video equipment, including such as device described in any one of claims 1-8.
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CN201910404711.8A CN110135342A (en) | 2019-05-15 | 2019-05-15 | Kitchen monitoring device based on artificial intelligence |
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Cited By (2)
Publication number | Priority date | Publication date | Assignee | Title |
---|---|---|---|---|
CN111046849A (en) * | 2019-12-30 | 2020-04-21 | 珠海格力电器股份有限公司 | Kitchen safety implementation method and device, intelligent terminal and storage medium |
CN113031535A (en) * | 2019-12-24 | 2021-06-25 | 珠海格力电器股份有限公司 | Kitchen management method, device and system |
-
2019
- 2019-05-15 CN CN201910404711.8A patent/CN110135342A/en active Pending
Cited By (2)
Publication number | Priority date | Publication date | Assignee | Title |
---|---|---|---|---|
CN113031535A (en) * | 2019-12-24 | 2021-06-25 | 珠海格力电器股份有限公司 | Kitchen management method, device and system |
CN111046849A (en) * | 2019-12-30 | 2020-04-21 | 珠海格力电器股份有限公司 | Kitchen safety implementation method and device, intelligent terminal and storage medium |
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