Deploy Object Detection Model as Microservice
Supported platform: Linux®, Windows®, macOS
This example shows how to create a microservice Docker® image from a MATLAB® object detection model. The microservice image created by MATLAB Compiler SDK™ provides an HTTP/HTTPS endpoint to access MATLAB code.
You package a MATLAB function into a deployable archive, and then create a Docker image that contains the archive and a minimal MATLAB Runtime package. You can then run the image in Docker and make calls to the service using any of the MATLAB Production Server™ client APIs.
Required Products
Type ver
at the MATLAB command prompt to verify whether the following products are installed:
MATLAB
Image Processing Toolbox™
Deep Learning Toolbox™
Computer Vision Toolbox™
MATLAB Compiler™
MATLAB Compiler SDK
Type matlabshared.supportpkg.getInstalled
at the MATLAB command prompt to verify whether the following add-on is installed:
Computer Vision Toolbox Model for YOLO v4 Object Detection
If you need to install the add-on, click the Add-Ons icon in the MATLAB toolstrip and search for the add-on. You can also download and install it from the MathWorks File Exchange.
Prerequisites
Verify that you have MATLAB Compiler SDK installed on the development machine.
Verify that you have Docker installed and configured on the development machine by typing
[~,msg] = system('docker version')
in a MATLAB command window.Note
If you are using WSL, use the command
[~,msg] = system('wsl docker version')
instead.If you do not have Docker installed, follow the instructions on the Docker website to install and set up Docker.
docs.docker.com/engine/install/
To build microservice images on Windows, you must install either Docker Desktop or Docker on Windows Subsystem for Linux v2 (WSL2). To install Docker Desktop, see
docs.docker.com/desktop/install/windows-install//
.For instructions on how to install Docker on WSL2, see
https://www.mathworks.com/matlabcentral/answers/1758410-how-do-i-install-docker-on-wsl2
.
If the computer you are using is not connected to the Internet, you must download the MATLAB Runtime installer for Linux from a computer that is connected to the Internet and transfer the installer to the computer that is not connected to the Internet. Then, on the offline machine, run the command
, wherecompiler.runtime.createInstallerDockerImage
(filepath)filepath
is the path to the MATLAB Runtime installer archive.You can download the installer from the MathWorks® website.
https://www.mathworks.com/products/compiler/matlab-runtime.html
Create MATLAB Function to Detect Objects
For this example, write an object detection function named cvt.m
using the following code.
function [bboxes, scores, labels] = cvt(imageUrl) iminfo = imfinfo(imageUrl); % Read image % If indexed image, read colormap and convert to rgb if strcmp(iminfo.ColorType,'indexed') == 1 [im, cmap] = webread(imageUrl, 'Timeout', 10); im = ind2rgb(im, cmap); else im = webread(imageUrl, 'Timeout', 10); end % Add pretrained YOLO v4 dataset tinyYOLOv4COCO.mat to MATLAB path for testing % Comment or remove the next 2 lines of code prior to deploying as microservice detectorPath = [matlabshared.supportpkg.getSupportPackageRoot, '/toolbox/vision/supportpackages/yolov4/data']; addpath(detectorPath) load('tinyYOLOv4COCO.mat', 'detector'); % Detect objects in image using detector [bboxes,scores,labels] = detect(detector,im); labels = cellstr(labels);
Test the function from the MATLAB command line:
%% Specify image URL imageUrl = "https://www.mathworks.com/help/examples/deeplearning_shared/win64/TrafficSignDetectionAndRecognitionExample_02.png" %% Display image imageFile = "trafficimage.jpg"; imageFileFullPath = websave(imageFile, imageUrl); [im, cmap] = imread(imageFileFullPath); imshow(im, cmap) %% Detect objects in image [bboxes, scores, labels] = cvt(imageUrl)
bboxes = 2×4 single matrix 445.3871 326.4009 223.3270 98.7086 504.2861 271.4571 45.7471 41.0955 scores = 2×1 single column vector 0.9151 0.6610 labels = 2×1 cell array {'truck' } {'stop sign'}
Create Deployable Archive
Caution
Comment the following lines of code in the cvt.m
file prior to
creating a deployable
archive.
% detectorPath = [matlabshared.supportpkg.getSupportPackageRoot, '/toolbox/vision/supportpackages/yolov4/data']; % addpath(detectorPath)
Package the cvt
function into a deployable archive using the
compiler.build.productionServerArchive
function.
You can specify additional options in the compiler.build
command
by using name-value arguments. For details, see compiler.build.productionServerArchive
.
buildResults = compiler.build.productionServerArchive('cvt.m', ... 'ArchiveName','yolov4od','Verbose',true, ... 'SupportPackages',{'Computer Vision Toolbox Model for YOLO v4 Object Detection'});
buildResults = Results with properties: BuildType: 'productionServerArchive' Files: {'/home/mluser/work/yolov4odproductionServerArchive/yolov4od.ctf'} IncludedSupportPackages: {'Computer Vision Toolbox Model for YOLO v4 Object Detection'} Options: [1×1 compiler.build.ProductionServerArchiveOptions]
The compiler.build.Results
object buildResults
contains information on the build type, generated files, included support packages, and
build options.
Once the build is complete, the function creates a folder named
yolov4odproductionServerArchive
in your current directory to
store the deployable archive.
Package Archive into Microservice Docker Image
Build the microservice Docker image using the
buildResults
object that you created.You can specify additional options in the
compiler.build
command by using name-value arguments. For details, seecompiler.package.microserviceDockerImage
.compiler.package.microserviceDockerImage(buildResults,... 'ImageName','yolov4od-microservice',... 'DockerContext',fullfile(pwd,'microserviceDockerContext'));
The function generates the following files within a folder named
microserviceDockerContext
in your current working directory:applicationFilesForMATLABCompiler/yolov4od.ctf
— Deployable archive file.Dockerfile
— Docker file that specifies Docker run-time options.GettingStarted.txt
— Text file that contains deployment information.
Test Docker Image
In a system command window, verify that your
yolov4od-microservice
image is in your list of Docker images.docker images
REPOSITORY TAG IMAGE ID CREATED SIZE yolov4od-microservice latest 4401fa2bc057 33 seconds ago 7.56GB matlabruntime/r2024b/update0/4200000000000000 latest 5259656e4a32 24 minutes ago 7.04GB
Run the
yolov4od-microservice
microservice image from the system command prompt.docker run --rm -p 9900:9910 yolov4od-microservice -l trace &
Port 9910 is the default port exposed by the microservice within the Docker container. You can map it to any available port on your host machine. For this example, it is mapped to port 9900.
You can specify additional options in the Docker command. For a complete list of options, see Microservice Command Arguments.
Once the microservice container is running in Docker, you can check the status of the service by going to the following URL in a web browser:
http://hostname:9900/api/health
If the service is ready to receive requests, you see the following message:
"status: ok"
Test the running service. In the terminal, use the
curl
command to send a JSON query with the input argument4
to the service through port 9900. For more information on constructing JSON requests, see JSON Representation of MATLAB Data Types (MATLAB Production Server).curl -v -H Content-Type:application/json \ -d '{"nargout":3,"rhs":["https://www.mathworks.com/help/examples/deeplearning_shared/win64/TrafficSignDetectionAndRecognitionExample_02.png"]}' \ "http://
hostname
:9900/yolov4od/cvt" | jq -cThe output is:
{"lhs":[{"mwdata":[445.387146,504.286102,326.40094,271.457092,223.327026,45.7471,98.7086487,41.09552],"mwsize":[2,4],"mwtype":"single"}, {"mwdata":[0.91510725,0.661022],"mwsize":[2,1],"mwtype":"single"}, {"mwdata":[{"mwdata":["truck"],"mwsize":[1,5],"mwtype":"char"}, {"mwdata":["stop sign"],"mwsize":[1,9],"mwtype":"char"}],"mwsize":[2,1],"mwtype":"cell"}]}
You can also test from the MATLAB desktop:
The output is:%% Import MATLAB HTTP interface packages import matlab.net.* import matlab.net.http.* import matlab.net.http.fields.* %% Setup message body body = MessageBody; body.Payload = ... '{"nargout": 3,"rhs": ["https://www.mathworks.com/help/examples/deeplearning_shared/win64/TrafficSignDetectionAndRecognitionExample_02.png"]}'; %% Setup request requestUri = URI('http://hostname:9900/yolov4od/cvt'); options = matlab.net.http.HTTPOptions('ConnectTimeout',20,... 'ConvertResponse',false); request = RequestMessage; request.Header = HeaderField('Content-Type','application/json'); request.Method = 'POST'; request.Body = body; %% Send request & view raw response response = request.send(requestUri, options); disp(response.Body.Data) %% Decode JSON lhs = mps.json.decoderesponse(response.Body.Data); %% Clean up printed output for i = 1:length(lhs) [r,c] = size(lhs{i}); if ~iscell(lhs{i}) && c==1 tmp(:,i) = num2cell(lhs{i}); elseif ~iscell(lhs{i}) && c~=1 tmp(:,i) = num2cell(lhs{i},2); else tmp(:,i) = lhs{i}; end end %% Display response as a table T = cell2table(tmp,'VariableNames',{'Boxes', 'Scores', 'Labels'})
T = 2×3 table Boxes Scores Labels ____________________________________ _______ _____________ 445.39 326.4 223.33 98.709 0.91511 {'truck' } 504.29 271.46 45.747 41.096 0.66102 {'stop sign'}
To stop the service, use the following command to display the container id.
docker ps
CONTAINER ID IMAGE COMMAND CREATED STATUS PORTS NAMES f372b8b574e8 yolov4od-microservice "/opt/matlabruntime/…" 6 hours ago Up 6 hours 0.0.0.0:9900->9910/tcp distracted_panini
Stop the service using the specified container id.
docker stop f372b8b574e8
Share Docker Image
You can share your Docker image in various ways.
Push your image to the Docker central registry Docker Hub, or to your private registry. This is the most common workflow.
Save your image as a tar archive and share it with others. This workflow is suitable for immediate testing.
For details about pushing your image to Docker Hub or your private registry, consult the Docker documentation.
Save Docker Image as Tar Archive
To save your Docker image as a tar archive, open a system command window, navigate to the Docker context folder, and type the following.
docker save yolov4od-microservice -o yolov4od-microservice.tar
This command creates a file named yolov4od-microservice.tar
in
the current folder. Set the appropriate permissions (for example, using
chmod
) prior to sharing the tarball with other users.
Load Docker Image from Tar Archive
Load the image contained in the tarball on the end user machine.
docker load --input yolov4od-microservice.tar
Verify that the image is loaded.
docker images
Run Docker Image
docker run --rm -p 9900:9910 yolov4od-microservice
See Also
compiler.package.microserviceDockerImage
| compiler.build.productionServerArchive
Related Topics
- Create Deployable Archive for MATLAB Production Server
- Client Programming (MATLAB Production Server)
- JSON Representation of MATLAB Data Types (MATLAB Production Server)
- MATLAB Function Signatures in JSON (MATLAB Production Server)
- Package MATLAB Standalone Applications into Docker Images