Demonstrations: Tutorial for Image Classification Models

To extend functionality into a usable web-demo, a second set of assets were created within the web_demo directory.

This web page sample uses an HTML5 player to play an mp4 video and submit its frames to an image classification service.

Video Copyrights May Apply - the included sample videos may carry additional copyrights and are not meant for public resale or consumption.

Browser Interaction

Most browsers should have no CORS or other cross-domain objections to dropping the file image-classes.html into the browser and accesing a locally hosted server API, as configured in Deployment: Wrapping and Executing Image Classification Models.

Open-source hosted run

Utilizing the generous htmlpreview function available on GitHub, you can also experiment with the respository-based web resource. This resource will proxy the repository web_demo directory into a live resource.

Navigate to the default webhost page and confirm that the resource load properly. The image at the bottom of this guide is a good reference for correct page loading and display.

After confirming correct page load, simply replace the value in the Transform URL field to point at your deployed instance. For example, if you’ve created a dumped model locally, it might be a localhost port.

Local webserver run

If you want to run the test locally, you can use a supplied python webserver with the line below while working in the web_demo directory (assuming you’re running python3).

python 5000

Afterwards, just point your browser at http://localhost:5000/image-classes.html.

Usage of protobuf binaries for testing

Binary (protobuf encoded) data can be downloaded from the web page or directly with curl. Two demonstration binaries have been included in the source repository for testing, as captured from the demonstration-image_classification_running_example image below.

  • protobuf.Image.bin - a protobuf-encoded image of a coastal-lapse video
  • protobuf.ImageTagSet.bin - a protobuf-encoded classification tag set for the coastal-lapse video

Within the webpage demo, simply select the correct protobuf method and then drag and drop the binary file into the Protobuf Payload Input file uploader. It will be immediately uploaded through javascript to your specified Transform Url.

Example image classification demo (docker and protobuf)

To customize this demo, one should change either the included javascript or simply update the primary classification URL on the page itself during runtime. This demo utilizes the javascript protobuf library to encode parameters into proto binaries in the browser.

** NOTE ** One version of the model’s protobuf schema is included with this web page, but it may change over time. If you receive encoding errors or unexpected results, please verify that your target model and this web page are using the same .proto file.

  • confirm that your target docker instance is configured and running
  • download this directory to your local machine
    • confirm the host port and classification service URL in the file image-classes.js
classificationServer: "http://localhost:8886/classify",
  • view the page image-classes.html in a Crome or Firefox browser
  • you can switch between a few sample images or upload your own by clicking on the buttons below the main image window
example web application classifying costal video

Special decoding example

You can also download a binary, encoded version of the last image or output that was sent to the remote service. When available, the Download Encoded Message button will be enabled and a binary file will be generated in the browser.

protoc --decode=ZmazgwcYOzRPSlAKlNLcoITKjByZchTo.ImageTagSet model.scene.proto < protobuf.out.bin
protoc --decode=ZmazgwcYOzRPSlAKlNLcoITKjByZchTo.Image model.scene.proto <

NOTE The specific package name may have changed since the time of writing, so be sure to check the contents of the current .proto file.

Reuse with object detectors

This framework can be used to demonstrate other object detector and manipulation models as well. Although the source for the model is not included in this repo, an object detection model based on the common Objects in Context (COCO) dataset was created and tested with this content. The example below shows use of the relevant endpoint and .proto file (also included in this sample).

example web application classifying bicycle image