No code
geoAI
geospatial AI
remote sensing AI
computer vision for remote sensing
high resolution image machine learning
microscopy
high resolution image deep learning
satellite image image segmentation
large image deep learning
object detection large image
Learn How to Create Your Own Image Segmentation Software in 1 Minute
Build your own image analysis AI software without coding through DeepBlock.net
Deep Block is machine learning software that allows you to build and use machine learning models that analyze ultra-large-volume, ultra-high-resolution images and videos without coding. You can learn how to use DeepBlock.net in this article.
Step #1 - Create a project
- Access the CONSOLE in the top menu.
- Click on "CREATE" to display the New Project pop-up window.
Step #2 - Select an application
- For this first project, we will choose a computer vision model called Image Segmentation.
- Click on "COMPUTER VISION".
- Click on "IMAGE SEGMENTATION".
- Enter a project name in the dedicated field.
- Click on "CREATE".
- You will see the new blank project you created in Console.
- Click the project to open the blank project you created.
Step #3 - Create a category
- You landed on the Project view which is the interface where you can train and use your own Machine Learning models.
- For the purpose of this first project, we will create one category
- Click on "" in the Categories panel on the top-left side of the interface to add a category
- Click on "" in the Categories panel to rename the category. Input a new category name and press "Enter" on your keyboard.
- In this tutorial, We will create a machine learning model to detect oil tanks. Create a class, “oiltank”.
Step #4 - Import images
- Click on "" in the Train panel below the Categories panel to import your training dataset or the list of images that you wish to label.
- Or just upload images with "drag and drop" action.
- For each category, a minimum of 300 annotations and a maximum of 4,000 annotations must be drawn to train the machine learning model.
- If you have less training data than this, please contact us.
- Even if you need support for annotation, contact us.
- After upload, images will be processed, then appear as a list in the Train panel.
- You can also upload an image in geotiff format.
- Selected images will also be displayed in the central Image panel.
- You can switch between images by clicking on each individual file in the list of the Train panel.
Step #5 - Draw polygons
- To train your image segmentation model, you must simply draw polygons around the objects that you wish to segment.
- Select the image you wish to label in the Train panel.
- Select a category at the Categories pane, and click on "Draw Mode " on the Image viewer to start drawing the polygon's boundaries around the object. This can be achieved by clicking at an adequate interval along the external lines of the object.
- When you have drawn the border, press the “Enter” key to end drawing.
- To know more about all the features of this interface, refer to Mastering the labeling tool.
Step #6 - Label all your images
- Repeat this process until you have labeled all your training images.
- If you wish to delete one polygon, click on "Select mode " in the Image viewer to enable the select mode, then select in the image the polygon you wish to delete and press “Delete” key to remove the chosen polygon.
Step #7 - Train your model
- The next step after labeling your data set is to train your model.
- Click on "2. Run" above the Project information panel to display the Inference model panel.
- Type "100" in the Epochs field at the top right corner above the Project information panel. One Epoch refers to one training cycle.
- If there is little training data (like several hundreds), this number should be reduced. And, if there is enough training data (more than 4,000 annotations per category), the machine learning model will work just by training for about 15 epochs.
- Click on "TRAIN" to start the training.
- During this process, a few "Processing" and "Loading" pop-up windows will appear, you can click away to make them disappear.
- A graph illustrating the progress of the training will appear. Wait until the end of all your training cycles. If the graph curve consistently goes up, this means that the model is training properly.
Final step - Try out your model
- Congratulations! You have completed your first AI training. Now is the time to check its prediction capabilities.
- You can try evaluating your model in “EVALUATE” mode, but if you want to see how your model works, try uploading new images that have objects that you want to find to the “PREDICT” tab.
- Click on "PREDICT" at the top left corner of the Project view to switch to the Predict Mode.
- Click on "" in the Predict panel below the Threshold panel to import the list of images that you wish to test your model against.
- Click on "PREDICT" button at the top right corner of the Project view.
- After processing, the model will automatically generate polygons around the segmented objects for each imported image.
- Performance can be further improved by adjusting the threshold. If you want to increase performance further, contact us.