Every business wants to be as efficient as possible in today’s competitive world. Whether you’re in retail, healthcare, or any field that needs visual data interpretation – Azure Computer Vision will help you.
Imagine being able to look at an image and get data or do tedious tasks. That’s not fictional, it can be done with Azure Computer Vision. Here you’ll know what Azure Computer Vision is and how to use it based on its features.
Key Features of Azure Computer Vision
Image Analysis: Azure Computer Vision can extract information from images. It can identify objects, faces, and text. This helps businesses gain insights quickly.
Optical Character Recognition (OCR): OCR converts printed or handwritten text into digital format. This is useful for digitizing documents and automating data entry.
Spatial Analysis: It analyzes spatial relationships in images. This is helpful in scenarios like retail, where understanding customer movement is crucial.
Custom Vision: Businesses can train custom models for specific needs. This feature allows for tailored solutions that address unique challenges.
Integration with Other Azure Services: Azure Computer Vision works seamlessly with other Azure products. This integration enhances its functionality and ease of use.
Steps to Integrate Azure Computer Vision into Your Workflow
So you think Azure Computer Vision is hard? Let’s break it down. Here’s how:
1. Setup Azure Account
- Sign up for an Azure account if you do not have one. Go to Azure Portal and sign in. Click on "Create a resource" at the top left corner.
Search for "Computer Vision" in the search bar. Click on "Computer Vision" and then click "Create."
Fill in the necessary details like Subscription, Resource Group, and Region. Click "Review + Create" and then "Create."
2. Access API Keys
Once the resource is created, go to the resource page.
You will see your API keys and endpoint URL under the "Keys and Endpoint" section.
3. Use Azure Computer Vision in the Azure Portal
Now, it's time to use the created version to automate your workflow:
Image Analysis
Go to the Azure Portal and navigate to your Computer Vision resource.
Click on the created resource, and select “Go to Vision Studio.”
- Login your Azure account and under "Image analysis", pick “Customize models with images” option.
- Select the recently created computer vision resource, click "Analyze". The portal will display the analysis results, including objects detected, descriptions, and tags.
Optical Character Recognition (OCR)
Go to the Azure Portal and navigate to your Computer Vision resource.
Click on the “Go to Vision Studio” tab.
Under "Extract Text from Images".
- You can upload an image or provide an image URL.
- Click "Read". The portal will process the image and display the extracted text.
Custom Vision
Go to Custom Vision and sign in with your Azure account.
Create a new project by clicking "New Project".
- Fill in the project details and click "Create Project".
Upload images for training and tag them accordingly.
Train the model by clicking "Train".
Once the model is trained, you can test it by uploading new images or providing image URLs.
Personal Insights
I have used Azure Computer Vision in my projects to automate tedious tasks. For instance, I used it to analyze large sets of images for content categorization. This saved a lot of time compared to manual sorting.
Starting with basic features and gradually exploring more advanced ones worked best for me. Custom Vision proved particularly useful for specific project needs.
Conclusion
Azure Computer Vision offers many features to streamline workflows. From image analysis to OCR and Custom Vision, it provides tools for various needs. My personal experience shows its significant impact on efficiency. I encourage businesses to explore Azure Computer Vision. Integrating it into your workflow can lead to better productivity and insights.
Follow Umesh Pandit
x.com/umeshpanditax
https://www.linkedin.com/newsletters/umesh-pandit-s-notes-7038805524523483137/