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Image Data Labelling and Annotation: Everything You Need to Know

Image Data Labelling and Annotation

Image Data Labelling and Annotation

Modern technologies, such as artificial intelligence (AI), machine learning (ML), and various applications, need large datasets to work, learn, and perform effective tasks. Precisely, computer vision tech depends on analyzing images, understanding them like humans, and producing results. Hence, image data labeling and annotation have become critical in supervised ML tasks.

ML models can be trained to operate and produce results with image annotation quickly. The idea is to improve the image recognition process, saving us time and effort.

What Is Image Annotation?

The proliferation of advanced AI and ML technologies has made the ground fertile for improving how computers read images. Image annotation refers to describing an image in detail. It includes adding metadata to help the computer process the image. The more precise the descriptions, the better its further applications. 

Now, the challenge lies in annotating every image or visual in an extensive library. Manual efforts are often time-consuming and hectic for the employees as image size and data can be overwhelming. 

We can use any open-source data annotation tool, such as Computer Vision Annotation Tool (CVAT), or try dedicated and professional image annotation services. The ability to organize, manage, annotate, and update large datasets will be beneficial in establishing quality data analysis services.

Also, if there are other types of data, such as text, audio, or video, availing of data annotation services can help us better train our AI and ML models.

Types of Image Annotation

Bounding Boxes

3D Cuboids

Lines and Splines

Semantic Segmentation

Polygonal Segmentation

Key-point and Landmark

How Is Image Annotation Different from Image Labeling?

Image labeling and annotation may sound similar, but they differ significantly in their approach and use cases. Let’s compare the two:

Image Annotation

Labeling Images

Different Image Annotation Formats

Here are a few most prominent annotation formats in use:

YOLO 

COCO Annotation Format

Pascal VOC

The Conclusion

Image data labeling and annotation is an effective mechanism to generate value from your datasets and train ML models to perform tasks effectively. The article covers the various techniques of image annotation and labeling and how to use them to have a practical impact. 

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