IMAGE ANNOTATION USE CASES

 

INTRODUCTION

Can use images to make annotations

Autonomous vehicle

Security and Agriculture Watching

Insurance

Robotics

Sports analytics and analytics

diagnostic imaging

Fashion

Shop automation

autonomous vehicle

Massive data sets are created by using images that are used to train autonomous automobile software.

It should train the algorithm you choose to recognize various roadway cycles, signs, and traffic signals, as well as other objects that might be a danger, the optimal conditions for weather, and more to ensure the safety of your vehicle. These are some additional methods for identifying images in autonomous vehicles:

Dimensions of the road and detection of objects

Monitoring movement

Sensor for LiDAR

AI-powered machines are becoming widespread across all industries, and agriculture is not an instance of this. Farmers can protect their crops by using contextually-driven data labeling and less involvement of humans. In the agricultural sector, an image annotation helps streamline the following steps:

Management of animals

Geo sensing

Detection of plant fructification

With an investment of a significant amount in agriculture, ML is necessary to ensure that the machine can recognize the wildflowers and weeds that hinder plant growth. Using image annotation and the appropriate cultivation methods makes your crops less prone to invading unwanted plants.

Security and surveillance

Annotation of surveillance images

Insurance

The time it takes to resolve insurance claims will be drastically reduced thanks to significant pattern recognition. It will improve the customer experience while human and financial resources are conserved.

Robotics Companies choose robotics because of their low price, productivity gains, and speedy efficiency. Without human resources to replicate human-like actions, ML and AI-driven robotics equipment is trained using labeled and supervised data that would only be feasible with extensive data annotation.

Robot image annotation

Observe the surroundings, detect possible obstacles, and ensure that objects are dropped in the correct place during their movements. They are also exposed to huge amounts of information.

Analysis in sport

Diagnostic imaging

Model training using machine learning is a technique that can be used for other purposes of annotation to images in medicine, including quantitative analysis for the detection of cancerous cells as well as segmentation of teeth, analysis of eye cells and kidney stones, and the analysis of cells on the nanoscale. The ML model uses deep learning on these data sets to develop an automated diagnosis system used in the healthcare industry.

Fashion

Shop automation

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