Table of Contents
What is computer vision in artificial intelligence?
Application of artificial intelligence in computer vision
Conclusion
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What is computer vision in artificial intelligence

Sep 23, 2023 pm 12:17 PM
AI

What is computer vision in artificial intelligence

Artificial intelligence (AI) emerged with the development of "intelligent agents with a desire for knowledge". It is a resource that identifies the need for various actions and acts accordingly to achieve optimal results. Artificial intelligence also refers to machines that can simulate human learning and analysis and are used to solve problems

What is computer vision in artificial intelligence?

Human vision has benefited from generations of learning how to distinguish different objects, calculate the distance between objects, and detect and check whether images are accurate.

Developing digital devices that can grasp image or video input in the same way as humans is a goal in the field of computer vision.

Computer Vision trains computers to perform the same tasks more efficiently than the human eye, retina, optic nerve, and eye cortex, using algorithms, data, and cameras instead of these organs.

Application of artificial intelligence in computer vision

Object recognition: A computer vision technology called object recognition is used for identification, positioning and classifying digital images or real-world objects. It uses applied artificial intelligence to turn computers into object detectors that can scan real-world images and videos. It understands the characteristics of things and determines their purpose, just like individuals.

The quality of training data is critical to the effectiveness of an object recognition system. More data means the model will classify objects faster based on known characteristics. Characteristics of an image influence the likelihood of correctly identifying an object. To determine the label or category of an object in artificial intelligence, the system calculates a confidence score. In order to obtain results, algorithmic calculations in object recognition need to be thoroughly understood.

Image segmentation: Train a neural network or machine learning algorithm to find specific objects based on pixels in the image for image segmentation. To determine the presence of an object, it analyzes each pixel of the object independently and highlights where they are located, rather than drawing borders. When an object is partially occluded or hidden, the system does not provide a value because it cannot locate the shadow counterpart of the image.

For example, if there is an image of a car, the algorithm will highlight the entire car in red to attract people's attention, identify it as the "car" category, and display a confidence score of " 85%". Based on this result, the algorithm is 85% confident that the object in the image is a car

AGRICULTURE: Agriculture and modern technology don’t often go together. However, farms around the world are phasing out outdated methods and tools. Farmers are now using computer vision to boost agribusiness.

Agritech companies are adopting advanced technologies combined with artificial intelligence to focus on agricultural harvesting and sowing. Cutting-edge technologies such as weed control, plant health assessment and weather analysis can be done using AI models. Computer vision has many current and foreseeable applications in agriculture, such as drone-based crop monitoring, automated pesticide application, yield monitoring, and smart crop sorting and classification, etc.

Facial Recognition:While primarily used on smartphones at the personal level, facial recognition technology is a potential driver for public safety. An important function of image recognition has been used in many countries to recognize faces in public places. To detect faces with the highest accuracy, AI uses machine learning algorithms and deep learning algorithms to train the app to get the best results. The saved results are then extracted to a backend system for further analysis. The use of this technology is very helpful in identifying and reducing activities related to crime, theft and break-ins.

Manufacturing: Computer vision is often used in artificial intelligence inspection systems. These methods are used to increase productivity in warehouses and R&D facilities. For example, computer vision is used in inspection systems for predictive maintenance systems. To reduce product failures and equipment failures, these gadgets constantly check the environment. In order for human workers to take further action, the system notifies them of possible malfunctions or defective products. Employees also use computer vision to complete packaging and quality control tasks. Automating labor-intensive processes such as product management and assembly is another use of computer vision. The production line of precision products such as electronic products is an application field of artificial intelligence products.

Conclusion

Computer vision is used by many industries to increase customer satisfaction, cut expenses, and improve safety. What makes this technology unique is the unique way it processes data. The vast amounts of data we generate every day are used to our advantage because they teach computers to recognize and understand objects. Computer vision in the field of artificial intelligence offers consumers and businesses a wealth of opportunities. Self-driving cars, medical diagnostics, image labeling, and cashierless checkouts are just a few of the many uses for computer vision technology.

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