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Demanding Areas of Computer Vision

Akshada Sunil Shitole, I Priyadarshini

Abstract


Computer vision is a study of making machines intelligent to make observations. OpenCv is used to solve computer vision problem. Computer Vision consists of its wide variety of applications in various fields. In this paper, we will discuss Applications of computer vision. Computer Vision deals with images & it extracts useful information from it. With the help of these digital images & deep learning machines makes decision to identify or recognize the objects. Computer Vision is a part of Artificial Intelligence (AI). Image processing is a subset of Computer Vision. In Computer Vision, camera acts like an “eye” to perform observations & calculations are done through pixels.


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References


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