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Computer vision is a versatile area that allows a computer to understand and analyze images from the environment. This paper focuses on a comprehensive discussion of where computer vision is today in light of its past, most recent accomplishments, and predictions of where it could go next. The evolution of computer vision over the past few decades has been marked by remarkable progress, driven by advancements in three key areas: utilize deep learning, hardware, and image-processing methods. Artificial neural networks are now commonly used in deep learning, which has improved the abilities of machines to recognize, classify, and understand visual content. Computationally speaking, parallel with deep learning, other kinds of hardware, like GPU chips, can be used to perform such functions better. This has made it easy to train and deploy complex deep learning algorithms for real-time computer vision applications with expanded reach into many facets. In addition, image processing has been dramatically improved, making it possible to process and enhance incoming visual data. Traditional and most recent techniques for Computational Photography have enabled the dependable and precise computer-vision system.
Agrawal et al. (Fri,) studied this question.