Deep learning-based approach to image recognition

Kunal Thakar

Abstract


Algorithms for finding numerous distributed representation levels are included in the category of deep learning algorithms. Many deep learning methods have recently been developed to tackle classic artificial intelligence issues. Deep learning techniques in computer vision are being reviewed by emphasizing contributions and difficulties from current research articles in this paper. In the beginning, it offers an overview of several deep learning techniques and their most recent advances before briefly describing their use in various vision tasks.

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References


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