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Transfer Learning Applied to Computer Vision Problems: Survey on Current Progress, Limitations, and Opportunities

2024-09-12Unverified0· sign in to hype

Aaryan Panda, Damodar Panigrahi, Shaswata Mitra, Sudip Mittal, Shahram Rahimi

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Abstract

The field of Computer Vision (CV) has faced challenges. Initially, it relied on handcrafted features and rule-based algorithms, resulting in limited accuracy. The introduction of machine learning (ML) has brought progress, particularly Transfer Learning (TL), which addresses various CV problems by reusing pre-trained models. TL requires less data and computing while delivering nearly equal accuracy, making it a prominent technique in the CV landscape. Our research focuses on TL development and how CV applications use it to solve real-world problems. We discuss recent developments, limitations, and opportunities.

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