Mohan, 2024 - Google Patents
Enhanced multiple dense layer efficientnetMohan, 2024
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- 2671360750511874953
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- Mohan A
- Publication year
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In the dynamic and ever-evolving landscape of Artificial Intelligence (AI), the domain of deep learning has emerged as a pivotal force, propelling advancements across a broad spectrum of applications, notably in the intricate field of image classification. Image classifi-cation, a …
- 238000012549 training 0 abstract description 91
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