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Ahmad et al., 2022 - Google Patents

Confusion matrix-based modularity induction into pretrained CNN

Ahmad et al., 2022

Document ID
6974665292693493378
Author
Ahmad S
Ansari S
Haider U
Javed K
Rahman J
Anwar S
Publication year
Publication venue
Multimedia Tools and Applications

External Links

Snippet

Structurally and functionally, the human brain's visual cortex inspires convolutional neural networks (CNN). The visual cortex consists of different connected cortical regions. When a cortical area receives an input, it extracts meaningful information and forwards it to its …
Continue reading at link.springer.com (other versions)

Classifications

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    • G06COMPUTING; CALCULATING; COUNTING
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