Arun Prakash et al., 2023 - Google Patents
Pediatric pneumonia diagnosis using stacked ensemble learning on multi-model deep CNN architecturesArun Prakash et al., 2023
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- 1141217359955236051
- Author
- Arun Prakash J
- Asswin C
- Ravi V
- Sowmya V
- Soman K
- Publication year
- Publication venue
- Multimedia tools and applications
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Snippet
Pediatric pneumonia has drawn immense awareness due to the high mortality rates over recent years. The acute respiratory infection caused by bacteria, viruses, or fungi infects the lung region and hinders oxygen transport, making breathing difficult due to inflamed or pus …
- 206010035664 Pneumonia 0 title abstract description 140
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