Samiee, 2019 - Google Patents
Advanced Feature Extraction for Classification of Long-Term Epileptic Electroencephalography Records.Samiee, 2019
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- 4287122721858159140
- Author
- Samiee K
- Publication year
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Recent advances in artificial intelligence (AI) offer many opportunities to implement it in a broad range of industries. One of the main ambitious application of AI is in healthcare and patient monitoring. In healthcare industry, unlike the most commercial applications of AI, a …
- 238000000605 extraction 0 title abstract description 74
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