Brain thoughts recognition

Brain thoughts recognition

المؤلف
محمد عمر حمادة ، محمد مجد موفق الحافي ، محمد كنان محمد بسام الميداني ، عمر ماهر الحلبي ، مؤمن شرشار ؛ إشراف ندى غنيم
سنة النشر
الناشر
اللغة
نوع الوثيقة
الموضوع الرئيسي
رمز الوثيقة

Humans controlling machines with their minds may sound like something from a scifi movie, but it’s becoming a reality through brain-computer interfaces BCI. Where BCI technology allows a human brain and an external device to talk to each other—to exchange signals. It gives humans the ability to directly control machines, without the physical constraints of the body. There are two ways to implement the BCI: Noninvasive tools often use sensors applied on or near the head to track and record brain activity, or Invasive BCI would require surgery. Electronic devices would need to be implanted beneath the skull, directly into the brain, to target specific sets of neurons. In order to implement a non-invasive BCI in a mobile phone, this study developed a mobile application to help paralyzed people who do not have the ability to use their phones to spend their basic daily needs, such as using the keyboard and interacting with PDF, etc.


الكلمات المفتاحية:
Computer sceince BCI Deep learning EEG Recognition Brain signal

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