anushmutyala/EmotivateHackathonEmotionP300
A novel BCI-based messaging web application that uses P300 speller and emotion detection to bridge the gap in social media accessibility for the disabled.
This web application helps individuals with physical disabilities communicate more effectively on social media. It takes brainwave data from an Emotiv device to detect emotions and allows users to 'type' messages hands-free using a P300 speller. The resulting text messages are then color-coded to visually convey the sender's intended emotion, ensuring clearer understanding in digital conversations. This tool is designed for anyone who struggles with traditional text messaging due to physical limitations or the inherent ambiguity of digital communication.
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Use this if you have a physical disability that prevents you from typing, or if you frequently experience miscommunication of emotions when texting on social media.
Not ideal if you do not have an Emotiv brain-computer interface device, as it is required for the core functionality of emotion detection and hands-free input.
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JavaScript
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Last pushed
Aug 31, 2021
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