Integrating eye-tracking technology with robust recurrent kernel online learning
This report is based on literature, Qing Song, et. Robust Recurrent Kernel Online Learning and Yanling Li, et. Integrating Eye-Tracking Technology with Robust Recurrent Kernel Online Learning. Robust recurrent kernel online learning (RRKOL) algorithm is used to investigate the integration of an eye...
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主要作者: | |
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其他作者: | |
格式: | Final Year Project |
語言: | English |
出版: |
2018
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主題: | |
在線閱讀: | http://hdl.handle.net/10356/74966 |
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機構: | Nanyang Technological University |
語言: | English |
總結: | This report is based on literature, Qing Song, et. Robust Recurrent Kernel Online Learning and Yanling Li, et. Integrating Eye-Tracking Technology with Robust Recurrent Kernel Online Learning. Robust recurrent kernel online learning (RRKOL) algorithm is used to investigate the integration of an eye tracking technology. In Yanling’s article, there’re four versions of model.
1. F = 1 model, also known as 1 feedback, it performs classification with a 2-selection simulation of the eye-tracking system.
2. F = 0 model, also known as no feedback, it performs classification with a 2-selection simulation of the eye-tracking system.
3. F’= 1 model, it based on F= 1 model but takes in data from a 5-selection of simulation.
4. P = 1 model, it performs recurrent prediction with 1 feedback.
This project aims to repeat P = 1 model with 2-selection of simulation. |
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