Faraz Akram1, Seung Moo Han1, Tae-Seong Kim2. 1. Department of Biomedical Engineering, Kyung Hee University, Yongin-si, Republic of Korea. 2. Department of Biomedical Engineering, Kyung Hee University, Yongin-si, Republic of Korea. Electronic address: tskim@khu.ac.kr.
Abstract
BACKGROUND: A typical P300-based spelling brain computer interface (BCI) system types a single character with a character presentation paradigm and a P300 classification system. Lately, a few attempts have been made to type a whole word with the help of a smart dictionary that suggests some candidate words with the input of a few initial characters. METHODS: In this paper, we propose a novel paradigm utilizing initial character typing with word suggestions and a novel P300 classifier to increase word typing speed and accuracy. The novel paradigm involves modifying the Text on 9 keys (T9) interface, which is similar to the keypad of a mobile phone used for text messaging. Users can type the initial characters using a 3×3 matrix interface and an integrated custom-built dictionary that suggests candidate words as the user types the initials. Then the user can select one of the given suggestions to complete word typing. We have adopted a random forest classifier, which significantly improves P300 classification accuracy by combining multiple decision trees. RESULTS AND DISCUSSION: We conducted experiments with 10 subjects using the proposed BCI system. Our proposed paradigms significantly reduced word typing time and made word typing more convenient by outputting complete words with only a few initial character inputs. The conventional spelling system required an average time of 3.47 min per word while typing 10 random words, whereas our proposed system took an average time of 1.67 min per word, a 51.87% improvement, for the same words under the same conditions.
BACKGROUND: A typical P300-based spelling brain computer interface (BCI) system types a single character with a character presentation paradigm and a P300 classification system. Lately, a few attempts have been made to type a whole word with the help of a smart dictionary that suggests some candidate words with the input of a few initial characters. METHODS: In this paper, we propose a novel paradigm utilizing initial character typing with word suggestions and a novel P300 classifier to increase word typing speed and accuracy. The novel paradigm involves modifying the Text on 9 keys (T9) interface, which is similar to the keypad of a mobile phone used for text messaging. Users can type the initial characters using a 3×3 matrix interface and an integrated custom-built dictionary that suggests candidate words as the user types the initials. Then the user can select one of the given suggestions to complete word typing. We have adopted a random forest classifier, which significantly improves P300 classification accuracy by combining multiple decision trees. RESULTS AND DISCUSSION: We conducted experiments with 10 subjects using the proposed BCI system. Our proposed paradigms significantly reduced word typing time and made word typing more convenient by outputting complete words with only a few initial character inputs. The conventional spelling system required an average time of 3.47 min per word while typing 10 random words, whereas our proposed system took an average time of 1.67 min per word, a 51.87% improvement, for the same words under the same conditions.
Authors: Tim Pfeiffer; Nicolai Heinze; Robert Frysch; Leon Y Deouell; Mircea A Schoenfeld; Robert T Knight; Georg Rose Journal: J Neural Eng Date: 2016-02-09 Impact factor: 5.379
Authors: Junchen Liu; Sen Lin; Wenzheng Li; Yanzhen Zhao; Dingkun Liu; Zhaofeng He; Dong Wang; Ming Lei; Bo Hong; Hui Wu Journal: Research (Wash D C) Date: 2022-03-10