Fachgebiet Neurotechnologie, Technische Universität Berlin, Marchstr. 23, 10587 Berlin, Germany. Equal contributions.
J Neural Eng. 2018 Apr;15(2):026002. doi: 10.1088/1741-2552/aa9999.
Methods from brain-computer interfacing (BCI) open a direct access to the mental processes of computer users, which offers particular benefits in comparison to standard methods for inferring user-related information. The signals can be recorded unobtrusively in the background, which circumvents the time-consuming and distracting need for the users to give explicit feedback to questions concerning the individual interest. The obtained implicit information makes it possible to create dynamic user interest profiles in real-time, that can be taken into account by novel types of adaptive, personalised software. In the present study, the potential of implicit relevance feedback from electroencephalography (EEG) and eye tracking was explored with a demonstrator application that simulated an image search engine.
The participants of the study queried for ambiguous search terms, having in mind one of the two possible interpretations of the respective term. Subsequently, they viewed different images arranged in a grid that were related to the query. The ambiguity of the underspecified search term was resolved with implicit information present in the recorded signals. For this purpose, feature vectors were extracted from the signals and used by multivariate classifiers that estimated the intended interpretation of the ambiguous query.
The intended interpretation was inferred correctly from a combination of EEG and eye tracking signals in 86% of the cases on average. Information provided by the two measurement modalities turned out to be complementary.
It was demonstrated that BCI methods can extract implicit user-related information in a setting of human-computer interaction. Novelties of the study are the implicit online feedback from EEG and eye tracking, the approximation to a realistic use case in a simulation, and the presentation of a large set of photographies that had to be interpreted with respect to the content.
脑机接口(BCI)方法为计算机用户的心理过程提供了直接访问途径,与推断用户相关信息的标准方法相比,具有特殊优势。信号可以在后台进行非侵入式记录,避免了用户需要费时费力地对与个人兴趣相关的问题给出明确反馈的干扰。所获得的隐性信息使得可以实时创建动态用户兴趣档案,新型自适应、个性化软件可以考虑这些档案。在本研究中,探索了使用模拟图像搜索引擎的演示应用程序从脑电图(EEG)和眼动追踪中获取隐性相关反馈的潜力。
研究参与者使用脑海中的两个可能解释之一来查询模棱两可的搜索词。随后,他们查看了以网格形式排列的与查询相关的不同图像。使用记录信号中的隐性信息解决未精确定义的搜索词的歧义。为此,从信号中提取特征向量,并由多元分类器使用这些特征向量来估计模糊查询的预期解释。
平均而言,从 EEG 和眼动追踪信号的组合中正确推断出了预期的解释,在 86%的情况下是正确的。两种测量方式提供的信息是互补的。
证明了 BCI 方法可以在人机交互环境中提取隐性用户相关信息。本研究的新颖之处在于 EEG 和眼动追踪的隐性在线反馈、模拟中对真实用例的逼近,以及呈现了大量需要根据内容进行解释的照片。