and widely used information measurement metric, particularly popularized for SSVEP- based Brain-Computer (BCI) interfaces. By combining speed and accuracy into a single-valued parameter, this metric aids in the evaluation and comparison of various target identification algorithms across different BCI communities. To accurately depict performance and inspire an end-to-end design for futuristic BCI designs, a more thorough examination and definition of ITR is therefore required. We model the symbiotic communication medium, hosted by the retinogeniculate visual pathway, as a discrete memoryless channel and use the modified capacity expressions to redefine the ITR. We use graph theory to characterize the relationship between the asymmetry of the transition statistics and the ITR gain with the new definition, leading to potential bounds on data rate performance. On two well-known SSVEP datasets, we compared two cutting-edge target identification methods. Results indicate that the induced DM channel asymmetry has a greater impact on the actual perceived ITR than the change in input distribution. Moreover, it is demonstrated that the ITR gain under the new definition is inversely correlated with the asymmetry in the channel transition statistics. Individual input customizations are further shown to yield perceived ITR performance improvements. An algorithm is proposed to find the capacity of binary classification and further discussions are given to extend such results to ensemble techniques.We anticipate that the results of our study will contribute to the characterization of the highly dynamic BCI channel capacities, performance thresholds, and improved BCI stimulus designs for a tighter symbiosis between the human brain and computer systems while enhancing the efficiency of the underlying communication resources.
翻译:并且广泛使用信息测量指标,特别是以SSVEP为基础的大脑-计算机(BCI)界面。通过将速度和准确性结合到一个单一价值参数中,这一指标有助于评估和比较不同BCI社区的各种目标识别算法。为了准确描绘性能并激励未来BCI设计的端到端设计,需要更彻底地检查和定义ITR。我们模拟了由再生生成视觉路径主持的共生通信介质,作为离散的无记忆通道,并使用经修改的能力表达来重新定义 ITR。我们使用图表理论来描述过渡统计数据与ITR获得的新定义之间的不对称关系,从而导致数据率绩效的潜在界限。在两个众所周知的SSSVEP数据集中,我们比较了两个先进的目标识别方法。结果显示,导引导的DM频道不对称对实际识别的 ITR影响大于投入分布的变化。此外,我们证明,根据新定义获得的 ITR收益与频道转型统计的不对称性能之间的关系是相反的。 个人投入分析能力分析能力将进一步提升ITR,个人分析能力将进一步提升到B的进度分析能力,而个人分析结果将进一步提升为B级分析。