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A two-level computer vision-based information processing method for improving the performance of human–machine interaction-aided applications

机译:基于两级计算机视觉的信息处理方法,用于提高人机交互辅助应用的性能

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The computer vision (CV) paradigm is introduced to improve the computational and processing system efficiencies through visual inputs. These visual inputs are processed using sophisticated techniques for improving the reliability of human–machine interactions (HMIs). The processing of visual inputs requires multi-level data computations for achieving application-specific reliability. Therefore, in this paper, a two-level visual information processing (2LVIP) method is introduced to meet the reliability requirements of HMI applications. The 2LVIP method is used for handling both structured and unstructured data through classification learning to extract the maximum gain from the inputs. The introduced method identifies the gain-related features on its first level and optimizes the features to improve information gain. In the second level, the error is reduced through a regression process to stabilize the precision to meet the HMI application demands. The two levels are interoperable and fully connected to achieve better gain and precision through the reduction in information processing errors. The analysis results show that the proposed method achieves 9.42% higher information gain and a 6.51% smaller error under different classification instances compared with conventional methods.
机译:引入计算机视觉(CV)范式以通过视觉输入来改善计算和处理系统效率。使用复杂的技术处理这些视觉输入,用于提高人机相互作用(HMI)的可靠性。视觉输入的处理需要多级数据计算,以实现特定于应用的可靠性。因此,在本文中,引入了两级视觉信息处理(2LVIP)方法以满足HMI应用的可靠性要求。 2LVIP方法用于通过分类学习处理结构化和非结构化数据,以从输入中提取最大增益。介绍的方法识别其第一级的增益相关的功能,并优化功能以提高信息增益。在二级,通过回归过程减少了错误以稳定精度以满足HMI应用需求。两个级别是可互操作的,完全连接,以通过减少信息处理错误来实现更好的增益和精度。分析结果表明,与传统方法相比,该方法的信息增益越高,信息增益越高,不同分类实例的误差为6.51%。

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