期刊文献+
共找到2篇文章
< 1 >
每页显示 20 50 100
基于认知负荷理论的雷达信息视图交互设计策略研究 被引量:4
1
作者 宫晓东 龚迁 +1 位作者 刘毓舜 邱越 《包装工程》 CAS 北大核心 2021年第20期66-76,共11页
目的以降低操作者认知负荷为目标从人机认知任务分配角度探讨雷达界面信息图的交互设计策略。方法对基于雷达信息图的系统观察任务流程进行分析,基于新型人机协同、人机合作视角探讨系统人机功能分配的原则,采用认知负荷评测方法,通过... 目的以降低操作者认知负荷为目标从人机认知任务分配角度探讨雷达界面信息图的交互设计策略。方法对基于雷达信息图的系统观察任务流程进行分析,基于新型人机协同、人机合作视角探讨系统人机功能分配的原则,采用认知负荷评测方法,通过用户绩效测量和NASA-TLX量表,采集分析任务完成的时间、正确率及认知负荷水平,比较不同的人机分工方案对操作者认知负荷的影响。结果基于新的人机功能分配策略的设计方案中,用户完成时间、正确率均大于初始方案,完成任务的认知负荷小于初始设计方案。结论复杂信息界面的信息呈现与交互设计,可以通过系统功能在人机之间的合理分配,充分发挥人机各自优势,降低操作者的认知负荷,提高观测准确率,提高系统绩效。 展开更多
关键词 认知负荷 雷达信息图 交互设计 人机分工
下载PDF
Mapping Deciduous Broad-leaved Forested Swamps Using ALOS/Palsar Data
2
作者 BIAN Hongfeng YAN Tingting +2 位作者 ZHANG Zhengxiang HE Chunguang SHENG Lianxi 《Chinese Geographical Science》 SCIE CSCD 2016年第3期352-365,共14页
Accurate, updated information on the distribution of wetlands is essential for estimating net fluxes of greenhouse gases and for effectively protecting and managing wetlands. Because of their complex community structu... Accurate, updated information on the distribution of wetlands is essential for estimating net fluxes of greenhouse gases and for effectively protecting and managing wetlands. Because of their complex community structure and rich surface vegetation, deciduous broad-leaved forested swamps are considered to be one of the most difficult types of wetland to classify. In this research, with the support of remote sensing and geographic information system, multi-temporal radar images L-Palsar were used initially to extract the forest hydrological layer and phenology phase change layer as two variables through image analysis. Second, based on the environmental characteristics of forested swamps, three decision tree classifiers derived from the two variables were constructed to explore effective methods to identify deciduous broad-leaved forested swamps. Third, this study focused on analyzing the classification process between flat-forests, which are the most severely disturbed elements, and forested swamps. Finally, the application of the decision tree model will be discussed. The results showed that: 1) L-HH band(a L band with wavelength of 0–235 m in HH polarization mode; HH means Synthetic Aperture Radars transmit pulses in horizontal polarization and receive in horizontal polarization) in the leaf-off season is shown to be capable of detecting hydrologic conditions beneath the forest; 2) the accuracy of the classification(forested swamp and forest plat) was 81.5% based on hydrologic features, and 83.5% was achieved by combining hydrologic features and phenology response features, which indicated that hydrological characteristics under the forest played a key role. The HHOJ(refers to the band created by the subtraction with HH band in October and HH band in July) achieved by multi-temporal radar images did improve the classification accuracy, but not significantly, and more leaf-off radar images may be more efficient than multi-seasonal radar images for inland forested swamp mapping; 3) the lower separability between forested swamps dominated by vegetated surfaces and forest plat covered with litter was the main cause of the uncertainty in classification, which led to misleading interpretations of the pixel-based classification. Finally, through the analysis with kappa coefficients, it was shown that the value of the intersection point was an ideal choice for the variable. 展开更多
关键词 forested swamp Palsar radar images forest hydrological characteristics multi-temporal technique decision tree classifier
下载PDF
上一页 1 下一页 到第
使用帮助 返回顶部