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与专业融合的大学计算机实验教学改革与实践 被引量:1
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作者 刘锴 蓝集明 +2 位作者 吴亚东 成新文 廖婉婷 《大学教育》 2023年第15期58-61,67,共5页
针对大学计算机课程实验教学内容与高校特色专业结合度不够、针对性不强的痛点,文章以四川轻化工大学的教学改革与实践为例,提出了一种基于“向日葵”模型的与专业融合的实验教学方案,并介绍了实验教学的内容及组织实施情况,展示了专业... 针对大学计算机课程实验教学内容与高校特色专业结合度不够、针对性不强的痛点,文章以四川轻化工大学的教学改革与实践为例,提出了一种基于“向日葵”模型的与专业融合的实验教学方案,并介绍了实验教学的内容及组织实施情况,展示了专业融合教学的效果。 展开更多
关键词 大学计算机 实验教学 赋能教育 OBE理念
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Effects of RapidEye Imagery's Red-edge Band and Vegetation Indices on Land Cover Classification in an Arid Region 被引量:9
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作者 LI Xianju CHEN Gang +3 位作者 LIU Jingyi CHEN Weitao cheng xinwen LIAO Yiwei 《Chinese Geographical Science》 SCIE CSCD 2017年第5期827-835,共9页
Land cover classification(LCC) in arid regions is of great significance to the assessment, prediction, and management of land desertification. Some studies have shown that the red-edge band of RapidE ye images was eff... Land cover classification(LCC) in arid regions is of great significance to the assessment, prediction, and management of land desertification. Some studies have shown that the red-edge band of RapidE ye images was effective for vegetation identification and could improve LCC accuracy. However, there has been no investigation of the effects of RapidE ye images' red-edge band and vegetation indices on LCC in arid regions where there are spectrally similar land covers mixed with very high or low vegetation coverage information and bare land. This study focused on a typical inland arid desert region located in Dunhuang Basin of northwestern China. First, five feature sets including or excluding the red-edge band and vegetation indices were constructed. Then, a land cover classification system involving plant communities was developed. Finally, random forest algorithm-based models with different feature sets were utilized for LCC. The conclusions drawn were as follows: 1) the red-edge band showed slight contribution to LCC accuracy; 2) vegetation indices had a significant positive effect on LCC; 3) simultaneous addition of the red-edge band and vegetation indices achieved a significant overall accuracy improvement(3.46% from 86.67%). In general, vegetation indices had larger effect than the red-edge band, and simultaneous addition of them significantly increased the accuracy of LCC in arid regions. 展开更多
关键词 土地覆盖分类 植被覆盖 干旱区 指数对 波段 影像 植被指数 LCC
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