期刊文献+
共找到2篇文章
< 1 >
每页显示 20 50 100
小麦VPM1后代Yr17-Lr37-Sr38、Pch1基因分子标记检测 被引量:2
1
作者 曹新有 刘建军 +4 位作者 程敦公 宋健民 李豪圣 刘爱峰 赵振东 《山东农业科学》 2012年第8期1-4,共4页
含有偏凸山羊草2NS染色体的普通小麦VPM1因含有3个紧密连锁的抗锈基因簇Yr17-Lr37-Sr38及抗眼斑病Pch1基因被育种者广泛应用。本实验利用Yr17-Lr37-Sr38基因簇的N基因组特异VEN-TRUP/LN2标记及Pch1基因的XustSSR2001-7DL标记对济麦22... 含有偏凸山羊草2NS染色体的普通小麦VPM1因含有3个紧密连锁的抗锈基因簇Yr17-Lr37-Sr38及抗眼斑病Pch1基因被育种者广泛应用。本实验利用Yr17-Lr37-Sr38基因簇的N基因组特异VEN-TRUP/LN2标记及Pch1基因的XustSSR2001-7DL标记对济麦22×VPM1杂交F2代群体的170个单株进行分子标记检测,结果发现含有Yr17-Lr37-Sr38基因簇的有122株,含有Pch1基因的有33株,同时含有Yr17-Lr37-Sr38及Pch1基因的21株。 展开更多
关键词 VPM1 Yr17-Lr37-Sr38 Pch1
下载PDF
No-Reference Image Quality Assessment Method Based on Visual Parameters
2
作者 Yu-Hong Liu Kai-Fu Yang Hong-Mei Yan 《Journal of Electronic Science and Technology》 CAS CSCD 2019年第2期171-184,共14页
Recent studies on no-reference image quality assessment (NR-IQA) methods usually learn to evaluate the image quality by regressing from human subjective scores of the training samples. This study presented an NR-IQA m... Recent studies on no-reference image quality assessment (NR-IQA) methods usually learn to evaluate the image quality by regressing from human subjective scores of the training samples. This study presented an NR-IQA method based on the basic image visual parameters without using human scored image databases in learning. We demonstrated that these features comprised the most basic characteristics for constructing an image and influencing the visual quality of an image. In this paper, the definitions, computational method, and relationships among these visual metrics were described. We subsequently proposed a no-reference assessment function, which was referred to as a visual parameter measurement index (VPMI), based on the integration of these visual metrics to assess image quality. It is established that the maximum of VPMI corresponds to the best quality of the color image. We verified this method using the popular assessment database—image quality assessment database (LIVE), and the results indicated that the proposed method matched better with the subjective assessment of human vision. Compared with other image quality assessment models, it is highly competitive. VPMI has low computational complexity, which makes it promising to implement in real-time image assessment systems. 展开更多
关键词 BANDWIDTH human VISUAL system information ENTROPY LUMINANCE NO-REFERENCE image QUALITY assessment (NR-IQA) VISUAL parameter measurement index (vpmi)
下载PDF
上一页 1 下一页 到第
使用帮助 返回顶部