期刊文献+
共找到2篇文章
< 1 >
每页显示 20 50 100
不同移栽方式对常德地区烟叶产量与质量的影响
1
作者 易丽君 谢添 +2 位作者 饶巍 李若时 王蔚风 《现代农业科技》 2018年第19期5-6,共2页
为明确常德地区烤烟的最佳移栽方式,开展了不同移栽方式对烟叶产量与质量的影响试验,并对比井窖式移栽与膜上移栽以及膜下移栽在生育期、农艺性状、经济性状和抗病性的差异。结果表明,井窖式移栽技术应在常德植烟地区进行大面积推广。
关键词 烤烟 井窖式移栽 生育期 农艺性状 经济性状
下载PDF
Evaluating RISC-V Vector Instruction Set Architecture Extension with Computer Vision Workloads
2
作者 李若时 彭平 +2 位作者 邵志远 金海 郑然 《Journal of Computer Science & Technology》 SCIE EI CSCD 2023年第4期807-820,共14页
Computer vision(CV)algorithms have been extensively used for a myriad of applications nowadays.As the multimedia data are generally well-formatted and regular,it is beneficial to leverage the massive parallel processi... Computer vision(CV)algorithms have been extensively used for a myriad of applications nowadays.As the multimedia data are generally well-formatted and regular,it is beneficial to leverage the massive parallel processing power of the underlying platform to improve the performances of CV algorithms.Single Instruction Multiple Data(SIMD)instructions,capable of conducting the same operation on multiple data items in a single instruction,are extensively employed to improve the efficiency of CV algorithms.In this paper,we evaluate the power and effectiveness of RISC-V vector extension(RV-V)on typical CV algorithms,such as Gray Scale,Mean Filter,and Edge Detection.By our examinations,we show that compared with the baseline OpenCV implementation using scalar instructions,the equivalent implementations using the RV-V(version 0.8)can reduce the instruction count of the same CV algorithm up to 24x,when processing the same input images.Whereas,the actual performances improvement measured by the cycle counts is highly related with the specific implementation of the underlying RV-V co-processor.In our evaluation,by using the vector co-processor(with eight execution lanes)of Xuantie C906,vector-version CV algorithms averagely exhibit up to 2.98x performances speedups compared with their scalar counterparts. 展开更多
关键词 RISC-V vector extension single instruction multiple data(SIMD) computer vision OpenCV
原文传递
上一页 1 下一页 到第
使用帮助 返回顶部