应用光学, 2019, 40 (6): 1067, 网络出版: 2020-02-11   

基于嵌入式GPU的运动目标分割算法并行优化

Embedded GPU-based parallel optimization for moving objects segmentation algorithm
作者单位
1 中国科学院大学, 北京100049
2 中国科学院光电技术研究所, 四川 成都 610209
3 中国华阴兵器试验中心, 陕西 华阴 714200
引用该论文

张刚, 马震环, 雷涛, 崔毅, 张三喜. 基于嵌入式GPU的运动目标分割算法并行优化[J]. 应用光学, 2019, 40(6): 1067.

ZHANG Gang, MA Zhenhuan, LEI Tao, CUI Yi, ZHANG Sanxi. Embedded GPU-based parallel optimization for moving objects segmentation algorithm[J]. Journal of Applied Optics, 2019, 40(6): 1067.

参考文献

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张刚, 马震环, 雷涛, 崔毅, 张三喜. 基于嵌入式GPU的运动目标分割算法并行优化[J]. 应用光学, 2019, 40(6): 1067. ZHANG Gang, MA Zhenhuan, LEI Tao, CUI Yi, ZHANG Sanxi. Embedded GPU-based parallel optimization for moving objects segmentation algorithm[J]. Journal of Applied Optics, 2019, 40(6): 1067.

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