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Chinese Academy of Sciences Institutional Repositories Grid
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CAS IR Grid
机构
地理科学与资源研究所 [1]
长春光学精密机械与物... [1]
数学与系统科学研究院 [1]
采集方式
OAI收割 [3]
内容类型
期刊论文 [2]
会议论文 [1]
发表日期
2019 [1]
2011 [2]
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Early priority effects of occupying a nutrient patch do not influence final maize growth in intensive cropping systems
期刊论文
OAI收割
PLANT AND SOIL, 2019, 卷号: 442, 期号: 1-2, 页码: 285-298
作者:
Zhang, Deshan
;
Wang, Yongsheng
;
Tang, Xiaoyan
;
Zhang, Aiping
;
Li, Hongbo
  |  
收藏
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浏览/下载:30/0
  |  
提交时间:2020/03/23
Nutrient patch location
Competitive hierarchy
Root proliferation
Grain yield
Growth cycle
Zea mays
The maximum capture per unit cost location problem
期刊论文
OAI收割
INTERNATIONAL JOURNAL OF PRODUCTION ECONOMICS, 2011, 卷号: 131, 期号: 2, 页码: 568-574
作者:
Hua, Guowei
;
Cheng, T. C. E.
;
Wang, Shouyang
  |  
收藏
  |  
浏览/下载:28/0
  |  
提交时间:2018/07/30
Competitive location
Maximum capture
Mixed integer fractional programming
Branch-and-bound
TextureGrow: Object recognition and segmentation with limit prior knowledge (EI CONFERENCE)
会议论文
OAI收割
2011 International Conference on Network Computing and Information Security, NCIS 2011, May 14, 2011 - May 15, 2011, Guilin, Guangxi, China
Yao Z.
;
Han Q.
收藏
  |  
浏览/下载:25/0
  |  
提交时间:2013/03/25
In this paper we present a new method for automatically visual recognition and semantic segmentation of photographs. Our automatically and rapidly approach based on Cellular Automation. Most of the analysis and description of recognition and segmentation are based on statistical or structural properties of this attribute
most of them need plenty of samples and prior Knowledge. In this paper
within a few evident samples (not too many)
we can first get the texture feature of each component and the structures
then select the approximately location randomly of the objects or patches of them
then we use the Cellular Automata algorithm to "grow" based on texture of different objects. The grow progress will stop When texture grow to the boundary. By this steps a new method is found which allow us use very few samples and low lever experience and get a rapidly and accuracy way to recognize and segment objects. We found that this new propose gives competitive results with limited experience and samples. 2011 IEEE.