Most popular articles
Everything About Peaches. Clemson University Cooperative Extension Service Everything About Peaches Website: whether you are a professional or backyard peach...
Mission Statement. For the sake of mankind and the world as a whole a further increase of the sustainability...
Newsletter 9: July 2013 - Temperate Fruits in the Tropics and Subtropics. Download your copy of the Working Group Temperate...
USA Walnut varieties. The Walnut Germplasm Collection of the University of California, Davis (USA). A description of the Collection and a History...
China Walnut varieties.

Articles

Virtual fruit tree pruning training system based on agent

Article number
1261_26
Pages
165 – 172
Language
English
Abstract
Pruning is one of the important practices for fruit trees cultivation.
The pruning training based on virtual reality (VR) technology can accurate, intuitive and timely judgment the pruning effect, so it is a hot research topic in the current research.
This paper puts forward a new approach to build virtual fruit tree pruning training system based on agent.
The virtual pruning training system is composed of three core modules: the orchard context awareness data acquisition module, the pruning decision agent model module, and the VR interactive experience terminal module.
The construction methods of these three core modules are given in detail, and the fruit tree agent model is establish and instantiated in the modules.
Finally, in order to validate the feasibility of the model, an apple tree intelligent virtual pruning training software system is developed, and experiment results show that the system has the high degree of immersive, and be able to access the environment data of the orchard and provide pruning decision intelligent guidance, which provides effective technical support for the research and development of fruit tree pruning training software tool.

Publication
Authors
Sheng Wu, Boxiang Xiao, Weiliang Wen, Xinyu Guo
Keywords
agent, context awareness, virtual reality, fruit tree pruning, training
Full text
Online Articles (39)
Zhen Hai Han | Tin Wu | Yi Wang | Xinzhong Zhang | Xuefeng Xu
E. Żurawicz | J. Kubik | M. Lewandowski | K.P. Rutkowski | K. Zmarlicki
A. Küden | A.B. Küden | B. İmrak | A. Sarier
Byeong-Ho Choi | Jun-Hyung Kwon | Su-Gon Han | Tae-Myung Yoon
C.H. Zhang | F.Q. Yang | D.M. Chen | T.S. Zhao | X.S. Zhang | C.M. Li | Y.B. Zhao | Y. Fu | G.D. Zhao | X.Z. Zhang
Weiwei Yang | Xiaoyun Zhang | M. Saudreau | Dong Zhang | E. Costes | Mingyu Han
Hengtao Zhang | Ruiping Zhang | Guonan Guo | Zhenzhen Liu | Zhenli Yan | Xiaoyu Wang
W. Zhang | J.J. Zhao | X. Zhang | N.S. Zhang | Y.P. Guo | X.L. Ren | L.X. Mei
N.S. Zhang | J.J. Zhao | C.G. Ban | W. Zhang | H.X. Tao | Y.P. Guo | X.L. Ren | L.X. Mei
Yongjie Wu | Yusheng Li | Long Chen | Hehe Cheng | Yanhua Zhao | Yaqin Wu | Shengjian Zhao
Sheng Wu | Boxiang Xiao | Weiliang Wen | Xinyu Guo
L. Manfrini | M. Zibordi | E. Pierpaoli | P. Losciale | B. Morandi | L. Corelli Grappadelli
B. Liu | M. Gaid | C. Chizzali | M.N.A. Khalil | D. Sircar | D. Reckwell | T. Beuerle | K. Richter | R. Hänsch | H. Flachowsky | L. Beerhues
L.I. Vita | S.J. Maiale | N. Spera | G.M. Colavita