Description: 无线通信的各种运动模型。适用于移动通信、无线传感器网络等领域。 包括:Random walk、random waypoint、random direction、boundless simulation area、 gauss-markov等运动模型
- probabilistic random walk
-Wireless communication range of motion model. Applicable to mobile communication, wireless sensor networks and other fields. Including: Random walk, random waypoint, random direction, boundless simulation area, gauss-markov model, such as sports- probabilistic random walk Platform: |
Size: 29696 |
Author:netest08 |
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Description: 本文提出一种基于高斯- 马尔科夫
随机场模型,首先通过图像采集及激光测距系统,采集大量图像及其相匹配的深度信息图,在
人类视觉系统基础上,提取图像特征,通过训练完善模型,并应用于新采集图像上-This paper presents a Gauss- Markov random field model, first by image acquisition and laser ranging system, collecting a large number of images to match the depth of information and maps, in the human visual system based on image feature extraction, through training improve the model, and applied to the new image acquisition Platform: |
Size: 268288 |
Author:liujia_xian |
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Description: Bonmotion is a tools to generate a file which contain random movement for each node in network simulation. It support some mobility model such as random way point, RPGM, Gauss markov, etc. Platform: |
Size: 743424 |
Author:abdusy syarif |
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Description: This is a GAUSS program. It will implement the estimation and testing
procedures for a Markov switching parameter model as presented in B. Hansen
"The likelihood ratio test under non-standard conditions: Testing the
Markov trend model of GNP."
-This is a GAUSS program. It will implement the estimation and testing
procedures for a Markov switching parameter model as presented in B. Hansen
"The likelihood ratio test under non-standard conditions: Testing the
Markov trend model of GNP."
Platform: |
Size: 9216 |
Author:Aviral Kumar Tiwari |
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Description: 在VC6.0平台上进行编写的,包括隐马尔科夫模型(HMM)和混合高斯模型(GMM)在内的用于模板训练的算法。(The algorithm for template training is written on VC6.0 platform, including hidden Markov model (HMM) and mixed Gauss model (GMM).) Platform: |
Size: 4538368 |
Author:hailey96 |
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