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View-Based 3D Objects Recognition with Expectation Propagation Learning

机译:基于视图的3D对象与期望传播学习识别

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摘要

In this paper, we develop an expectation propagation learning framework for the inverted Dirichlet (ID) and Dirichlet mixture models. The main goal is to implement an algorithm to recognize 3D objects. Those objects are in our case from a view-based 3D models database that we have assembled. Following specific rules determined by analyzing the results of our tests, we have been able to get promising recognition rates. Experimental results are presented with different object classes by comparing recognition rates and confidence levels according to different tuning parameters.
机译:在本文中,我们为倒进的Dirichlet(ID)和Dirichlet混合物模型开发了期望传播学习框架。主要目标是实现识别3D对象的算法。我们的案例来自我们组装的基于视图的3D模型数据库。通过分析我们的测试结果确定的具体规则,我们已经能够获得有希望的识别率。通过根据不同的调谐参数比较识别率和置信水平,通过比较识别率和置信水平来呈现实验结果。

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