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An evaluation methodology for 3D deep neural networks using visualization in 3D data classification

机译:3D数据分类中的3D深神经网络评估方法

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摘要

"Making 3D deep neural networks debuggable". In the study, we develop and propose a 3D deep neural network visualization methodology for performance evaluation of 3D deep neural networks. Our research was conducted using a 3D deep neural network model, which shows the best performance. The visualization method of the research is a method of visualizing part of the 3D object by analyzing the naive Bayesian 3D complement instance generation method and the prediction difference of each feature. The method emphasizes the influence of the network in the process of making decisions. The result of visualization through the algorithm of the study shows a clear difference based on the result class and the instance within the class, and the authors can obtain insight that can evaluate and improve the performance of the DNN (deep neural networks) model by the analyzed results. 3D deep neural networks can be made "indirectly debuggable", and after the completion of the visualization method and the analysis of the result, the method can be used as the evaluation method of "general non-debuggable DNN" and as a debugging method.
机译:“制作3D深神经网络调试”。在研究中,我们开发并提出了一种3D深度神经网络可视化方法,用于3D深神经网络的性能评估。我们的研究是使用3D深神经网络模型进行的,显示出最佳性能。研究的可视化方法是通过分析天真贝叶斯3D补充实例生成方法和每个特征的预测差来可视化3D对象的一部分的方法。该方法强调网络在做出决策过程中的影响。通过该研究算法的可视化结果显示了基于结果类的明确差异,以及类内的实例,并且作者可以获得可以评估和改进DNN(深神经网络)模型的性能的洞察力分析结果。 3D深度神经网络可以制作“间接调试”,在完成可视化方法和分析后,该方法可以用作“普通非调试DNN”的评估方法和调试方法。

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