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Bayesian MLP neural networks for image analysis

机译:贝叶斯MLP神经网络用于图像分析

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We demonstrate the advantages of using Bayesian multi-layer perceptron (MLP) neural networks for image analysis. The Bayesian approach provides consistent way to do inference by combining the evidence from the data to prior knowledge from the problem. A practical problem with MLPs is to select the correct complexity for the model, i.e., the right number of hidden units or correct regularization parameters. The Bayesian approach offers efficient tools for avoiding overfitting even with very complex models, and facililales estimation of the confidence intervals of the results. In this contribulion we review the Bayesian melhods for MLPs and present comparison results from two case sludies. In the first case, MLPs were used to solve the inverse problem in electrical impedance tomography. The Bayesian MLP provided consistently better resulls than other methods. In the second case, the goal was to locale trunks of trees in foresl scenes. With Bayesian MLP it was possible to use large number of potentially useful features and prior for determining the relevance of the features automatically.
机译:我们展示了使用贝叶斯多层感知器(MLP)神经网络进行图像分析的优势。贝叶斯方法通过将数据的证据与问题的先验知识相结合,提供了一致的推理方法。 MLP的实际问题是为模型选择正确的复杂度,即正确数量的隐藏单元或正确的正则化参数。贝叶斯方法提供了有效的工具,即使使用非常复杂的模型,也可以避免过拟合,并且可以方便地估计结果的置信区间。在此文稿中,我们回顾了MLP的贝叶斯方法,并给出了两个案例分析的比较结果。在第一种情况下,MLP用于解决电阻抗断层扫描中的反问题。贝叶斯MLP始终提供比其他方法更好的转售。在第二种情况下,目标是将树木树干放置在前景色中。使用贝叶斯MLP,可以使用大量潜在有用的功能,并且可以事先确定功能的相关性。

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