多模型步进数据的回归诊断

A. Nurunnabi, M. Nasser
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引用次数: 4

摘要

在许多视觉和图像问题中,单个数据集中存在多个结构,我们需要识别多个模型。在存在噪声的情况下保留大多数结构使得估计困难。在这种情况下,对于每个结构,除了所有结构的离群值之外,属于其他结构的数据也是离群值。鲁棒回归技术通常用于为视觉界提供噪声数据的模型构建过程,即拟合大多数数据,然后发现异常值,它们往往无法应对这种情况。在本文中,我们证明了一种新的回归诊断方法能够识别大部分异常值,回归诊断可能是鲁棒回归的更好选择。我们通过几个人工的多模型步进数据来演示整个过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Regression Diagnostics for Multiple Model Step Data
In many vision and image problems there are multiple structures in a single data set and we need to identify the multiple models. To preserve most structures in presence of noise makes the estimation difficult. In such case for each structure, data which belong to other structures are also outliers in addition to the outliers for all the structures. Robust regression techniques are commonly used to serve the model building process for noisy data to the vision community, that fits the majority data and then to discover outliers, they tend to fail to cope with the situation. In this paper we show a newly proposed regression diagnostic measure is capable for identifying large fraction of outliers, and regression diagnostics may be a better choice to the robust regression. We demonstrate the whole thing through several artificial multiple model step data.
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