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Increasing Classification Robustness with Adaptive Features

机译:具有自适应功能的分类稳健性提高

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摘要

In machine vision features are the basis for almost any kind of high-level postprocessing such as classification. A new method is developed that uses the inherent flexibility of feature calculation to optimize the features for a certain classification task. By tuning the parameters of the feature calculation the accuracy of a subsequent classification can be significantly improved and the decision boundaries can be simplified. The focus of the methods is on surface inspection problems and the features and classifiers used for these applications.
机译:在机器视觉中,功能是几乎任何类型的高级后处理(例如分类)的基础。开发了一种新方法,该方法利用特征计算的固有灵活性来优化特定分类任务的特征。通过调整特征计算的参数,可以显着提高后续分类的准确性,并可以简化决策边界。这些方法的重点在于表面检查问题以及这些应用中使用的特征和分类器。

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