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Semantic Segmentation with Millions of Features: Integrating Multiple Cues in a Combined Random Forest Approach

机译:具有数百万个特征的语义分割:在组合随机森林方法中集成多个线索

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In this paper, we present a new combined approach for feature extraction, classification, and context modeling in an iterative framework based on random decision trees and a huge amount of features. A major focus of this paper is to integrate different kinds of feature types like color, geometric context, and auto context features in a joint, flexible and fast manner. Furthermore, we perform an in-depth analysis of multiple feature extraction methods and different feature types. Extensive experiments are performed on challenging facade recognition datasets, where we show that our approach significantly outperforms previous approaches with a performance gain of more than 15% on the most difficult dataset.
机译:在本文中,我们在基于随机决策树的迭代框架中的特征提取,分类和上下文建模的新组合方法以及大量的功能。本文的一个主要焦点是以关节,灵活和快速的方式集成不同类型的特征类型,如颜色,几何上下文和自动上下文功能。此外,我们对多个特征提取方法和不同特征类型进行了深入的分析。在具有挑战性的外立面识别数据集上进行了广泛的实验,在那里我们表明我们的方法在最困难的数据集中的性能增益超过15%的比较方面显着优于前面的方法。

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