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Indoor location recognition using fusion of SVM-based visual classifiers

机译:使用基于SVM的视觉分类器融合的室内位置识别

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We apply our general-purpose algorithm for visual category recognition using bag-of-visual-words and other visual features and fusion of SVM classifiers to the recognition of indoor locations. This is an important application in many emerging fields, such as mobile augmented reality and autonomous robots. We evaluate the proposed method with other location recognition systems in the ImageCLEF 2010 RobotVision contest. The results show that given a large enough training set, a purely appearance-based method can perform very well - ranked first for one of the contest's training sets.
机译:我们将通用算法用于使用视觉词袋和其他视觉功能进行视觉类别识别,并将SVM分类器融合到室内位置识别中。这是许多新兴领域的重要应用,例如移动增强现实和自主机器人。我们在ImageCLEF 2010 RobotVision竞赛中与其他位置识别系统一起评估了提出的方法。结果表明,如果给定足够大的训练集,则基于外观的方法可以很好地执行-在竞赛的一个训练集中排名第一。

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