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A computationally efficient approach to indoor/outdoor scene classification

机译:一种室内/室外场景分类的高效计算方法

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Prior research in scene classification has shown that high-level information can be inferred from low-level image features. Classification rates of roughly 90% have been reported using low-level features to predict indoor scenes vs. outdoor scenes. However, the high classification rates are often achieved by using computationally expensive, high-dimensional feature sets, thus limiting the practical implementation of such systems. We show that a more computationally efficient approach to indoor/outdoor classification can yield classification rates comparable to the best methods reported in the literature. A low complexity, low-dimensional feature set is used in conjunction with a two-stage support vector machine classification scheme to achieve a classification rate of 90.2% on a large database of consumer photographs.
机译:先前的场景分类研究表明,可以从低级图像特征中推断出高级信息。据报道,使用低级功能预测室内场景与室外场景的分类率大约为90%。但是,通常通过使用计算上昂贵的高维特征集来实现高分类率,从而限制了此类系统的实际实现。我们表明,室内/室外分类的一种计算效率更高的方法可以产生与文献中报道的最佳方法相当的分类率。低复杂度,低维特征集与两阶段支持向量机分类方案结合使用,可在大型消费者照片数据库上实现90.2%的分类率。

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