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Large-Scale R-CNN with Classifier Adaptive Quantization

机译:具有分类器自适应量化的大型R-CNN

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This paper extends R-CNN, a state-of-the-art object detection method, to larger scales. To apply R-CNN to a large database storing thousands to millions of images, the SVM classification of millions to billions of DCNN features extracted from object proposals is indispensable, which imposes unrealistic computational and memory costs. Our method dramatically narrows down the number of object proposals by using an inverted index and efficiently searches by using residual vector quantization (RVQ). Instead of k-means that has been used in inverted indices, we present a novel quantization method designed for linear classification wherein the quantization error is re-defined for linear classification. It approximates the error as the empirical error with pre-defined multiple exemplar classifiers and captures the variance and common attributes of object category classifiers effectively. Experimental results show that our method achieves comparable performance to that of applying R-CNN to all images while achieving a 250 times speed-up and 180 times memory reduction. Moreover, our approach significantly outperforms the state-of-the-art large-scale category detection method, with about a 40~58% increase in top-K precision. Scalability is also validated, and we demonstrate that our method can process 100 K images in 0.13 s while retaining precision.
机译:本文扩展了R-CNN,最先进的物体检测方法,更大的尺度。为了将R-CNN应用于存储数千到数百万图像的大型数据库,从对象提出提取的数百万到数十亿的DCNN特征是必不可少的,这施加了不切定的计算和内存成本。我们的方法通过使用反相索引并通过使用残差矢量量化(RVQ)有效地搜索对象提案的数量,从而大大变窄。我们介绍了一种设计用于线性分类的新量化方法,其介绍了一种用于线性分类的新量化方法,其中重新定义了用于线性分类的量化误差。它将错误视为具有预定义的多个示例性分类器的经验错误,并有效地捕获对象类分类器的方差和公共属性。实验结果表明,我们的方法对所有图像应用R-CNN应用了相当的性能,同时实现了250倍的加速和减少180倍。此外,我们的方法显着优于最先进的大型类别检测方法,顶-K精度增加了约40〜58%。还验证了可扩展性,我们证明我们的方法可以在0.13秒内处理100k图像,同时保持精度。

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