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Robust and efficient recognition of low-quality images by cascaded recognizers with massive local features

机译:具有大量局部特征的级联识别器对低质量图像的鲁棒高效识别

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摘要

For image recognition with camera phones, defocus and motion blur cause a serious drop of the image recognition rate. In this paper, we employ generative learning, i.e., generating blurred images and learning based on massive local features extracted from them, for a recognition method using approximate nearest neighbor search of local features. Major problems of generative learning are long processing time and a large amount of memory required for nearest neighbor search. The problems become serious when we use a large-scale database. In the proposed method, they are solved by cascaded recognizers and scalar quantization. From experimental results with up to one million images, we have confirmed that the proposed method improves the recognition rate, and cuts the processing time as compared to a method without generative learning.
机译:对于使用照相手机的图像识别,散焦和运动模糊会严重降低图像识别率。在本文中,我们采用生成学习,即生成模糊图像并基于从图像中提取的大量局部特征进行学习,以使用局部特征的近似最近邻搜索进行识别。生成学习的主要问题是处理时间长和最近邻居搜索所需的大量内存。当我们使用大型数据库时,问题变得很严重。在提出的方法中,它们通过级联识别器和标量量化来解决。从多达一百万张图像的实验结果中,我们已经证实,与没有生成学习的方法相比,该方法提高了识别率,并缩短了处理时间。

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