Text/non-text image classification in the wild with convolutional neural networks.
Pattern Recognition(2017)
摘要
Text in natural images is an important source of information, which can be utilized for many real-world applications. This work focuses on a new problem: distinguishing images that contain text from a large volume of natural images. To address this problem, we propose a novel convolutional neural network variant, called multi-scale spatial partition network (MSP-Net). The network classifies images that contain text or not, by predicting text existence in all image blocks, which are spatial partitions at multiple scales on an input image. The whole image is classified as a text image (an image containing text) as long as one of the blocks is predicted to contain text. The network classifies images very efficiently by predicting all blocks simultaneously in a single forward propagation. Through experimental evaluations and comparisons on public datasets, we demonstrate the effectiveness and robustness of the proposed method. HighlightsWe study a new and important problem: text/non-text image classification in the wild.A new scheme based on block-level classification is proposed to tackle this problem.We propose MSP-Net, a novel CNN variant, to efficiently classify text/non-text images.As a by-product, MSP-Net outputs coarse locations and scales of texts.
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关键词
Natural images,Text/non-text image classification,Convolutional neural network,Multi-scale spatial partition
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