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Learning Spatially Embedded Discriminative Part Detectors for Scene Character Recognition

机译:学习空间嵌入的鉴别部分探测器,用于场景字符识别

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Recognizing scene character is extremely challenging due to various interference factors such as character translation, blur and uneven illumination, etc. Considering that characters are composed of a series of parts and different parts attract diverse attentions when people observe a character, we should assign different importance to each part to recognize scene character. In this paper, we propose a discriminative character representation by aggregating the responses of the spatially embedded salient part detectors. Specifically, we first extract the convolution activations from the pre-trained convolutional neural network (CNN). These convolutional activations are considered as the local descriptors of the character parts. Then we learn a set of part detectors and pick the distinctive convolutional activations which respond to the salient parts. Moreover, to alleviate the effect of character translation, rotation and deformation, etc, we assign a response region for each part detector and search the maximal response in this region. Finally, we aggregate the maximal outputs of all the salient part detectors to represent character. The experiments on three datasets show the effectiveness of the proposed method for scene character recognition.
机译:识别场景角色由于各种干扰因素,如角色转换,模糊和不均匀的照明等。考虑到角色由一系列部分和不同的部件组成,当人们观察一个角色时,我们应该分配不同的重要性每个部分都识别场景角色。在本文中,我们通过聚集空间嵌入的突出部分探测器的响应来提出辨别性的特征表示。具体地,我们首先从预先训练的卷积神经网络(CNN)中提取卷积激活。这些卷积激活被认为是字符部件的本地描述符。然后我们学习一组零件探测器,并选择响应突出部位的独特卷积激活。此外,为了减轻角色转换,旋转和变形等的影响,我们为每个零件检测器分配响应区域,并在该区域中搜索最大响应。最后,我们聚合所有突出部分检测器的最大输出来表示字符。三个数据集的实验显示了所提出的场景字符识别方法的有效性。

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