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Multi-label Logo Classification Using Convolutional Neural Networks

机译:使用卷积神经网络的多标签徽标分类

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The classification of logos is a particular case within computer vision since they have their own characteristics. Logos can contain only text, iconic images or a combination of both, and they usually include figurative symbols designed by experts that vary substantially besides they may share the same semantics. This work presents a method for multi-label classification and retrieval of logo images. For this, Convolutional Neural Networks (CNN) are trained to classify logos from the European Union TradeMark (EUTM) dataset according to their colors, shapes, sectors and figurative designs. An auto-encoder is also trained to learn representations of the input images. Once trained, the neural codes from the last convolutional layers in the CNN and the central layer of the auto-encoder can be used to perform similarity search through kNN, allowing us to obtain the most similar logos based on their color, shape, sector, figurative elements, overall features, or a weighted combination of them provided by the user. To the best of our knowledge, this is the first multi-label classification method for logos, and the only one that allows retrieving a ranking of images with these criteria provided by the user.
机译:徽标的分类是计算机视觉中的特定案例,因为它们具有自己的特征。徽标可以仅包含文本,标志性图像或两者的组合,并且它们通常包括由专家设计的比喻符号,该专家除了它们可以共享相同的语义。这项工作提出了一种用于多标签分类和徽标图像检索的方法。为此,卷积神经网络(CNN)训练,以根据其颜色,形状,扇区和比喻设计来培训以对欧盟商标(EUTM)数据集进行分类。还培训自动编码器以学习输入图像的表示。一旦训练,来自CNN中的最后一个卷积层和自动编码器的中心层的神经电图可用于通过KNN执行相似性搜索,允许我们基于其颜色,形状,扇区获得最相似的徽标比喻元素,整体特征或用户提供的加权组合。据我们所知,这是徽标的第一个多标签分类方法,允许使用用户提供的这些标准检索图像的排名。

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